Credit access, labor supply, and consumer welfare.
Athreya, Kartik B.
Recent work has argued that U.S. households have seen a systematic
improvement in their ability to borrow against future labor income. (1)
First, Narajabad (2007) points out that the "extensive" margin
of credit has changed; he calculates that in 1989, 56 percent of
households held a credit card, while 29 percent were actively
"revolving " debt (i.e., keeping positive balances after the
most recent payment to lenders). By 2004, these measures had risen to 72
and 40 percent, respectively. The availability of such credit has been
accompanied by its use, suggesting that households are genuinely less
constrained at present than they were in the past. Using Survey of
Consumer Finances (SCF) data, Narajabad (2007) shows that average debts
among those paying interest on credit card debts nearly doubled from
1989 to 2004, jumping from roughly $1,800 per cardholder to $3, 300 (in
1989 dollars). When aggregated, these changes are reflected in the
striking findings of Krueger and Perri (2006), who show that the ratio
of unsecured debt to disposable income quadrupled from 2 to 9 percent
over the period 1980-2001. Parker (2000) and Iacoviello (forthcoming)
provide further details on the increase in household indebtedness.
Lastly, and most sensationally, recent events in mortgage markets also
suggest that there has been a sharp expansion in credit availability.
Notably, both the rapid growth of the aggregate homeownership rate in
the late 1990s and the recently high default rates on some types of
mortgages suggest that the ability to take highly "leveraged"
positions in residential real estate has indeed increased.
The large changes in borrowing summarized above appear to be
consistent with improved information held by lenders at the time of
credit extension (see, for example, Athreya, Tam, and Young 2007), as
well as a secular decline in the cost of maintaining and issuing credit
contracts (see, for example, Athreya 2004). As an empirical matter,
Furletti demonstrates strikingly that in 2002, the interest rate
conferred on those with the highest credit score was eight
percentage-points lower than those with the lowest credit scores. In
1990, by comparison, this premium was essentially nonexistent.
Relatedly, Edelberg (2006) notes that there has been a substantial
increase in the sensitivity of most loan interest rates to forecasts of
default risk. Improvements in the ability of lenders to screen borrowers
will have allowed many to access credit, instead of being denied
outright. In sum, both theory and evidence strongly suggest that
households may now be better able than ever before to use credit markets
to smooth consumption.
A direct consequence of better access to credit is allowing
households to borrow to finance consumption. However, a perhaps equally
important effect, and one that has not received systematic attention
thus far, is that better credit access will allow households to more
effectively align work effort with productivity. That is, when
temporarily unproductive, a household can use credit in lieu of labor
effort, and instead work more when it is relatively productive. At a
quantitative level, varying labor effort in response to productivity may
well be an important channel for consumption smoothing; it has also long
been known that idiosyncratic shocks to labor productivity dwarf
business cycle-related risks facing U.S. households. It is also agreed
that these shocks are, in general, poorly insured. (2)
The use of labor effort itself as a smoothing device, even in the
absence of credit markets, has only recently received serious
quantitative attention. This line of research includes Pijoan-Mas
(2006), Marcet, Obiols Homs, and Weill (2007), Floden (2006), Floden and
Linde (2001), Li and Sarte (2006), and Chang and Kim (2005, 2006). Taken
as a whole, the preceding body of work suggests that variable labor
supply may be an important mechanism by which households maintain smooth
paths of consumption. However, aside from the bankruptcy model of Li and
Sarte (2006), none of the preceding directly assesses the extent to
which changes in credit access will alter labor supply behavior,
savings, and consumption. The purpose of this article is to provide some
simple experiments aimed at uncovering the interaction between credit
markets and labor markets in the presence of idiosyncratic and
uninsurable productivity risk.
I augment the model of household consumption and work effort
described in Pijoan-Mas (2006). The latter is a standard model of
uninsurable idiosyncratic risk that is augmented to allow for flexible
labor supply, but one in which borrowing is prohibited. (3) I ask four
specific questions. First, in the presence of flexible labor supply, how
do changes in borrowing constraints influence aggregate precautionary
savings and the size of the economy? Second, how do changes in borrowing
constraints alter the efficiency of the labor input? Third, how do
changes in borrowing capacity alter "who" works? Fourth, what
are the welfare implications of improvements in credit access, and how
are these welfare effects distributed across households?
Why is it useful to address these questions? With respect to the
first question, recent work of Marcet, Obiols, Homs, and Weill (2007)
contains an important insight about precautionary savings in the
presence of flexible labor supply. Namely, they point out that at the
household level, the ex post effect of increased precautionary savings
will be to reduce the labor supply. Intuitively, if most households are,
on average, wealthier due to the maintenance of a larger stock of
wealth, then they may also choose to work less. In turn, aggregate
savings may not rise, and can even fall, relative to an economy in which
households do not face uninsurable idiosyncratic risk. As a result, a
key link between uninsurable risk and the "size" of the
economy is broken. Specifically, with inelastic labor, Huggett and
Ospina (2001) proved that the economy must be larger in the presence of
uninsurable idiosyncratic risk than in its absence.
The second question, on the efficiency of labor supply, is
motivated by the observation that when borrowing is possible, a
wealth-poor household facing temporarily low productivity may choose to
take leisure and instead borrow to smooth consumption. Conversely, when
borrowing is ruled out, labor supply may be far less sensitive to
current productivity. This implication of credit constraints has
attracted the attention of development-related research. Recent work of
Jayachandran (2007) suggests that in rural India, borrowing limits
indeed create nontrivial welfare losses. Similarly, Malapit et al.
(2006), and Garcia-Escribano (2003) argue that variations in family
labor supply are important for consumption smoothing, especially when
households have low asset holdings. In settings in which borrowing is
prohibited, Pijoan-Mas (2006) and Floden and Linde (2001) both find that
the correlation of hours and productivity is near zero, while the ratio
of effective hours to labor hours is close to the average productivity
of households. If borrowing were possible, both the correlation between
effort and productivity, as well as the ratio of "effective"
hours to labor hours would likely rise, as households would supply labor
primarily when productive.
The third question of "who works hard, and when?" follows
naturally from the observation that changes in borrowing constraints
will affect households differentially. For example, wealthy households
may be fairly insensitive to credit access. Conversely, those who are
not as rich but have high current productivity may wish to borrow and
work hard. In the absence of credit, however, these households may work
fewer hours, as they are unable to offset declines in current leisure
with increases in current consumption. The preceding are only two
examples of the outcomes that might ensue from changes in credit access.
Moreover, at an aggregate level, the behavior of households in the
economy will then depend on, and in turn, determine the overall long-run
joint distribution of wealth and productivity. Therefore, an emphasis of
the present work is to document how changes to credit access alter both
the characteristics of worker behavior and the equilibrium joint
distribution of wealth, productivity, and effort.(4)
Lastly, the results in this article are useful for organizing
one's views on the desirability of increased access to credit.
Notably, the model suggests that when credit availability is relatively
lax, some households will borrow a great deal, and if unlucky in terms
of their productivity, will choose to work very hard as a result.
However, the model also suggests that ex ante, households prefer the
ability to reach high debt levels. Policies that effectively limit the
availability of credit may leave borrowers as a class worse off in the
long run. The results, therefore, suggest caution in using poor ex post
outcomes to decide on the usefulness of an increased ability to borrow.
This message is particularly relevant given recent public debate on the
desirability of debt relief and mandatory mortgage renegotiation.
The main results are as follows. First, the hardest working
households are those who are least wealthy, and most strikingly, also
the least productive. Second, credit access can play an important role
in reducing high labor effort by low-productivity households. Third, the
buffer-stock tendencies of households imply that the distance from the
borrowing constraint is often more important than the actual level of
wealth in influencing labor effort. Fourth, measures of welfare gains to
current consumers show that there are significant benefits from
expansions in credit access and that these gains accrue disproportionately to the relatively poor and relatively rich. The
remainder of the article is organized as follows. Section 1 describes
the model and equilibrium concept, which closely follows the environment
of Pijoan-Mas (2006) and Floden and Linde (2001). Section 2 then assigns
parameters, and Section 3 presents results. In Section 4, I compute and
discuss two measures of consumer welfare gains from relaxing credit
limits, and Section 5 contains conclusions and suggestions for future
work.
1. MODEL
The model contains three important features. First, households in
the model face uninsurable, but purely idiosyncratic productivity risk.
Second, households have access to only a single risk-free, noncontingent
bond that may be accumulated or sold short. Third, households can vary
their labor supply.
Preferences
There is a continuum of ex ante identical, infinitely lived
households whose preferences are defined over random sequences of
consumption and leisure. The size of the population is normalized to
unity, there is no aggregate uncertainty, and time is discrete.
Preferences are additively separable across consumption in different
periods. Let [beta] denote the time discount rate. Therefore, each agent
solves
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
subject to a budget constraint explained below.
Endowments
Each household is endowed with one unit of time, which it supplies
a portion of as labor and uses the remainder for leisure. At the
beginning of each period, households receive a cross-sectionally
independent productivity shock [z.sub.t.sup.i], which leaves them with
productivity level [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII].
A useful interpretation of the shocks to productivity is that they are
elements of a list of factors that alter the ability of households to
convert labor effort into consumption goods. Examples include the health
status of workers and even local variations in business conditions. What
is precluded from this list are factors that lower the productivity of
all workers simultaneously, such as a sharp increase in real prices of
inputs such as crude oil.
Market Arrangement
There is a single, competitive, asset market in which agents may
trade a one-period-lived, risk-free claim to consumption. The net supply
of these claims is interpreted as the aggregate capital stock.
Households enter each period with asset holdings [a.sub.t.sup.i] and
face returns on capital and labor of [r.sub.t] and [w.sub.t],
respectively. Gross-of-interest asset holdings are, therefore, given by
(1 + [r.sub.t])[a.sub.t.sup.i]. Let private period-t consumption and
savings be given as [c.sub.t.sup.i]and[a.sub.t+1.sup.i] respectively.
Given that labor supply is endogenous, it is useful to think of the
individual household's problem as one in which it first
"sells" its entire labor endowment, which yields a labor
income of [w.sub.t][[q.sub.t].sup.i] and then "buys" leisure
[[l.sub.]t.sup.i] at its opportunity cost w[[q.sub.]t.sup.i]. The
household's budget constraint is then given as follows:
[[c.sub.t.sup.i] + [omega][[q.sub.t.sup.i][[l.sub.t.sup.i] =
[[omega].sub.t][[q.sub.t.sup.i]+ (1 + [r.sub.t])[[a.sub.t.sup.i]
[l.sub.t.sup.i] [member of] [0, 1]. (2)
Stationary (Constant Prices) Recursive Household Problem
Under constant prices, whereby [r.sub.t]=r and [w.sub.t]=w, the
household's index i and time subscripts t in order to avoid
clutter, the stationary recursive formulation of the household's
problem is as follows:
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
subject to
c + wql + a'[less than or equal to] wq + (1+r)a, (4)
where
a' [greater than or equal to][a.bar. (5)
Firms
There is a continuum of firms that take constant factor prices as
given and use Cobb-Douglas production. In a stationary equilibrium, the
aggregate capital stock K and the aggregate labor supply measured in
productivity units L will be constant. Let the stationary joint
distribution of assets and labor productivity be denoted by [micro]. The
aggregate effective labor input is then given as.
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
By contrast, aggregate hours worked are given as:
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
Notice that in general, L and H will differ, precisely because
hours worked and productivity may move together when labor is
elastically supplied. As stated at the outset, a measure of the
efficiency of labor supply will be the deviation of the ratio [L/H] from
the mean of log productivity, which is set to unity. Denoting the
stationary marginal distribution of household assets by [[micro].sub.a]
[equivalent.to] [[integral].sub.z] d[micro](a,z),aggregate savings is
given by
K = [integral] ad[[mu].sub.a].
Aggregate output then arises from a Cobb-Douglas production
function that combines effective hours and capital:
Y = F(K, L). (6)
Finally, denote the depreciation rate by [delta], and current
aggregate consumption by C. This implies that the economy-wide law of
motion for the capital stock is given by
K' = (1-[delta]) K + F (K, L) - C. (7)
I will restrict attention to stationary equilibria where aggregate
capital, output, and consumption are all constant, which then implies
that
K' = K, and
C = F (K,L) - [delta] K. (8)
Equilibrium
A stationary recursive competitive general equilibrium for this
economy, given parameter, is a collection of (i) a constant interest
rate, r and wage rate, w; (ii) decision rules for the household, a'
= [g.sub.a.sup.*](a, z| w, r), l = [[[g.sup.*.sub.l] (a, z|w, r);(iii)
aggregate/per-capita demand for capital and effective labor by firms,
K*(w, r), and L*(w, r), respectively; (iv) supply of capital and
effective labor by households, K(w, r) and L(w, r), respectively; (v) a
transition function P(a, z,a', z') induced by z and the
optimal decision rules; and (vi) a measure of agents [mu]*(a, z) of
households over the state space that is stationary under P(a, z,
a', z'), such that the following conditions are satisfied:
1. Households optimize, whereby [[g.sup.*.sup.a](a, z|w, r) and
[[g.sub.l].sup.*](a, z|w, r) solve equation (1).
2. Firms optimize given prices, whereby K and L satisfy
w = [F.sub.L](K, L), and r = [F.sub.K](K, L)-[delta].
3. The capital market clears
K(w, r) = K*(w, r). (9)
4. The labor market clears
L(w, r) = L*(w, r).
5. The distribution of agents over states is stationary across time
[[mu].sup.*](a',z') = [integral] P(a, z, a',
z')[[mu].sup.*](da, dz).(10)
2. PARAMETERIZATION
In this section, I describe the parameters chosen for the problem.
Given parameters, I use standard discrete state-space dynamic
programming to solve the households' problem for given prices, and
Monte Carlo simulation to compute aggregates.(5)
Preferences
I follow Pijoan-Mas (2006) in assuming standard time-separable
utility with exponential discounting over sequences of consumption and
leisure. Within any given period, utility is additively separable in
consumption and leisure. The latter assumption is made primarily to
remain close to the setting of Pijoan-Mas (2006). These preferences also
have the feature that the marginal rate of substitution between
consumption and leisure is invariant to the levels of consumption and
leisure; this avoids introducing changes in behavior arising solely from
changes in the long-run location of the wealth distribution that result
from the relaxation of borrowing constraints. More precisely, households
solve
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
subject to the budget constraints described earlier in equations
(4) and (5). The parameters [beta], [sigma], [lambda], and v summarize preferences and are set following Pijoan-Mas (2006). In particular, I
set [beta] = 0.945, [sigma] = 1.458, [lambda] = 0.856, and v = 2.833.
The choices for the discount factor [beta] and the risk-aversion
coefficient on consumption [sigma] are standard in the literature and
stem from long-run observations on interest rates. Relative to a
standard model without valued leisure, the parameters [lambda] and
[upsilon] are new. These parameters govern, respectively, the average
amount of time spent working and the aversion to fluctuations in
leisure. In particular, the alrger [lambda] is, the more leisure a
household takes on average, and the larger [upsilon] is, the more a
household will seek to avoid fluctuations in leisure.
Endowments
The parameter z, which denotes the log of labor productivity,
evolves over time according to an AR(1) stochastic process,
[z.sub.t.sup.i] = p[z.sub.t-1.sup.i] + [[epsilon].sub.t.sup.i].
(11)
The random variable [[[epsilon].sub.t].sup.i] represents the
underlying source of productivity risk and is assumed to be i.i.d. with
standard deviation [[sigma].sub.[epsilon]. The parameter [rho]
determines the persistence of the shock. The mean of
[[[epsilon].sub.t.sup.i] is set so that [Eq.sub.t.sup.i] = E exp ([z.sub.t.sup.i]) = 1. I follow Pijoan-Mas (2006) to assign values of
[rho] = 0.92, and [[sigma].sub.[member of] = 0.21. For computational
purposes, I use the method of Tauchen (1986) to locate a 11-state Markov
chain and associated transition matrix, which jointly approximate the
process for productivity.
Technology
The consumption good in the economy is produced by an aggregate
priduction technology that is Cobb-Douglas in aggregate effective labor
input and physical captial. Thus,
Y = [K.sup.[alpha]][L.sup.1-[alpha]].
The single parameter governing production, [alpha] is assigned
according to capital's share of national income, as is standared
(see e.g., Cooley 1995) and is, therefore, set [alpha] = 0.36.
Borrowing Constrains
I will focus exclusively on equilibria in which prices are
constant, and in which all borrowing is risk-free. I, therefore,
abstract from fluctuatins in interest rates, as well as the possibility
of loan defaut. Given these restrictions, it is relevant to first locate
the largest debt level that can be repaid with certainty in this
economy. Let [member of. bar] be the lowest realization of productivity
that is possible. Since the household is endowed with one unit of time,
our insistence that all debt be repaid with certainty implies that it
must be possible to repay a debt, even if it requres working full time.
Denote the largest limit under which debt reamins risk-free, by
[b.sub.bar.nat] to follow the "natural borrowing limit"
terminology introduced in Aiyagari (1994). For the present economy,
[b.bar.sub.nat] is given by
[b.bar.sub.nat] = - [w[[member of].bar]/r].
For standard perferences, including those that will be used in this
article, households will never allow this borrowing limit to bind. This
is simply because any plan that involves a positive probabilty of a
state in which the marginal utility of lesiure is infinite can be
improved on by one that involves less consumption smoothing and less
debt. The limit [b.bar.sub.nate] is cleary upper bound on indebtedness
among those studied here and will allow us to understand the
implications of limits that are more stringent.
Modeling An Improvement in Credit Access
Credit access can Improve in several mutually compatible ways. For
example, transaction costs arising from the resources required to
forecast borrowers' defaut risk many have been much higher in the
past than they currently are. In turn, such a change would induce
borrowing by lowering the interest rate faced by those who borrow, which
is a topic explored in Athreya (2004). Second, if default is a
possibility, and lenders may know more about borrowers now than in the
past, credit risk may be better priced and thereby allow low-risk
boroowers to avoid being treated like high-risk borrowers. In related
work, Athreya, Tam, and Young (2007) evaluate this possibility. My goal
here is to abstract from both default risk and transactions costs and,
instead, evaluate the simplest form of an expansion in credit. I,
therefore, study five economies in which the borrowing limit is
increased by equal increments, from a benchmark value of 0 to a maximal level that approximates the natural borrowing limit. That is [b.bar] =
{0, -1, -2, -3, -4,}. Given that I use the normalizations that (i) Eq =
1, (ii) households across all economies work approximately one-third of
their time, and (iii) wages are near unity, the borrowing limits
explored here cover a wide range from zero ([b.bar] = 0) to
approximately 12 times median household labor income ([b.bar] = -4).
Table 1 Aggregates
Panel A
Borr. r w Y K
Limits/Agg.
[b.bar.sub.1] 0.0368 1.1884 0.6677 2.0051
[b.bar.sub.2] 0.0410 1.1656 0.6563 1.9101
[b.bar.sub.3] 0.0434 1.1531 0.6507 1.8584
[b.bar.sub.4] 0.0448 1.1460 0.6488 1.8390
[b.bar.sub.5] 0.0455 1.1425 0.6462 1.8133
Panel B
Borr. [CV.sub.cons] L H L/H
Limits/Agg.
[b.bar.sub.1] 0.4149 1.3597 0.3644 0.9872
[b.bar.sub.2] 0.4312 0.3599 0.3633 0.9905
[b.bar.sub.3] 0.4475 0.3606 0.3636 0.9917
[b.bar.sub.4] 0.4608 0.3611 0.3638 0.9925
[b.bar.sub.5] 0.4694 0.3617 0.3644 0.9926
Panel A
Borr. r C Corr(a,z)
Limits/Agg.
[b.bar.sub.1] 0.0368 0.5013 0.4976
[b.bar.sub.2] 0.0410 0.4978 0.4612
[b.bar.sub.3] 0.0434 0.4964 0.4336
[b.bar.sub.4] 0.0448 0.4961 0.4142
[b.bar.sub.5] 0.0455 0.4957 0.4048
Panel B
Borr. [CV.sub.cons] [CV.sub.labor] Corr
Limits/Agg. (H, z)
[b.bar.sub.1] 0.4149 0.1149 0.0492
[b.bar.sub.2] 0.4312 0.1398 0.0640
[b.bar.sub.3] 0.4475 0.1608 0.0628
[b.bar.sub.4] 0.4608 0.1764 0.0621
[b.bar.sub.5] 0.4694 0.1853 0.0597
3. FINDINGS
The central experiment that I perform is to compare allocations and
prices arising from the five different levels of the borrowing
constraint defined earlier. The benchmark environment is taken to be one
in which households are unable to borrow. That is, [b.bar] = 0. The
remaining outcomes cover four levels of borrowing limits, up to a level
[b.bar.sub.5] that is very close to the natural borrowing limit. All
other parameters, including notably the stochastic process for labor
productivity, are held fixed throughout the analysis.
Turning first to the behavior of economy-wide aggregates, Panels A
and B of Table 1 summarize outcomes. There are several implications
arising from the interaction of labor supply and borrowing constraints
for aggregates. A first finding is that, as with inelastic labor supply
(e.g., Hugget 1993), the equilibrium interest rate rises monotonically
with borrowing capacity. The fact that relaxing credit constraints leads
the interest rate to rise is evidence of the "insurance," or
consumption-smoothing benefits, conferred by the availability of a
simple debt instrument. That is, when credit constraints are relaxed
relative to the prevailing limit, all households will be able to use
borrowing from each other to smooth consumption and must rely less on
accumulating claims in the capital stock along. In equilibrium, this
incentive forces the interest rate to rise to clear asset markets. This
is noteworthy because debt has relatively poor insurance properties, as
it requires borrowers to repay a fixed amount unrelated to their current
circumstances. The rise of equilibrium interest rates with borrowing
capacity is also a reflection of the "buffer-stock" behavior
of households. Buffer-stock behavior refers to the feature of optimal
decision making under uncertainty and borrowing constraints whereby
households preserve a reserve of either savings (if borrowing is
altogether prohibited), or borrowing capacity, if the latter is allowed.
In turn, as borrowing constraints are relaxed, households are, in
effect, given a larger buffer, all else being equal, and so choose to
hold fewer assets on average. However, the model is one in which some
households are temporarily lucky in their productivity, while others are
unlucky. Those who are lucky will choose to both work hard and save the
proceeds. To the extent that the net effect of increased borrowing
capacity is that households in the aggregate wish to hold fewer assets,
the interest rate at which household savings exactly equals the
increased borrowing demands of the average household must rise.
As displayed in Table 1, Panel A, in a steady-state equilibrium
with interest rates higher than the benchmark economy, both the demand
for capital by firms and output are lower. The stock of capital falls,
by more than 10 percent, as borrowing constraints approach the natural
limit. However, notice that output levels fall by substantially less. In
particular, the decline in aggregate output is fairly small,
approximately 3 percent. This is a direct reflection of the relatively
low marginal product of capital in the benchmark equilibrium where
borrowing is ruled out. Additionally, borrowing constraints seem to have
only small effects on the aggregate efficiency of the labor input, as
measured by the ratio of effective hours to raw hours. As borrowing
constraints rise from [b.bar.sub.1] to [b.bar.sub.5], this ratio rises
monotonically, by approximately one-half of one percentage point from
0.9871 to 0.9926.
The behavior of the economy in response to relaxed credit
constraints is, thus far, analogous to that of an economy in which labor
is supplied in-elastically. Therefore, where precisely does the ability
of households to vary work-effort manifest itself? A first measure lies
in the volatility of household labor effort. The column "[CV sub
labor]" in Table 1, Panel B displays the ratio of the standard
deviation of household labor effort to its mean. The clear pattern is
that of a very large increase, a near-doubling, in variability of labor
effort as households are allowed to borrow more. This suggests that
households use labor supply less to buffer consumption than to take
advantage of temporarily high productivity.
A second clear change in aggregate labor supply behavior arising
from an increased ability to borrow is the large decrease in the
correlation between wealth and labor supply seen in Table 1, Panel A.
The nearly 20 percent decrease in the cross-sectional correlation of
current assets and current labor supply is another reflection of the use
by households, of labor for efficient production rather than constant
consumption smoothing. In the economies studied, the high persistence of
labor productivity means that the lucky are also the wealthy. When
borrowing is ruled out, households that are productive have two reasons
to work. First, the relative price of leisure is high. Second, the value
of accumulating a buffer stock is high. In turn, it would be expected
that once borrowing is made relatively easy, the former incentive
remains, while the latter diminishes.
In contrast to the decline in correlation between wealth and labor
hours arising from a relaxation of credit constraints, the correlation
between productivity and labor supply generally rises with credit
limits. Most noticeable, perhaps, is the low level of the correlation
between hours and productivity; the level is approximately 0.06, very
close to that level of 0.02 measured in the data by Pijoan-Mas (2006).
Along this dimension, the model produces realizations under all
specifications of the borrowing limit. In fact, the original work of
Pijoan-Mas (2006) was aimed at demonstrating that incomplete asset
markets could make labor effort insensitive enough to variations in
productivity to match observations. The results in the present article
suggest that relaxed borrowing constraints are not enough to
substantially alter this result.
Interestingly, Table 1 shows that average number of hours worked as
well as the average efficiency of the labor supplied remain fairly
constant. The former, therefore, implies that credit constraints in this
economy do not have strong effects on the total hours supplied, but as I
show later, do matter for the timing of those hours. The same feature is
true of the "effective" labor supply of households. This is a
reflection of the fact that even though households may work more when
productive, and less when not, the complex interaction of labor supply
and household wealth results in there being a very weak relationship
between borrowing capacity and the aggregate efficiency of the labor
input. In particular, two things are worth noting. First, the
preferences used in this article are not consistent with balanced growth
as they display wealth effects. In turn, as wages fall, the substitution
effect leading households to work less may be offset by a wealth effect
that leads them to choose less leisure. Second, as will be discussed
later, changes in borrowing constraints generate large changes in
equilibrium wealth distributions. These effects appear to be offsetting
for aggregate hours.
To get a clearer sense of how borrowing matters for labor supply,
it is useful to study households grouped by wealth levels. In Table 2, I
use the cutoffs defined by the quintiles of the benchmark wealth
distribution, denoted [Q.sub.i], i = 1, ... ,5. This way, a given wealth
percentile always refers to a particular level of wealth, which allows
one to disentangle the effects of borrowing constraints from the effects
of changes in the wealth distribution that occur when credit limits are
changed. A first finding is that the effect of borrowing constraints on
the behavior of households does depend on wealth, especially for
low-wealth households. In Panel A of Table 2, I display the labor hours
supplied by households across (benchmark) wealth quintiles for
households receiving the lowest productivity shock. It is immediately
apparent that poor households supply substantially more hours when
borrowing is ruled out than when it is allowed. As wealth rises,
however, changes in borrowing constraints have much smaller effects on
labor supply. The fact that wealth-poor households work so much when
relatively unproductive when they cannot borrow, and much less when they
can, is direct evidence that labor supply is an important device for
smoothing consumption, at least for low-wealth, low-productivity
households. From Panel B, it is clear that for households with 25th
percentile productivity, labor supply varies less with both borrowing
constraints and wealth across all wealth quintiles. This pattern is seen
again in Panel C of Table 2, which covers median-productivity
households. In sum, borrowing constraints alter the relationship between
productivity and hours for the wealth-poor, but not for the wealth-rich.
The behavior of equilibrium outcomes is partially determined by the
decisions households would take for wealth and productivity levels that
are rarely, or even never, observed. An example of this: even though the
natural borrowing limit will never bind, the possibility that households
may experience shocks, which require borrowing, leads them to be
cautious. Therefore, it is instructive to study household decision
rules, in particular for labor effort. Figure 1 contains optimal asset
accumulation as a function of current wealth and productivity, across
borrowing limits, while each panel of Figure 2 collects optimal labor
supply. In both Figures 1 and 2, interest rates and wages are held fixed
at their benchmark values (i.e., those obtained under borrowing limit
[b.bar.sub.1]), so that the effect of borrowing limits on decisionmaking
is isolated.
[FIGURE 1 OMITTED]
[FIGURE 2 OMITTED]
Table 2 Labor Effort By Wealth and Productivity
Panel A: Lowest Productivity
Borr. Limits/Wealth Quintile Q1 Q2 Q3 Q4 Q5
[b.bar.sub.1] 0.0669 0.0473 0.0255 0.0080 0.0004
[b.bar.sub.2] 0.0369 0.0303 0.0178 0.0093 0.0008
[b.bar.sub.3] 0.0309 0.0281 0.0123 0.0071 0.0008
[b.bar.sub.4] 0.0285 0.0235 0.0174 0.0061 0.0004
[b.bar.sub.5] 0.0263 0.0215 0.0173 0.0085 0.0008
Panel B: 25th Percentile Producitivty
Borr. Limits/Wealth Quintile Q1 Q2 Q3 Q4 Q5
[b.bar.sub.1] 0.1284 0.1080 0.0844 0.0549 0.0141
[b.bar.sub.2] 0.1023 0.0880 0.0746 0.0479 0.0144
[b.bar.sub.3] 0.0877 0.0806 0.0718 0.0460 0.0108
[b.bar.sub.4] 0.0822 0.0768 0.0684 0.0468 0.0097
[b.bar.sub.5] 0.0792 0.0741 0.0662 0.0499 0.0089
Panel C: Median Producitity
Borr. Limits/Wealth Quintile Q1 Q2 Q3 Q4 Q5
[b.bar.sub.1] 0.3472 0.3266 0.3024 0.2648 0.1865
[b.bar.sub.2] 0.3232 0.3177 0.2960 0.2632 0.1804
[b.bar.sub.3] 0.3235 0.3162 0.2944 0.2638 0.1754
[b.bar.sub.4] 0.3224 0.3147 0.2960 0.2630 0.1725
[b.bar.sub.5] 0.3209 0.3141 0.2998 0.2603 0.1723
I display results for three productivity levels that correspond
approximately to the 25th percentile, 50th percentile, and 75th
percentile of productivity. Three key points are apparent. First, the
qualitative shape of optimal labor effort does not depend on the extent
of borrowing capacity. In all three panels, the most productive
households work substantially more than the least productive, except
very near the borrowing constraint. Second, households with relatively
low productivity are much more sensitive to increases in wealth than
those with high productivity. Specifically, low productivity households
reduce their labor supply with increases in wealth much more rapidly
than their higher productivity counterparts. Third, what determines the
sensitivity of labor effort to assets is the proximity to the borrowing
constraint. In other words, being poor, per se, does not necessarily
increase labor effort, but being close to a borrowing constraint does.
In fact, under both the medium borrowing limit and the natural limit, it
is the households with the lowest productivity that work the hardest
when near the borrowing limit. This is direct evidence of an inefficient
use of time by households. Under complete markets, households would work
most when most productive, not when least productive.
In order to better understand the role played by borrowing limits
on labor effort, see Figure 3. The three panels of this figure point to
three findings. First, labor supply depends on the proximity to the
borrowing constraint, rather than on wealth itself. For example, in the
top panel, households have received the "low" (25th
percentile) level of productivity. At a level of zero wealth, when
borrowing is prohibited, households work much longer than when either of
the other two borrowing limits are imposed. A second feature
illustrating the importance of the distance from the borrowing
constraint is that in each panel of Figure 3, the wealth level at which
a given labor supply is chosen "shifts" to the left by
approximately the amount of the increase in borrowing constraint.
[FIGURE 3 OMITTED}
A second finding is that the importance of borrowing limits
diminishes as productivity rises, as seen in the increasing similarity
of labor supply decisions across wealth levels as productivity rises.
Under the relatively high persistence of productivity shocks used in the
model and thought to characterize U.S. household experience, high
current productivity leads households to expect high future
productivity. Conversely, a currently low-productivity household can
reasonably expect more of the same in the future. Borrowing is then
unlikely to provide a riskless stream of consumption, and households,
therefore, respond by working harder. In sum, borrowing constraints
alter the behavior of the low-productivity poor the most. A natural
interpretation of this finding is that borrowing constraints create a
set of workers who cannot "afford" not to work, even when they
are extremely unproductive.
The preceding discussion described household behavior for arbitrary
combinations of productivity and wealth. However, it is possible that
precisely because households would "have" to work hard when
close to the borrowing limit if they were unlucky, many might save at
high enough rates to avoid spending much time in such situations. In
turn, observed labor supply might appear fairly insensitive to wealth.
The outcomes documented in Table 3 are important because they show that
the behavior embedded in the decision rules does indeed influence
realized equilibrium outcomes. Table 3 contains three measures aimed at
answering the question of "who works hard." In each panel of
the table, within a given row, borrowing limits are held fixed, while
the columns represent quintiles of labor effort. For example, the first
row, first column entry of Table 3, Panel A, gives the mean level of
productivity of households who work the least, in the sense of being the
lowest quintile of labor effort. The mean wealth level for the same
subset of households is given by the analogous entry in Panel B.
Similarly, the first row, fifth column entries of Panels A and B give
the mean productivity and wealth of the hardest working 20 percent of
households in the model when borrowing is not allowed. Panel C of Table
3 collects the conditional means of labor effort for households by
productivity quintile. Here, it can be seen that for the least
productive households (the column under the heading "Q1")
labor effort falls systematically as borrowing limits are expanded.
Conversely, for the highest productivity households, labor supply
increases as borrowing limits are extended. Moreover, given that
productivity is lognormal, the increased effort of the highest
productivity households further increases the "effective"
labor supply to the economy.
The findings here suggest the following. One, in general, the
hardest working are the poorest, especially those close to the borrowing
constraint. Two, when borrowing is ruled out, the efficiency of those in
the top quintile of hours is only about three-fourths (76.82 percent) of
mean productivity. This is a striking indicator that the potential for
inefficiently high (from a first-best perspective) supply of labor by
the relatively unproductive highlighted in Figures 2 and 3 is a
phenomenon that is actually realized in equilibrium. Three, as borrowing
constraints are relaxed, this measure improves substantially and then
stabilizes. This suggests that a move from no-borrowing to being able to
borrow roughly two to three times the annual income ([[b.bar.sub.1] =
-1) generates large gains in the productivity of the labor input, with
subsequent increases being less important. (6)
4. BORROWING LIMITS AND CONSUMER WELFARE
Economists' interest in the ability of consumers to borrow
ultimately stems from a view that credit constraints may have important
implications for welfare. However, measuring welfare gains arising from
the relaxation of credit constraints under uninsurable risks is not as
straightforward as it may seem. First, welfare can be measured by
directly comparing the value functions for a household across any two
specifications of the borrowing constraint, and then expressing the
gains or losses in terms of differences in constant or "certainty
equivalent" levels of consumption. Specifically, given a household
state ([^ a], [^ z]), let [V.sup.(i)] ([^ a], [^ z]) be the maximal
utility attainable under a borrowing constraint [b.bar.sup.i]. In the
model, households derive utility from both consumption and leisure.
Therefore, in order to convert utility into constant levels of
consumption, we use the preferences over consumption alone, with the
same curvature parameter [sigma] = 1.458, and discount factor [beta] =
0.945. We then compute the certainty equivalent as the scalar ce([^ a],
[^ z]) that solves:
[[infinity].summation over (t =
0)][[beta].sup.t]([[ce([^.a],[^.z]).sup.1 - [sigma]] - 1]/[1 - [sigma]])
= [V.sup.(i)]([^.a],[^.z]),
which requires
ce([^.a],[^.z]) = [[V.sup.(i)]([^.a],[^.z])(1 - [beta])(1 -
[sigma]) + 1].sup .[1 - [sigma]]
Table 3 Who Works Hard? Mean Productivity and Mean Wealth
by Labor Effort Quintiles
Panel A: Mean Productivity
Borr. Limit/ [Q.sub.1] [Q.sub.2] [Q.sub.3] [Q.sub.4] [Q.sub.5]
Effort Quintile
[b.bar.sub.1] 0.8806 1.0257 1.0793 1.1591 0.7682
[b.bar.sub.2] 0.8667 1.0439 1.0615 1.0939 0.9102
[b.bar.sub.3] 0.8697 1.0380 1.0972 1.1538 0.9374
[b.bar.sub.4] 0.8645 1.0491 1.0727 1.3187 0.9329
[b.bar.sub.5] 0.8607 1.0612 1.1025 1.3492 0.9280
Panel B: Mean Wealth
Borr. Limit/ [Q.sub.1] [Q.sub.2] [Q.sub.3] [Q.sub.4] [Q.sub.5]
Effort Quintile
[b.bar.sub.1] 5.1679 2.5128 1.3645 0.7993 0.1974
[b.bar.sub.2] 5.7685 2.6604 1.2875 0.3535 -0.5227
[b.bar.sub.3] 6.0268 2.5543 1.2419 0.4925 -1.1160
[b.bar.sub.4] 6.2467 2.6087 1.0796 0.8819 -1.5769
[b.bar.sub.5] 6.3246 2.6935 1.1539 0.8914 -1.8765
Panel C: Mean Effort
Borr. [Q.sub.1] [Q.sub.2] [Q.sub.3] [Q.sub.4] [Q.sub.5]
Limit/
Productivity
Quintile
[b.bar.sub.1] 0.3768 0.3539 0.3550 0.3616 0.3747
[b.bar.sub.2] 0.3712 0.3507 0.3548 0.3638 0.3766
[b.bar.sub.3] 0.3693 0.3508 0.3557 0.3654 0.3777
[b.bar.sub.4] 0.3676 0.3514 0.3562 0.3666 0.3784
[b.bar.sub.5] 0.3667 0.3521 0.3572 0.3673 0.3787
For any two borrowing limits [b.bar.sub.i] and [b.bar.sub.j], the
difference [DELTA]c[e.sup.ij] ([^ a], [^ z]) [equivalent to]
c[e.sup.(i)] ([^ a], [^ z])--c[e.sup.(j)] ([^ a], [^ z]) is then a
measure of the effect of welfare effects of changes in borrowing
constraints.
Of course, in economies with uninsurable risk, this measure will
differ across households, as the latter differ in their asset levels a
and productivity levels z. Therefore, in order to get an aggregate
measure of welfare gains or losses, a weighted average is useful. Given
[DELTA][ce.sup.ij] (a, z) [for all]a, z, and the current long-run
distribution of assets and productivity, [[mu].sup.i] (a, z), that
prevails under a given borrowing limit, the average difference in
certainty equivalents across two policies i and j is:
E[[mu].sup.i][[DELTA][ce.sup.ij] [equivalent to] [integral]
[DELTA][ce.sup.ij] (a, z) d[[mu].sup.i] (a, z).
In sum, E[[mu].sup.i][[DELTA][ce.sup.ij] gives the average gain or
loss across inhabitants of an economy that will be experienced by an
immediate move from the extension of borrowing limits from [b.bar.sub.i]
to [b.bar.sub.j], given their current state. (7) One appropriate context
for the use of this criterion is when borrowing limits [b.bar.sub.i] and
[b.bar.sub.j] have prevailed for a long time in two different places,
such as countries i and j, for example. [MATHEMATICAL EXPRESSION NOT
REPRODUCIBLE IN ASCII] then gives the average of the gains experienced
by each household in country i if only they (or a subset of households
of measure zero) were moved, with their current wealth and productivity,
to country j.
An alternative welfare measure to the preceding is obtained by
computing the weighted average of maximal utility a household could
obtain if it began with a given level of assets and productivity. A
common procedure for choosing the weights, originating in Aiyagari and
Mc Grattan (1998), is to assign households a state according to the
long-run distribution under borrowing limit [[b.bar.sub.j] denoted
[[mu].sup.j] (a, z). As before, converting these differences in expected
utility into units of constant consumption yields a tangible measure of
long-run or "steady state" welfare gains and losses
E[[mu].sup.i][[DELTA][ce.sup.ij]. I denote this measure as:
E[[mu].sup.j][[DELTA][ce.sup.ij] [equivalent to] [integral]
[DELTA][ce.sup.ij] (a, z)d[[mu].sup.j] (a, z). (13)
Notice that the neither the measure in equation (12) nor that in
equation (13) takes account of the transitional dynamics of wealth
during the adjustment to the new steady state, and will, therefore, be
potentially misleading. However, because the latter measure uses the
long-run distribution under a proposed policy to weight welfare gains,
it also does not control for long-run changes in the joint distribution
of households over the state arising from changes in credit
availability. For example, if constraints were relaxed relative to the
present, in the long run there may be many more households holding large
debts than before. In such a case, weighting the value functions by the
distribution under relaxed borrowing limits will understate the welfare
gains accruing to households who decumulated wealth in the aftermath of
the policy change. In particular, an improved ability to borrow will
lead many households to reduce their reserve of assets, which allows
them a jump in consumption along the transition. It is beyond the scope
of the current article to compute the welfare gains inclusive of the
transition, but the two measures reported here are quite useful polar
cases.
The preceding discussion makes clear that the central difference
between the two measures above lies in the distribution used to weight
households. The measure E[[mu].sup.i][[DELTA][ce.sup.ij] has perhaps
most relevance for generations arriving in the distant future, whose
state-vectors will be drawn from the long-run distribution associated
with the permanent imposition of the proposed change in borrowing
constraints. It is useful to note that, under some circumstances, the
model used here may be interpreted as consisting of (altruistically linked) overlapping generations of households. The implied per-period
discounting of future generations by current ones is [beta] < 1.
However, a policymaker who values future generations the same as present
ones (i.e., has an effective discount rate of [beta] = 1) will view
those born in the future as being at the mercy of their ancestors'
debt choices. (8) When large debts are feasible to incur, there may be
many in the future who are destitute early in life. In turn, even though
each of those households would be better off for any given value of the
state, there may be so many low-wealth households under a lax credit
constraint that overall average welfare decreases.
Table 4 Borrowing Limits and Welfare, General Equilibrium
Borrowing [MATHEMATICAL [MATHEMATICAL
Limits/Welfare EXPRESSION NOT EXPRESSION NOT
REPRODUCIBLE REPRODUCIBLE
IN ASCII] IN ASCII]
[[b.bar.sub.1] - -
[[b.bar.sub.2] 1.05% 0.36%
[[b.bar.sub.3] 1.56% 0.74%
[[b.bar.sub.4] 1.80% 1.01%
[[b.bar.sub.5] 1.93% 1.29%
With the preceding discussion in mind, Table 4 presents the welfare
consequences of more relaxed credit limits. All welfare changes are
expressed in terms of the ratios of [MATHEMATICAL EXPRESSION NOT
REPRODUCIBLE IN ASCII] and [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN
ASCII] to mean consumption under the tightest borrowing limit
[[b.bar.sub.1], given by [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN
ASCII]
The striking thing to note is that welfare grows much faster with
the relaxation of borrowing constraints according to the welfare measure
that uses the current distribution (i.e., the one prevailing prior to a
policy change) than when measured using the long-run distribution
following from a policy change. For example, a move from[[b.bar.sub.1]
to [[b.bar.sub.3] appears more than twice as desirable under the former
criterion than under the latter. What accounts for the difference? The
answer lies in the changes in wealth accumulation induced by changes in
borrowing limits. In the top panel of Figure 4, I present the
distributions of assets obtained under the benchmark borrowing limit
[[b.bar.sub.1], an intermediate limit [[b.bar.sub.3], and the most
relaxed limit under consideration, [[b.bar.sub.5]. Notice that the
latter contains a great deal of indebtedness, relative to the other
cases. This feature is a striking implication of the
"buffer-stock" behavior of these households. More ability to
borrow simply pushes many households to hold wealth that keeps roughly
at the same distance to the (now relaxed) borrowing constraint. In turn,
any weighted average of utilities reflects the lower utility gains
experienced by a systematically poorer population. However, such a
measure ignores the increased consumption enjoyed en route to the new
steady-state by all households that became able to borrow more. Finally,
and naturally perhaps, I find that the gains relative to the
no-borrowing benchmark are largest. for initial relaxations in the
constraints and, subsequently, grow much more slowly.
[FIGURE 4 OMITTED]
The Importance of General Equilibrium
In an incomplete-insurance economy, prices themselves are a source
of risk. For example, a higher interest rate is good for households who
receive good shocks, as they are likely to wish to save income.
Conversely, high interest rates are bad for those who are unlucky, as
they will find borrowing expensive. Therefore, it is useful to provide
measures of welfare gains and losses coming from experiments in which
the economy is treated as small and open. In such a setting, prices
(wages and interest rates) can be viewed as being determined outside the
economy.
Table 5 presents the welfare implications of relaxing credit limits
when interest rates and wages are held fixed at their benchmark levels,
i.e., when [[b.bar.sub.1] is imposed.
In this case, the results are much larger in size than before for
both measures of welfare, but most striking is the fact that the second
measure shows that welfare falls as credit limits expand. How can this
be? The answer is that expansions in credit generate much more extreme
changes in the long-run wealth distribution in partial equilibrium than
in general equilibrium. This is seen by comparing the top and bottom
panels of Figure 4. In partial equilibrium, the incentives of all
households to borrow more under relaxed constraints is not met by a
higher interest rate or by lower wages. In turn, the wealth distribution
shifts even further to the left as households are allowed to acquire
larger debts. Using the current distribution then gives households
access to more credit at the relatively low benchmark interest rate and
high benchmark wage, which is why the welfare gains are larger than in
general equilibrium. However, precisely because the average household is
much poorer in the long run under relaxed constraints, outcomes look
much worse from the perspective of a household being assigned an initial
state according to the long-run distribution.
Table 5 Borrowing Limits and Welfare, Partial Equilibrium
Borrowing [MATHEMATICAL [MATHEMATICAL
Limits/Welfare EXPRESSION NOT EXPRESSION NOT
REPRODUCIBLE REPRODUCIBLE
IN ASCII] IN ASCII]
[b.bar.sub.1] - -
[b.bar.sub.2] 1.21% -3.25%
[b.bar.sub.3] 2.03% -6.26%
[b.bar.sub.4] 2.63% -8.97%
[b.bar.sub.5] 3.09% -11.28%
The Distribution of Welfare Changes
A key aspect of the model used in this article is that it generates
heterogeneity in current wealth, and as a result, in consumption and
leisure, as well. Therefore, welfare gains from the relaxation of credit
limits will differ across households. In order to provide insight into
the gains or losses accruing to particular subsets of hoseholds, Table5.
Panel A gives the average difference in certainty equivalent across
borrowing limits for households within each quintile of wealth, as
defined by the benchmark economy's wealth distribution. That is,
the welfare gain to households in quintile-k is
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (14)
where [[mu].sub.k.sup.i] is the distribution of the household state
given that wealth lies within the kth quintile.
Table 6 collects a set of welfare gains organized by household
wealth. Panel A displays partial equilibrium results, and Panel B,
general equilibrium outcomes. The results are interesting along several
dimensions. First, in both Panels A and B, it is clear that all
households gain systematically from an increased ability to borrow.
However, under partial equilibrium, the gains are largest by far for the
wealth-poorest of households, and then fall steadily as households
become wealthier. This is perhaps natural; richer households would seem
to have less to gain directly from any increase in the ability to
borrow. After all, such households are unlikely to need credit in the
near future.
Once interest rates and wages are allowed to adjust to changes in
borrowing capacity, the results change in a striking way. First, the
welfare gains themselves are in general substantially smaller, and
second, the biggest beneficiaries of a move to relaxed credit limits are
currently wealthy. Why is this? Recall from Table 1 that an increase in
credit limits leads to (i) a higher long-run interest rate and (ii) a
lower long-run wage. How will this affect households of different wealth
levels? A currently poor household that is likely to need to borrow will
prefer, all else being equal, paying a lower interest rate and earning a
higher wage. Its rich counterpart will want, by contrast, a higher
interest rate, and will also care less about a fall in the wage; for the
latter, capital income is the most important part of overall earnings.
In the middle quintiles, these effects partially offset and result in
smaller gains. As a result, there is a U-shaped relationship between
welfare gains and wealth in general equilibrium. By contrast, under
partial equilibrium, there are no price effects at all, which,
therefore, leads welfare gains to shrink monotonically (but remain
positive) as credit limits expand. (9) A useful interpretation of the
findings above is that for a small open economy, the biggest
beneficiaries of an expansion in credit will be the wealth-poor, while
for a large closed economy, the currently rich can be expected to gain
the most.
5. CONCLUDING REMARKS
In this article, I studied the interactions between credit markets,
labor markets, and uninsurable idiosyncratic risk. The analysis
proceeded by evaluating allocations across a variety of specifications
of the ability of households to borrow against future income. The main
results are as follows. First, the hardest working households are those
who are least wealthy, and most strikingly, also the least productive.
Second, credit access can play an important role in reducing high labor
effort by low-productivity households. Third, the buffer-stock
tendencies of households imply that the distance from the borrowing
constraint is often more important than the actual level of wealth in
influencing labor effort. Fourth, measures of the welfare gains to
current consumers show that there are significant benefits from
expansions in credit access, and that these gains accrue
disproportionately to the relatively poor and relatively rich.
Table 6 Welfare Gains by Wealth Quintile
Panel A: Across Benchmark Wealth
Quintiles/Partial Equilibrium
Borr. [Q.sub.1] [Q.sub.2] [Q.sub.3] [Q.sub.4] [Q.sub.5]
Limits/Wealth
Quintile
[b.bar.sub.1] - - - - -
[b.bar.sub.2] 2.46% 1.43% 1.05% 0.71% 0.39%
[b.bar.sub.3] 3.90% 2.46% 1.81% 1.29% 0.71%
[b.bar.sub.4] 4.81% 3.22% 2.39% 1.74% 0.97%
[b.bar.sub.5] 5.60% 3.76% 2.84% 2.08% 1.17%
Panel B: Across Benechmark Wealth
Quintiles/General Equilibrium
Borr [Q.sub.1] [Q.sub.2] [Q.sub.3] [Q.sub.4] [Q.sub.5]
Limits/Wealth
Quintile
[b.bar.sub.1] - - - - -
[b.bar.sub.2] 1.57% 0.64% 0.47% 0.56% 2.01%
[b.bar.sub.3] 2.11% 0.90% 0.64% 0.86% 3.27%
[b.bar.sub.4] 2.21% 1.00% 0.71% 1.02 4.05%
[b.bar.sub.5] 2.35% 1.01% 0.73% 1.09% 4.46%
There are many directions for future research along the lines
developed here that appear productive. Two of these are as follows.
First, a potentially fruitful avenue for future work is to augment the
present model to include aggregate risk. This would allow for the
coherent analysis of so-called "wealth effects," that have
occupied the attention of numerous atheoretical studies and have been
influential in the decisions of atheoretically-oriented policymakers. As
it is, the model presented in this article suggests that aggregate
relationships between endogenous variables such as consumption and
wealth are the result of aggregating the behavior of households that
differ substantially in their productivities, and more crucially, in
their marginal propensities to work, consume, and save.
An important caveat to these results is that the expansion of
credit was treated in this article as exogenous. The important work of
Alvarez and Jermann (2000) demonstrates that it is quite possible that
the same forces that lead households to want to borrow more may also
allow them to do so. Krueger and Perri (2006), for example, apply this
logic suggesting that when defaulters can be excluded from asset markets
altogther, increases in income risk simultaneously make credit more
beneficial and borrowing more feasible. The present work can be seen as
measuring the effect on allocations arising solely from an increased
ability to borrow, while abstracting from the additional effect on
credit availability arising from a change in households' underlying
environment.
A second line of research suggested by the results is that if
recent financial innovation has genuinely altered household borrowing
capacity, this in turn may imply a secular increase in the long-run
average real interest rate. (10) An implication of a recent class of
models of monetary policy is the desirability of consistently targeting
a nominal rate that mirrors the underlying real interest rate in a
nonmonetary economy. Thus, it may be useful to extend the model used
here to allow for monetary policy.
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(1) Edelberg (2006), Furletti (2003), Krueger and Perri (2006), and
Narajabad (2007).
(2) Storesletten, Telmer, and Yaron (2004) is an important landmark
in this literature. The interested reader should also consult the Review
of Economic Dynamics (2000) interview with Kjetil Storesletten.
(3) Pijoan-Mas (2006) does study allocations under more generous
borrowing limits, but recalibrates the model to generate the observed
correlations between effort and productivity. This is because he treats
borrowing constraints as unobservable. The key point is that the
recalibrated elasticity of substitution of labor turns out to be
substantially different than in the benchmark. This suggests precisely
that borrowing limits are likely to be important in influencing
behavior.
(4) One question that is relevant, but not addressed here, is the
extent to which measures of labor supply elasticity are biased by
ignoring borrowing constraints when, in fact, they are present. This is
valuable for ensuring that models of the type studied here deliver
accurate implications when used for policy analysis (see, for example,
Domeij and Floden [2006]). Accurately measuring labor supply
elasticities are key for business-cycle related research, as well. A
cornerstone of standard models of aggregate economic activity, such as
the basic real business cycle model (for example, KPR 88), are the
consumers who value consumption and leisure and face productivity
shocks. A key parameter governing the behavior of such models is the
elasticity of labor supply, which directly dictates the extent to which
households, and in turn aggregates, respond to changes in labor
productivity.
(5) I use 700 unevenly spaced grid points for capital and the
method of Tauchen (1986) to generate an 11-state Markov chain to
approximate the productivity process. I then simulate the economy for
200,000 periods to compute aggregates. All code is available on request.
The interested reader should consult Nakajima (2007), which describes
how to do discrete-state dynamic programming, and Nakajima (2006), which
contains a helpful description of the algorithm used to solve the
present model.
(6) Another way to see this is that as borrowing limits expand,
while the hardest working households are increasingly poor, as seen in
the first column of Panel B, mean wealth does not fall one-for-one with
borrowing limits.
(7) This idea originates in Benabou (2002) and is also applied in
Seshadri and Yuki (2004).
(8) Limited liability for debts incurred by previous generations is
a very widespread legal practice, and one that is potentially important
in preventing such outcomes. Under this form of intergenerational limited liability, the weighted average using the current wealth
distribution is perhaps more sensible.
(9) The welfare gains are qualitatively and quantitatively very
similar when households are ranked by current productivity, and
therefore are not presented here. This result is natural given that
productivity shocks are highly positively correlated with wealth (see
Table 1, Panel A) and are highly persistent. Therefore, the wealth-poor
value access to credit, while the wealth-rich value a higher return on
savings. Correspondingly, welfare gains are again U-shaped across
productivity quintiles in general equilibrium and positive, but
monotone-decreasing in partial equilibrium.
(10) Of course, the U.S. is a (large) open economy, and the 1990s
and 2000s saw large increases in the purchase of U.S. corporate and
government debt by China and others. All else being equal, these
purchases may well have kept real interest rates down. The results of
the present article merely suggest that barring such changes, more
borrowing capacity by U.S. households to borrow from each other implies
a higher equilibrium real rate of interest.
I thank Ahmet Akyol and especially Juan Carlos Hatchondo for
discussions. I also thank Kevin Bryan, Chris Herrington, and Yash Mehra
for comments. I thank Kay Haynes for expert editorial help. The views
expressed in this article are those of the author and not necessarily
those of the Federal Reserve Bank of Richmond or the Federal Reserve
System. All errors are my own.