Rational expectations in the aggregate.
Haltiwanger, John C. ; Waldman, Michael
RATIONAL EXPECTATIONS IN THE AGGREGATE
I. INTRODUCTION
One of the major recent innovations in economic theory is the
emergence of the rational expectations hypothesis, the hypothesis that
expectations of agents tend to be consistent with the predictions of the
relevant economic theory. This paper considers the relationship between
the way rational expectations is typically employed in practice and the
argument frequently put forth to justify its use.
Rational expectations has typically meant what we will refer to as
standard rational expectations: the expectation of each agent taken
separately is by itself consistent with the predictions of the relevant
theory. This, however, is different from the argument frequently put
forth by proponents of the rational expectations hypothesis to justify
its use. This argument is that on an aggregate level expectations
should be consistent with the predictions of the relevant theory. This
justification recently in the works of Kantor [1979], Maddaock and
Carter [1982], and Hoover [1984]; it was first expressed by Muth [1961,
316]:
The hypothesis can be rephrased a little more precisely as follows:
that expectations of firms (or, more generally, the subjective
probability distribution of outcomes) tend to be distributed, for the
same information set, about the predictions of the theory (or the
"objective" probability distributions of outcomes).
Underlying the above argument is a belief that if expectations are
rational in the aggregate, then expectational deviations across agents
will tend to cancel out. The statement of this belief also appeared in
Muth [1961, 321]:
...Allowing for cross-sectional differences in expectations is a
simple matter, because their aggregate effect is negligible as long as
the deviation from the rational forecast for an individual firm is not
strongly correlated with those of the others...
Charles Schultze [1985, 10] expressed the same notion in his 1984
presidential address to the American Economic Association: (1)
In a word of auction markets, the fact that forecasts of individual
agents are widely distributed around the "true" mean is for
most purposes irrelevant...
This paper formally investigates the relationship between standard
rational expectations and what occurs when expectations are rational
only in the aggregate, i.e., what will be referred to here as aggregate
rational expectation. (2) The goal is two fold. First it is to show
that the above view is overly simple. It is generally not the case that
an aggregate rational expectations world can e accurately modeled using
a standard rational expectations assumption. The second objective is to
consider environments where standard and aggregate rational expectations
equilibria differ, and investigate what factors affect the size of the
difference.
These issues are examined by analyzing a model wherein agents
choose between alternative activities. A crucial factor in determining
the relationsip between standard and aggregate rational expectations
equilibria is the nature of the interaction among agents. This
interaction is characterized as being either of two types. First,
activities can exhibit congestion, i.e., the larger is the total number
of agents who choose to participate in a given activity, the lower is
the incentive for agent i to choose that activity. Examples of
situations which exhibit congestion are the problem of agents choosing
between different roads which lead to the same final destination, and
market decisions such as the problem of carrer choice or the problem of
firms deciding where to locate. Second, the activities can exhibit
synergism, i.e., the larger is the total number of agents who choose to
participate in a given activity, the higher is the incentive for agent i
to choose that activity. An example of a situation which exhibits
synergism is the problem faced by consumers in choosing a computer
hardware system; the larger is the number of individuals who purchase a
particular system, the greater will be the subsequent availability of
computer peripherals and software for that system. This model is
considered because of its generality; many common models are actually
special cases of it, and that will be demonstrated. (3)
Only under very special conditions do standard rational
expectations and aggregate rational expectations yield equivalent
results. The difference between the two equilibria is larger when: (i)
the divergence in expectations under aggregate rational expectations is
increased; (ii) in a world which exhibits congestion, the severity of
the congestion is decreased; (iii) in a worls which exhibits synergism,
the severity of the synergism is increased; and (iv) the activities
exhibit synergism rather than congestion.
These results to our own earlier work on the robustness of rational
expectations equilibria. Haltiwanager and Waldman [1985] considered an
environment in which agents vary in terms of their ability to form
expectations; but in contrast to the present paper, no aggregate
rational expectations assumption was imposed. Rather, that paper looked
at an environment in which there are two types of agents. Agents termed
"sophisticated" satisfied a standard rational expectations
assumption, while those referred to as "naive" all had the
same incorrect set of expectations. (4) The issue addressed was, given
an environment in which agents vary in this manner, is it the
sophisticated agents or the naive agents who are disproportionately important in the resulting equilibrium? If the environment exhibits
congestion, then the sophisticated agents turn out to be
disproportionately important, while with synergism the naive agents
dominate. These two papers are complementary. Although thoy employ
different tests to determine whether standard rational expectations
equilibria are robust, they reach quite similar conclusions. In both,
standard rational expectations equilibria tend to be robust in
environments of congestion but not synergism.
Section Ii sets forth a model agents choose between alternative
activities. Section III analyzes the model, with special attention paid
to the factors which affect the sizes of the different between standard
and aggregate rational expectations equilibria. Section IV presents two
special cases of the genereal model: (i) a model of career choice, and
(ii) a variant of the macroeconomic trading externality model of Diamond
[1982]. In addition to showing the general applicability of the model,
these examples demonstrate a number of real-world implications of the
approach. Section V presents concluding remarks.
II. THE MODEL
The analysis is conducted within the context of a simple model
wherein agents choose whether or not to participate in a given activity
(note: the model is formally equivalent to a model where agents choose
between two different activities). It is assumed that the choice
concerning participation is made prior to the realization of the returns
to participation, that it is irreversible, and that it is made
simultaneously by all agents in the population. The benefit to
participating for a given agent is given by B([pi]), where [pi] is the
proportion of agents who choose to participate, i.e.,
[pi][Epsilon](0.1). (5) If B'[is less than]([is greater than]) 0,
then the activity congestion (synergism). Agents are parametrized by
variables ([x.sub.i], [e.sub.i]). The variable [x.sub.i] determines
agent i's cost of engaging in the activity, C([x.sub.i]), where
[x.sub.i] is uniformly distributed on [0,1]. (6) [x.sub.i] can be
interpreted either as a random draw of costs or as representing a
characteristic of agents that is distributed uniformly across the
population. The variable e.sub.i is agent's i's error in the
expectation of the benefit B([pi]). Under standard rational expressions
e.sub.i is identically zero for all agents. (7) Under aggregate
rational expectations, the distributions of e.sub.i.]s is described by a
density functional f(e.sub.i.), where f(.) is continously differentiable and positive in the interval [-E,E], and equals zero elsewhere. In this
case, it is also assumed that x.sub.i and e.sub.i are independently
distributed. Note our specification states that the size of the largest
positive expectational error is given by E, while the most negatice is
-E. Further, since aggregate rational expectations means there is no
aggregate bias, [Mathematical Expression Omitted].
Agent i chooses to participate if
C([x.sub.i] [is less than or equal to] B([pi]) + [e.sub.i]. (1)
Both B and C are assumed continuously differentiable and satisfy
C(0) = 0 [is less than] B(0), (2)
B(1) [is less than] C(1), (3)
C'(z) [is greater than] for all z [Epsilon] [0,1], (4)
B'(z) - C'(z) [is less than] 0 for all z [Episilon] [0,1],
(5)
and
2E [is less than] C(1). (6)
Conditions (2) and (3) insure an interior solution for [pi].
Condition (4) stipulates that agents with higher values for [x.sub.i]
face higher costs of participating. Condition (5) insures that the
equilibrium is unique. Condition (6) simply states that individual
biases in expectations are small relative to the variation in
participation costs levels in the population. This last assumption
reduces the number of cases that need to be analyzed.
Under standard rational expectations, the equilibrium participation
rate [pi.sup.S] is such that all agents with [x.sub.i] [is less than or
equal to] [pi.sup.S] participate, and [pi.sup.S] satisfies B([pi.sup.S])
= C([pi.sup.S]). Under aggregate rational expectations, the equilibrium
participation rate [pi.sup.A] satisfies (8)
[Mathematical Expression Omitted]
III. ANALYSIS
This section analyzes the model developed above by first comparing
standard and aggregate rational expectations in terms of the proportion
of agents who choose to participate. Second, the ramifications of
varying the divergence of expectations under aggregate rational
expectations are explored. The third topic is the effects of varying
the severity of the interaction among agents. The first proposition
considers the relationship between the standard and aggregate rational
expression equilibria. All proofs are relegated to an appendix.
PROPOSITION 1.
If E [is less than or greater than] B([pi.sup.S]) [is less than or
greater than] C(1) - E and C" = 0, then [pi.sup.S] = [pi.sup.A].
(1.i)
If E [is greater than] B([pi.sup.S]) [C(1) - E [is less than]
B([pi.sup.S])] and C" = 0, then [pi.sup.S] [is less than] ([is
greater than]) [pi.sup.A]. (1.ii)
If C" [is greater than] ([is less than]) 0 and E [is less than
or equal to] B([pi.sup.S]) [B([pi.sup.S]) [is less than or equal to]
C(1) - E], then [pi.sup.S] [is greater than]
Part (1.i) of proposition 1 states that, given two restrictions on
the model standard and aggregate rational expectations result in the
same participation rates. (9) The first restriction is that the benefit
from participating under standard rational expectations, i.e.,
B([pi.sup.S]), is further than E from the extreme values of C. The
second restriction is that the cost function is linear. Parts (1.ii)
and (1.iii) of proposition 1 state that standard and aggregate rational
expectations do not in general yield equivalent results. In particular,
(1,ii) and (1.iii) identify situations for which there is a systematic
difference beteen the two equilibria.
The intuition underlying these results is as follows. Under
aggregate rational expectations there is a set of agents who choose to
participate because they overvalue the true benefit to participating.
These agents are called optimistic participants. Similarly, there is a
set of agents who do not participate because they undervalue the true
benefit; they are called pessimistic nonparticipants. If under
aggregate rational expectations the proportion of optimistic
participants identically equals the proportion of pessimistic
nonparticipants, then the equilibrium participation rate will be
independent of the type of expectations assumed. As a general rule,
however, there is no guarantee that these two groups will be equal. On
the one hand, there could be a truncation problem. This is what
underlies (1.ii). For example, suppose E [is greater than]
B([pi.sup.S]) and C" = 0. In this situation the proportion of
pessimistic nonparticipants will be relatively small because the range
of participation cost levels from which these agents are drawn is
truncated. Hence, more agents incorrectly participate than incorrectly
do not participate, which in turn causes [pi.sup.A] [is greater than]
[pi.sup.S]. On the other hand, there could be a problem due to
nonlinearities in the cost of participating. This is what underlies
(1.iii). To understand this point suppose C" [is greater than] 0
and E [is less than or equal to] B([[pi].sup.5]). Optimistic
participants are drawn from agents with relatively high values for
[X.sub.i], while, given C" [is greater than] 0, high values for
[x.sub.i] are associated with increasingly higher marginal costs. This
tends to discourage incorrect participation which in tern yields
[[pi].sup.S] [is greater than] [[pi].sup.A].
Proposition 1 identifies conditions sufficient to guarantee that
standard and aggregate rational expectations yield equivalent results,
and identifies cases in which there is a systematic difference between
the two equilibria. It should be clear from the proposition and the
above discussion that the two equilibria will in general differ. This
is because, unless the special conditions stipulated in (1) hold, only
by chance will the proportion who incorrectly participate be exactly
offset by those who incorrectly do noy participate. (10)
Next, consider a situation in which standard and aggregate rational
expectations do not yield equivalent results. How does an increase in
the divergence in expectations under aggregate rational expectations
affect the size of the difference between the two equilibria?
PROPOSITION 2. Let g([e.sub.i]) be a density function defined on
the interval [-E, E] which is the result of a mean-preserving spread of
f([e.sub.i]), and let F(a) =
[[integral].sup.a/.sub.-E]f([e.sub.i])[de.sub.i] and G(a) =
[[integral].sup.a/.sub.-Eg([e.sub.i])[de.sub.i]. Also, suppose F(0) =
G(0) and F(a) [is not equal to] G(a) for all a [is not equal to] 0 and
-E [is less than] a [is less than] E. If (2.i), (2.ii), or (2.iii)
holds, then this mean-preserving spread causes ~[[pi].sup.S] -
[[pi].sup.A]~ to increase.
C" = 0 and either E [is greater than] B([[pi].sup.S]) or
B([[pi].sup.S]) [is greater than] C(1) - E; (2.i)
C" [is greater than] 0 and E [is less than or equal to]
B([[pi].sup.S]); (2.ii)
C" [is greater than] 0 and B([[pi].sup.S]) [is less than or
equal to] C(1) - E. (2.iii)
Conditions (2.i), (2.ii) and (2.iii) are the conditions identified
in proposition 1 for which there is a systematic difference between
standard and aggregate rational expectations equilibria. Proposition 2
therefore states that, given an environment where the standard and
aggregate equilibria systematically differ, the size of the difference
is positively related to the divergence in expectations under aggregate
rational expectations. That is, in terms of participation rates, a
mean-preserving spread of the expectations distribution tends to drive
the aggregate equilibrium away from the standard equilibrium. The
intuition for this result is best understood by considering a particular
example. Suppose C" = 0 and E [is greater than] B([[pi].sup.S]) so
that [[pi].sup.S] [is less than] [pi.sup.A]]. In this situation
[[pi].sup.S] [is less than] [[pi].sup.A] because the proportion of
optimistic participants is larger than the proportion of pessimistic
nonparticipants due to a truncation problem. In particular, benefits
are sufficiently low that the range of participation cost levels from
which pessimistic nonparticipants are drawn is truncated. In this
situation, a mean-preserving spread of the expectations distribution
exacerbates the truncation problem which has the effect of decreasing
the proportion of pessimistic nonparticipants. This is in turn causes
[[pi].sup.A] to increase, with the final result being that the aggregate
equilibrium is driven away from the standard equilibrium.
Finally, again consider a situation in which standard and aggregate
rational expectations do not yield equivalent results. How is the size
of the difference between the standard equilibrium and the aggregate
equilibrium affected by an increase in the severity of the interaction
among agents? Define B(z) as a "normalized increasing synergistic transformation" of B(.), where B'(z) [is greater than]
B'(z) for all z [epsilon] [0,1], and [[pi].sup.S] is independent of
whether the benefits to participating are given by B(.) or B(.). In
other words, a normalized increasing synergistic transformation of B(.)
is one which increases the severity of the synergism (or equivalently
decreases the congestion), but leaves the participation rate under
standard rational expectations unchanged. (11)
PROPOSITION 3. If (2.i), (2.ii) or (2.iii) holds, then a
normalized increasing synergistic transformation of B(.) causes
~[[pi].sup.S] - [[pi].sup.A]~ to increase.
Proposition 3 shows that if the standard and aggregate rational
expectations equilibria systematically differ, then the size of the
difference is positively (negatively) related to the severity of the
synergistic (congestion) effects. For example, if in a synergistic
environment one were to increase the severity of the synergistic
effects, but at the same time leave the standard rational expectations
equilibrium unchanged, then the participation rate under aggregate
rational expectations would be driven away from the standard
equilibrium. Note further, an immediate implication of this proposition
is that the size of the difference between the two equilibria tends to
be larger under synergism than under congestion.
The intuition underlying these results is as follows. Suppose that
conditions are such that the proportion of optimistic participants is
smaller than the proportion of pessimistic nonparticipants, i.e.,
[[pi].sup.S] [is greater than] [[pi].sup.A. Consider what happens when
there is a normalized increase in the degree of synergism in this
situation. Given that it is normalized, [[pi].sup.S] remains unchanged.
However, since under aggregate rational expectations the pessimistic
nonparticipants are larger in this situation, the higher degree of
synergism reduces the return to participation for each agent so that
this overly pessimistic behavior is reinforced and [[pi].sup.A]
decreases. Now consider what happens when there is a normalized
increase in the degree of congestion starting from a situation where
[[pi].sup.S] [is greater than] [[pi].sup.A. Under aggregate rational
expectations the pessimistic nonparticipants are again larger, but now
the higher degree of congestion increases the return to participation
for each agent so that there is a tendency for the overly pessimistic
behavior to be offset. Hence, an increase in the degree of congestion
causes [[pi].sup.A] to increase in this situation. Overall, then with
an increase in synergism the behavior of the group whose erroneous beliefs dominate tends to be reinforced, while with an increase in
congestion the behavior of the group whose erroneous beliefs dominate
tends to be offset.
IV. APPLICATIONS
Many common models are special cases of section III's general
model. The analysis of two special cases will both demonstrate the
general applicability of the model, and yield additional economic
insights.
Application 1: Career Choice
Assume there is a continuum of risk-neutral workers. Each worker
must decide whether to choose career j or career k. Prior to
participating in a career workers must make an investment in human
capital in order to acquire the skills required for the chosen career.
For the time period under consideration each worker makes an
irreversible choice concerning this decision, and all workers make this
choice simultaneously and prior to the realization of the return to each
career.
Each worker is a price taker. If worker i chooses career j then
the net return is given by [W.sub.j] - [C.sub.j.(x.sub.j]), where
[W.sub.j] is the wage earned in careeer j, [C.sub.j.(x.sub.j]) is the
cost of acquiring the skills for career j, and [C.sup.1/.sub.j] [is
greater than] 0. For career k, the net return is given by [W.sub.k] -
[C.sub.k.(1-X.sub.i]), [C.sub.1/.sub.k] [is greater than] 0. The term
[x.sub.i] reflects heterogeneity across workers in terms of comparative
advantage in acquiring skills for career j have by construction a
relatively high marginal cost of skills. That is, workers with a
relatively low marginal cost of acquiring the acquiring the skills for
career k. The distribution of [x.sub.i]'s across workers is
described by a uniform density function over the unit interval.
The total number of workers choosing careers j and k is [N.sub.j]
and [N.sub.k] respectively. The wage associted with each career is
given by the labor demand equations [W.sub.j] = [f.sub.j]([N.sub.k]) and
[W.sub.k] = [f.sub.k]([N.sub.k]), where [f'.sub.j] [is less than] 0
and [f'.sub.k] [is less than] 0. The latter imply that in the
terminology of the general analysis this is a model which exhibits
congestion. Demand and cost conditions are assumed to be such that,
first, all workers choose a career, and second, both careers have
positive participation rates.
As in the general analysis, there are two assumptions concerning
expectations. The standard rational expectations assumption is that
each worker taken individually has correct expectations concerning the
resulting value for [W.sub.j] - [W.sub.k]. In contrast, under aggregate
rational expectations worker i's expectation concerning [W.sub.j] -
[W.sub.k] equals [W.sub.j] - [W.sub.k] + [e.sub.i], where the
distribution of [e.sub.i]'s across workers has the properties which
characterized te analogous distribution in the general analysis above.
There is a one-to-one correspondence between this model and the one
found in the general analysis above. (12) Hence, as in the general
analysis, the standard and the aggregate rational expectations
equilibria may not be the same because of either a truncation problem or
nonlinearities in the cost functions. Of more interest are the
following corollaries of propositions 2 and 3. In what follows, the
statement that the two equilibria are systematically different means
that the analogues of either (2.i), (2.ii) or (2.iii) of proposition 2
hold.
COROLLARY 1. Given a situation where the two equilibria are
systematically different, an increase in the dispersion of expectations
under aggregate rational expectations will increase ~[N.sup.S./.sub.J] -
[N.sup.A./.sub.J]~, ~[N.sup.S/sub.k] - [N.sup.A/sub.k~.,
~[W.sup.S/sub.j] - [W.sup.A/sub.j]~ and ~[W.sup.S/sub.k] -
[W.sup.A/sub.k]~.
COROLLARY 2. Given a situation where the two equilibria are
systematically different, the more inelastic the demand for labor in
each sector (i.e., the greater the degree of congestion), the smaller
are ~[N.sup.S/.sub.j] - [N.sup.A/.sub.j]~ and ~[N.sup.S/.sub.k] -
[N.sup.A/.sub.k~, and the greater are ~[W.sup.S/.sub.j] -
[W.sup.A/.sub.j]~ and ~[W.sup.S/.sub.k] - [W.sup.A/.sub.k]~.
These two corollaries yield a number of insights concerning the
implications of aggregate rational expectations within a typical labor
market context. First, the dispersion of expectations is an important
determinant of the difference between predicted wages and allocation of
labor under aggregate relative to standard rational expectations.
Second, labor demand elasticities are important for determining whether
the impact of changes in the dispersion of expectations will be greater
on predicted wages or the predicted allocation of labor. This
highlights an insight that is not readily apparent from the general
analysis. That is, suppose a standard rational expectations assumption
is employed to model a labor market situation similar to that considered
here, when in fact the situation under consideration is better
characterized by aggregate rational expectations. The analysis in this
section suggests that if labor demands are inelastic, then the standard
rational expectations assumption will yield relatively good predictions
concerning the allocation of labor across sectors and relatively poor
ones concerning the distribution of wages across sectors. However, with
elastic demands the results are reversed--poor predictions on the
allocation of labor and good predictions about the distribution of
wages. Hence, there is a trade-off between the accuracy of price and
quantity predictions, where the relative accuracies depend upon the
elasticities of the demand curves under consideration.
Application 2: Trading Externalities and Aggregate Output
This application considers a situation characterized by
synergism--in particular, a macroeconomic model where synergism is
present because the technology of exchange exhibits positive trading
externalities. The model is closely related to one presented in Diamond
[1982, 886-87]. (13) Workers and firms are not distinguished. Rather,
there is a continuum of agents who must decide whether or not to
undertake a production project. If agent i decides to undertake a
project, then he produces y units of output at a cost c([x.sub.i]). The
heterogeneity in costs across agents captures the idea that, prior to
deciding whether or not to produce, each agent i draws a production
project from the distribution of projects. The distribution of
[x.sub.k]'s in the population is described by a uniform density
function over the unit interval.
The key restriction on behavior is that each individual cannot
consume what he himself produces, but must rather trade his own output
for that which is produced by others. This assumption reflects the
advantage that specialized production and trade have over
self-sufficiency. Let Y be the aggregate output level. The probability
of making a trade is given by p(Y), where the assumption p' [is
greater than] 0 captures the trading externality. Untraded output is
assumed to be wasted. Further, agents must decide whether or not to
produce prior to the realization of p(Y), and it is over this
probability that agents form expectations. Finally, agents are assumed
to have standard or aggregate rational expectations, where each type is
specified in exactly the same manner as in the general analysis above.
Agent i will undertake his production project if it has positive
expected value. This implies agent i will (will not) undertake his
production project when
[p(Y} _ [e.sub.i]] y [is greater than] ([is less than]) c([x.sub.i]).
(8)
Further, the analysis is restricted to parameterizations for which
there is a unique value for aggregate output. (14)
The correspondence between the current model and the one found in
the general analysis allows for a series of results that follow
immediately from the propositions in the general analysis. As in the
general analysis, the standard and aggregate rational expectations
equilibria may differ because of either a truncation problem or
nonlinearities in the cost of undertaking a project. Of more interest
are the following two corollaries that follow immediately from
propositions 2 and 3.
COROLLARY 3. Given a situation where the two equilibria are
systematically different, an increase in the dispersion of expectations
under aggregate rational expectations will result in an increase in
~Y.sup.S - Y.sub.A~.
COROLLARY 4. Given a situation where the two equilibria are
systematically different, an increase in the severity of the trading
externality will result in an increase in ~Y.sup.S - Y.sub.A~.
Corollaries 3 and 4 indicate some of the factors which can affect
the size of the aggregate output difference between standard and
aggregate rational expectations equilibria. Of particular interest is
the result concerning dispersion of expectations. A number of empirical
studies have found that dispersion of expectations concerning inflation
is an important factor in the determination of aggregate output. (15)
In particular, increases in the dispersion of expectations have in
general been found to lead to decrease in aggregate output. Although
the expectations here do not concer inflation, corollary 3 states that
in this model an increase in the dispersion of expectations can yield a
similar result. That is, even constraining expectations to be rational
in the aggregate, the analysis states that an increase in the dispersion
of expectations can depress aggregate output. (16) This suggests that
theoretical work employing an aggregate rational expectations assumption
may prove fruitful in the explanation of this empirical observation.
One final comment concerns the relationship between the results
derived here and those of Diamond. Diamond deals solely with a standard
rational expectations assumption. Further, in order for his model to be
consistent with fluctuations in aggregate output, he assumes that the
trading externality is sufficiently severe that multiple equilibria
exist. Our analysis suggests that the existence of multiple equilibria
may not be necessary for trading externalities to be important for
explaining fluctuations in aggregate output. Rather, under an aggregate
rational expectations assumption, changes in the dispersion of
expectations yield interesting fluctuations in aggregate output even
when multiple equilibria are ruled out. (17)
V. CONCLUSION
In practice rational expectations has typically meant that the
expectation of each agent taken separately is by itself consistent with
the predictions of the relevant economic theory, i.e., what is called
here standard rational expectations. This differs, however, from the
argument frequently put forth by proponents of the rational expectations
assumption to justify its use. That argument is that on an aggregate
level it would be surprising if expectations were inconsistent with the
predictions of the relevant theory. The employment of the stronger
assumption of standard rational expectations is then justified by the
argument that, if expectations were rational in the aggregate, then
expectational deviations across agents would tend to cancel out. This
paper formally investigates the relationship between standard and what
is called here aggregate retional expectations.
The first finding is that the above argument is incorrect, i.e.,
only under very special conditions do standard rational expectations and
aggregate rational expectations yield equivalent results. The remaining
findings concern the factors which determine the size of the difference.
The size of the difference will be larger (i) the larger is the
divergence in expectations under aggregate rational expectations, and
(ii) the more synergistic is the environment. This last result s of
particular interest because of its relationship to our own earlier work
on the rebustness of rational expectations equilibria (Haltiwanger and
Waldman [1985]). That work shows that in a world characterized by
congestion, standard rational expectations equilibria are relatively
robust to the introduction of agents who make systematic errors.
However, in a world characterized by synergism, the introduction of such
agents can have a dramatic effect. In other words, although the two
papers employ different criteria to judge whether standard rational
expectations equilibria are robust, they reach the same conclusion:
standard rational expectations equilibria are robust in environments of
congestion but not synergism.
This paper has compared standard rational expectations and
aggregate rational expectations where the overall distribution of
expectations under the two regimes differ, although both regimes exhibit
aggregate unbiasedness. In particular, aggregate rational expectations
was characterized by disperse expectations while standard rational
expectations lacked any dispersion. Given that the two regimes
potentially generate significantly different predictions, it is of
interest to investigate the ramifications of alternative sources of
dispersion. In the formal analysis above the source of the dispersion
is not of much importance since it is assumed (see footnote 5) that
agents cannot obtai or infer any information on the beliefs of other
agents prior to making decsions. However, a possible issue for future
research might be to relax this assumption. It would then be of
interest to compare alternative expectations regimes where the
distribution of expectations across regimes is the same, both satisfy
aggregate unbiasedness, but the source of the heterogeneity in
expectations is differenct. For example, it would be of interest to
compare a regime with dispersion generated from agents facing different
information sets to one with dispersion generated from systematic
errors. Our conjecture s that even in this type of setting there might
be significant differences between equilibria across the regimes. If
dispersion is due to differences in information, then to the extent
possible when making decisions individuals will attempt to incorporate
the information held by other agents. For example, some decisions may
be delayed until the information held by other agents can be inferred
from market prices. On the other hand, if dispersion is due to
systematic errors, then agent swould probably not attempt to infer the
opinions of others before making their own decisions. (18) Hence, even
though the initial distribution of expectations would be the same, the
two environments can be expected to work quite differently. Further,
based upon the above analysis, the differences are apt to be larger if
synergism is present since synergism provides incentives for systematic
errors to be reinforced.
APPENDIX
Before proceeding to the proofs, it is helpful to note that (7) can
also be written as
[Mathematical Expression Omitted]
where [theta].sup.A.=max(E,C(x.sub.i.)-B([pi].sup.A.)) and
[phi].sup.A.=max(-E,C(x.sub.i.)-B ([pi].sup.A)). Using (A.1) and
reversing the order of integration, [pi].sup.A can be written as
[Mathematical Expression Omitted]
where M.sup.A.= min[C(1)-B([pi].sup.A.),E], N.sup.A.=max[-E,
-B([pi].sup.A.)] and x.sup.A satisfies
C(x.sup.A.)-B([pi].sup.A.)-e.sub.i.=0. Further, it is helpful to define
a function, H(z), that satisfies
[Mathematical Expression Omitted]
where [M.sup.z]=min[C(1)-B(z),E], [N.sup.z]=max[-E,-B(z)] and
[x.sup.z] satisfies C([X.sup.z])-B(z)-[e.sub.i]=0. Assumptions (2) -
(6) imply that H' [is greater than]0, and in turn H(z) [is greater
than]0 for z [is greater than] [pi.sup.A], H(z)=0 for z= [pi.sup.A], and
H(z) [is less than] 0 for z [is less than] [pi.sup.A]. We can now
proceed to the proofs.
Proof of Proposition 1. (i) Letting [pi].sup.A.=[pi].sup.S in
equation (A.1) under the restrictions E [is less than or equal to]
B([pi].sup.S.) [is less than or equal to] C(1)-E and C" = 0 shows
that [pi].sup.A.=[pi].sup.S is a solution to equaltion (A.1). Since
there is a unique solution to (A.1), this implies that
[pi].sup.A.=[pi].sup.S..
(ii) Consider the case E>B([pi].sup.S.). Suppose [pi].sup.S.[is
less than or equal to] [pi].sup.A.. This implies H([pi].sup.S.)[is less
than or equal to]0. Further, the assumption that C"=0 together
with the other assumptions yields
[Mathematical Expression Omitted]
where x.sup.S.=[B([pi].sup.S.)+e.sub.i.]/C'. Using the
assumption that [Mathematical Expression Omitted] and that by
construction x.sup.S.=[pi].sup.S for e.sub.i.=0 allows us to rewrite (A.4) as
[Mathematical Expression Omitted]
However, (A.5) implies H([pi].sup.S.) <0, i.e., a
contractiction. Thus, [pi].sup.A.> [pi].sup.S.. The case
B([pi].sup.S.)>C(1)-E follows in a similar fashion.
(iii) Consider the case C">0. Suppose [pi].sup.S.[is less
than or equal to][pi].sup.A.. This implies H([pi].sup.S..)[is less than
or equal to]0. However, under the assumptions in this case
H([pi].sup.S.) can be written as
[Mathematical Expression Omitted]
where x.sup.S satisfies C(x.sup.S.)-e.sub.i.=0. Let x.sup.S.=x.sup.S
when e.sub.i.=0 and define
[k.up.S.=x.sup.S.+(x.sup.S./B([pi].sup.S.))e.sup.i.. Using these
definitions and given the that [pi].sup.S.=x.sup.S., (A.6) can be
rewritten as
[Mathematical Expression Omitted]
Further, since C">0, k.sup.S.[is less than or equal to]
x.sup.S where the ineuality is strict except for e.sub.i.=0. Hence,
(A.7) yields
[Mathematical Expression Omitted]
Using the definition of k.sup.S and the assumption that
[Mathematical Expression Omitted] yields that the right-hand side of
(A.8) equals zero. This implies H([pi].sup.S.)>0 which is a
contradiction. Hence, [pi].sup.S.>[pi.sup.A.. The case C"
<0 follows in a similar fashion.
Proof of Proposition 2. Given the assumptions of g.(e.sub.e.) and
f.(e.sub.i.),
[Mathematical Expression Omitted]
and
[Mathematical Expression Omitted]
In what follows, let H.sub.g.(z) be defined analogously to H(z) but
with the distribution g.(e.sub.i.) substituted for f(e.sub.i.).
Similarly, let [pi].sup.A.sub.g be aggregate rational expectations
equilibrium when e.sub.i has the distribution g(e.sub.i.).
First, consider (i) under the assumption E > B([pi].sup.S.).
Proposition 1 yields [pi].sup.A.>[pi].sup.S and [pi].sup.A.sub.g >
[pi].sup.S.. Thus, we need to prove that
[pi].sup.S.sub.g.>[pi].sup.A.. Using the restrictions on f(.) and
g(.), H.sub.g.([pi.sup.A.)-H([pi].sup.A.) can be written as
[Mathematical Expression Omitted]
Given (A.9), (A.10) and F(0)=G(0), (A.11) implies
H.sub.g.([pi].sup.A.)-H([pi].sup.A.)<0. Since H([pi].sup.A.)=0, this
implies H.sub.g.([pi].sup.A.)<0. Since H.sub.g.([pi].sup.A.sub.g.)=0
and G'.sub.j.>0, this in turn yields
[pi].sup.A.sub.g.>[pi].sup.A.. Thus, (i) under the assumption E >
B([pi].sup.S.), ~ [pi].sup.S.-[pi].sup.A.~ is increasing as a result of
a mean-preserving spread of f(.). The other cases (i.e., (i) under the
assumption B([pi].sup.S.)> C(1)-E, (ii) and (iii)) follow in a
similar manner.
Proof of Proposition 3. Let H(z) have the same formulation as H(z)
but with B(.) substituted for B(z). Also, let [pi].sup.A be the
aggregate rational expectations equilibrium when the benefit to
participating is given by B(.). Since B([pi].sup.S.)=B([pi].sup.S.),
this implies H([pi].sup.S.)=H([pi].sup.S.). Further, since B' >
B', H(z)> ([is less than])H(z) if z [is less than] ([is greater
than]) [pi].sup.S.].
First, consider (i) under the assumption E>B([pi].sup.S.) or
(iii). By proposition 1, this implies [pi].sup.A.>[pi].sup.A and
[pi].sup.A.>[pi].sup.S.. This means we want to prove
[pi].sup.A.>[pi].sup.A.. Suppose [pi].sup.A.[is less than or equal
to] [pi].sup.A.. This implies H([pi].sup.A.)<H([pi].sup.A.)[is less
than or equal to] H([pi].sup.A.) where the latter inequality is due to
H' > 0. Yet, this yields a contradiction since by construction
H([pi].sup.A.)=H([pi].sup.A.)=0. Thus, given either (i) under the
assumption E = B([pi].sup.S.) or (iii), a normalized increasing
synergistic transformation of B(.) causes ~ [pi].sup.S.-[pi].sup.A.~ to
increase. The other cases (i.e., (i) under the assumption
B([pi].sup.S.) > C(1)-E and (ii)) follow in a similar manner.
(1) Schultze questions the validity of Muth's claim for the
analysis of environments with implicit contracts. From this perspective
our analysis can be partially interpreted as saying that, even in the
absence of implicit contracts, Muth's calim is incorrect.
(2) Aggregate rational expectations does not necessarily mean that
agents are not behaving "rationally" under some broad
definition of the term, but rather that individuals do not satisfy the
standard criterion for rational expectations that appears in the
literature.
(3) The concepts referred to as congestiona dn synergism have
appeared elsewhere in the literature under different names. What is
referred to as congestion here has elsewhere been referred to as
decreasing returns (see Hirshleifer [1982; 1985] and Schelling [1978])
and strategic substitutes (see Bulow et al. [1985] and Cooper and John
[1988]). Similarly, what is called synergism has been referred to as
increasing returns (Hirshleifer, Schelling), strategic complements
(Bulow et al., Cooper and John), and network externalities (see Farell
and Saloner [1985; 1986], and Katz and Shapiro [1986]).
(4) Other papers which consider this type of heterogeneity include
Conlisk [1980], Akerlof and Yellen [1985a, b], Russell and Thaler [1985], and Haltiwanger and Waldman [1989]. See Kahneman, Slovic and
Tversky [1982] for evidence that expectational errors of agents do tend
to be conrelated across individuals.
(5) It is assumed that there is not means by which agents can
obtain or infer the beliefs of others prior to making the participation
decision. For example, there is no allowance for a futures market on
the benefits to participating in an activity. Such a market would
clearly act as an information aggregator. For most of the real world
examples that have been mentioned, the lack of an organized futures
market is in accordance with empirical observation. For a discussion of
which factors determine the existence of futures markets and how the
presence or absence of futures markets influence expectations formation,
see Russell and Thaler [1985].
(6) The interpretation of B(.) and C(.) when treating this as a
model of the choice between two activities is slightly different.
Suppose the two activities are X and Y. Then B can be interpreted as
the net benefit of choosing X and C as the net cost of choosing X, where
[pi] would be the proportion of agents who choose X and 1-[pi] the
proportion of agents who choose Y.
(7) In our model, standard rational expectations implies perfect
foresight. However, the results here easily generalize to a
specification in which the benefit from participating is stochastic,
agents are risk neutral, and under standard rational expectations each
agent has unbiased expectations about the expected benefit.
(8) In evaluating (7) it is important to recall that by assumption
f(.) is identically zero for e.sub.i outside the range [-E, E]. Hence,
for x.sub.i such that C(x.sub.i.)-B([pi].sup.A.) <-E the inner
integral in (7) is equal to one, while for x.sub.2 such that
C(x.sub.i.)-B([pi].sup.A.)>E the inner integral is equal is equal to
zero.
(9) Note that, even given these two restrictions, standard and
aggregate rational expectations do not yield equivalent results
regarding social welfare. Under aggregate rational expectations
individual mistakes are being made. This implies that even when the
proportion of agents participating is independent of the type of
expectations assumed, social welfare is lower under aggregate rational
expectations because agents do not sort themselves efficiently among
activities.
One might at first think that this logic should lead to a general
conclusion that social welfare is ower under aggregate rational
expectations than under standard rational expections. This is
incorrect. When the externalities being considered are technological
(as opposed to pecuniary), standard rational expectations does not
typically yield a first best results with regard to the proportion of
agents participating. Combining this with the result that the aggregate
rational expectations participation rate can be different than the
standard rational expectations participation rate, the aggregate
rational expectations participation rate may actually be closer to the
first best. The subsequent result is that for some cases the social
welfare ranking is actually higher under aggregate than under standard
rational expectations.
(10) Note than even in the absence of any truncation problems, it
is not necessary for C" to be everywhere the same sign for the two
equilibria to be different. Rather, it can be demonstrated that it is
only necessary that C" is not everywhere equal to zero for there to
be, in general, a difference between the two equilibria.
(11) This transformation is derived by a rotation of the B function
with the standard rational expectations equilibrium as the origin. Note
further that the transformation is restricted such that B satisfies
equations (2), (3), and (5).
(12) To be precise, let
B(N.sub.j.)=W.sub.j.-W.sub.k=f.sub.j.(N.sub.j.)-f.sub.k.(1-N.sub.j.) and
C(x.sub.j.)=C.sub.j.(x.sub.i.)-C.sub.k.(1-x.sub.i.). Given the
assumptions made, these B and C function satisfy all of the properties
of the B and C functions in the general analysis above.
(13) There is a growing literature which investigates the
ramifications of synergism in macroeconomic settings. See Cooper and
John [1988] for a survey of this recent literature.
(14) That the severity of the trading externality is restrictecd so
that a unique equilibrium exists represents a significant departure from
Diamond. Further discussion of this difference is provided below.
(15) See, for example, Mullineaux [1980] and Lovi and Makin [1980].
These empirical studies are an outgrowth of a discussion in Friedman
[1977] concerning the influence of an increase in the dispersion of
expectations on aggregate economic activity.
(16) This will be true if conditions are such that Y.sup.S.>
Y.sup.A.. By proposition 1, a reasonable condition that will yeld this
result is C" >0.
(17) See also Haltiwanger and Waldman [1989].
(18) This is especially true given the propensity of individuals to
overestimate their own abilities, i.e., underestimate their own
likelihood of making mistakes. See Kahneman, Slovic, and Tversky [1982]
for evidence concerning the overestimation of abilities.
REFERENCES
Akerlof, G., and J. Yellen. "A Near-Rational Model of the
Business Cycle with Wage and Price Inertia." quarterly Journal of
Economics, Supplement 1985(a), 823-38.
Akerlof, G., and J. Yellen. "Can Small Deviations from
Rationality Make Significant Differences to Economic Equilibria?"
American Economic Review, September 1985(b), 708-20.
Bulow, J., J. Geanakoplos and P. Klemperer. "Multimarket
Oligopoly: Strategic Substitutes and Strategic Complements."
Journal of Political Economy, June 1985, 488-511.
Conlisk, J. "Costly Optimizers Versus Cheap Imitators."
Journal of Economic Behavior and Organization 1, 1980, 275-93.
Cooper, R. and A. John. "Coordinating Coordination Failures
in Keynesian Models." Quarterly Journa of Economics, August 1988,
441-64.
Diamond, P. "Aggregate Demand Management in Search
Equilibrium." Journal of Political Economy, October 1982, 881-94.
Farrell, J. and G. Saloner. "Standardization, Compatibility,
and Innovation." Rand Journal of Economics, Spring 1985, 70-83.
Farrell, J. and G. Saloner. "Installed Base and
Compatibility: Innovation, Product Preannouncements and Predation."
American Economic Review, December 1986, 940-55.
Friedman, M. "Nobel Lecture: Inflation and Unemployment."
Journal of Political Economy, June 1977, 451-72.
Haltiwanger, J. and M. Waldman. "Rational Expectations and
the Limits of Rationality: An Analysis of Heterogeneity." American
Economic Review, June 1985, 326-40.
Haltiwanger, J. And M. Waldman. "Limited Rationality and
Strategic Complements: The Implications for Macroeconomics."
Quarterly Journal of Economics, August 1989, 463-83.
Hirshleifer, J. "Evolutionary Models in Economics and Law:
Cooperation Versus Conflict Strategies." Research in Law and
Economics IV, 1982, 1-60.
Hirshleifer, J. "The Economic Approach to Conflict."
UCLA Working Paper No. 320A, revised May 1985.
Hoover, K. "Two Types of Monetarism." Journal of
Economic Literature, March 1984, 58-76.
Kahneman, D., P. Slovic, and A. Tversky. Judgment under
Uncertainty: Heuristics and Biases. New York: Cambridge University
Press, 1982.
Kantor, B. "Rational Expectations and Economic Thought."
Journal of Economic Literature, December 1979, 1422-41.
Katz, M. and C. Shapiro. "Technology Adoption in the Presence
of Network Externalities.? Journal of Political Economy, August 1986,
822-41.
Levi, M. and J. Makin. "Inflation Uncertainty and the
Phillips Curve: some Empirical Evidence." American Economic
Review, December 1980, 1022-27.
Maddock, R. and M. Carter. "A Child's Guide to Rational
Expectations." Journal of Economic Literature, March 1982, 39-51.
Mullineaux, D. "Unemployment, Industrial Production and
Inflation Uncertainty in the United States." Review of Economics
and Statistics, May 1980, 163-69.
Muth, J. "Rational Expectations and the Theory of Price
Movements." Econometrica, June 1961, 315-35.
Russell, T. and R. Thaler. "The Relevance of
Quasi-Rationality in Competitive Markets." American Economic
Review, December 198, 1071-82.
Schelling, T. Micromotives and Macrobehavior. New York: Norto
1978.
Schultze, C. "Microeconomic Efficiency and Nominal Wage
Stickiness." American Economic Review, March 1985, 1-15.