Franchise values in North American professional sports leagues: evidence from the repeat sales method.
Humphreys, Brad R. ; Lee, Yang Seung
Introduction
Accurate measurement of the value of professional sport franchises
is important to our understanding of the operation of sports leagues.
Fort (2006) pointed out two important features of sport franchise
values: First, the lack of audited financial data from professional
sports teams in North America, coupled with incessant, hard to verify,
claims of financial difficulties made by team owners places a premium on
the analysis of observable data like actual prices paid for professional
sports teams on the open market; second, franchise values increased
dramatically over the past 100 years, outstripping the growth rate of
the overall economy by a wide margin, and understanding why franchise
values grew so rapidly is an important research question in sport
finance. Even if the underlying flows of revenues cannot be observed,
finance theory indicates that the price paid for an asset that generates
a stream of revenues over time should reflect the present discounted
value of the underlying flow of net revenues. Claims of losses often
play an important role in team owner's requests for public
subsidies for facility construction and operation, further heightening the importance of accurate measurement of franchise valuation.
Previous research on the value of sports franchises in North
America used two approaches: unconditional analysis of transaction
prices and hedonic models applied to franchise values. The unconditional
analysis of franchise sale prices and estimates of franchise values
focuses on describing changes in these values over time. The hedonic
approach has been widely used to analyze the factors affecting the value
of a number of assets including houses, art (Goetzman 1993; Beggs &
Gaddy, 2006), vintage wine (Burton & Jacobsen, 2001), and antique
furniture (Graesner, 1993), in addition to sports franchises. The
hedonic method provides a theoretical grounding for the analysis of
franchise prices, controls for changes in the quality of the franchise,
and generates estimates of the hedonic price of observable
characteristics of franchises that provide important information about
the factors that drive changes in franchise values. In this paper, we
use two alternative approaches, the repeat sales method and a hybrid
model that includes both repeat sales and single transactions, to
analyze actual franchise sale prices over the period 1960-2009 in the
National Football League (NFL), National Basketball Association (NBA),
National Hockey League (NHL), and Major League Baseball (MLB). Both
methods generate quality adjusted price indexes for franchise values
that represent the average market price of a generic sports franchise.
The quality adjusted price index for the repeat sales model assumes no
change in franchise quality over time; the index for the hybrid model
allows for observable characteristics related to quality to change, but
uses different assumptions than hedonic models. In addition, the hybrid
model makes use of all transactions, while the repeat sales model only
uses observations for which multiple transactions occurred.
Quigly (1995) proposed an extension to the repeat sales model, a
hybrid model, to address efficiency and bias problems occurring in
repeat sales and hedonic models. We use this hybrid model developed by
Quigley as an alternative to the more restrictive repeat sale model.
This model is appropriate for this setting because the error structure
includes unmeasured characteristics related to quality, and measuring
quality of sports franchises is difficult. The error structure in
Quigley's model is more general than other competing models, so the
estimator should be more efficient. We discuss this model in detail
below.
Fort (2006) performed an unconditional analysis of both actual
franchise sale prices and annual estimates of franchise values published
in Financial World and Forbes magazines over the past few decades. Fort
concluded that owning a professional sports team in North America was a
profitable experience over the past hundred years, since the average
increase in franchise sale prices exceeded the growth rate of the
aggregate economy over the same period.
The hedonic approach uses a model relating estimated franchise
values to observable characteristics of the teams and the markets they
play in to explain observed variation in the franchise value. Alexander
and Kern (2004) estimated a hedonic model that included income in the
local market, population of the local market, team success as measured
by finish in the previous season's final standings, an indicator
for teams with a regional orientation, an indicator variable for teams
that relocated from another location, and an indicator variable for the
presence of a new stadium as observable characteristics using data on
annual estimated franchise values in the National Football League (NFL),
National Basketball Association (NBA), National Hockey League (NHL), and
Major League Baseball (MLB). Income and population in the local market
had positive hedonic prices, as did higher finishes in the final
standings and new facilities.
Miller (2007) estimated a hedonic model using panel data from MLB
over the period 1990-2002. Hedonic characteristics included market
income and population, current and lagged winning percentage, an
indicator variable for privately owned stadiums, the age of the
team's facility, the age of the team and the team's tenure in
its current home. Market population, but not market income, current and
past success, and playing in private stadiums all had positive hedonic
prices; stadium age had a negative hedonic price, suggesting a reason
why teams frequently seek public subsidies for new stadium construction
projects. Miller (2009) estimated a hedonic franchise value model using
panel data from the NFL, NBA, and NHL over the period 1991-2004. This
paper used the same set of hedonic characteristics as in Miller (2007).
Market income, but not population, lagged success, but not current
success, and playing in a privately owned facility had positive hedonic
prices; facility age had a negative hedonic price.
Although Alexander and Kern (2004) and Miller (2007, 2009) do not
examine increases in franchise values, these papers identify a set of
observable franchise characteristics that affect estimated franchise
values, providing important information for understanding increases in
franchise values over time. These three studies used estimated franchise
values developed by Financial World and Forbes magazines instead of
transaction prices. Fort (2006) observed that the estimated franchise
values were often quite different from actual sales prices, so the
hedonic prices estimated in these three studies could reflect problems
estimating the value of sports franchises and not actual changes in the
actual value of the underlying asset, a professional sports team.
Humphreys and Mondello (2008) estimated a hedonic franchise value model
using transactions panel data from the NFL, NBA, MLB, and NHL over the
period 19692006. Hedonic characteristics included market population,
franchise and facility age, an indicator variable for private facility
ownership, success over the past five years, and the number of competing
professional sports teams in the local market. Population, franchise
age, and private ownership of the facility had positive hedonic prices;
competing professional teams in the local market had a negative hedonic
price. Humphreys and Mondello (2008) constructed a quality adjusted
franchise price index from the empirical results; this index showed a
clear upward trend beginning in the early 1980s, indicating that changes
in observable factors related to franchise value were not driving
observed increases in franchise values over the past three decades and
confirming Fort's (2006) finding of significant returns to
professional sports team ownership. Differences in estimated hedonic
prices in this study can be attributed to the use of actual transaction
prices instead of estimated annual franchise values.
All of the conditional analyses discussed above use a similar
empirical approach that can be interpreted in terms of a standard
hedonic model: explain the observed variation in franchise values or
transaction prices using observed variation in observable
characteristics of the franchises, the markets they play in, and the
facilities they play in. Hedonic models have a number of well-documented
limitations in this setting (Meese & Wallace, 1997). First, theory
provides no guidance on the functional form of the hedonic model,
leading to the possibility of specification bias affecting the results.
Miller (2007, 2009) demonstrates that the estimated hedonic prices on
private ownership and facility age exhibits sensitivity to model
specification, suggesting that the specification of the hedonic model
may be important in this setting. Second, the ability of the hedonic
model to explain variation in franchise values depends on the
availability of observable variables that capture the quality of the
franchise. Professional sports teams generate many unobservable and
intangible benefits, including the public goods effects like the
generation of "world class city" status on the host community,
a sense of community and commonality among fans and other residents of
the host city (Johnson & Whitehead, 2000), and other difficult to
quantify factors related to the perceived quality of the franchise
related to reputation. In the hedonic models discussed above, these
unobservable team-specific quality attributes are captured by
team-specific intercept terms.
The Repeat Sales Method
The repeat sales method represents an alternative approach to
hedonic models for analyzing changes in sports franchise values. Repeat
sales methods use the change in franchise sales prices from one sale to
the next to account for the hedonic characteristics of franchise prices.
The use of changes in sales prices removes the effect of unobservable
time-invariant hedonic characteristics; it also avoids any econometric problems associated with specification of the hedonic model and lack of
data capturing hedonic characteristics. Following the approach in the
real estate literature, we assume that a North American market for
professional sports franchises exists, and that the sale price of a
sports franchise in this market arises from a stochastic process where
the average rate of change, sometimes called the price drift in this
literature, can be represented by a market index and the dispersion of
franchise values around this average market rate of change in a log
diffusion process. Let Pit be the price paid for sports franchise i in
year t. Given these assumptions, the log of franchise prices can be
expressed
ln([P.sub.it]) = [[beta].sub.t] + [H.sub.it] + [N.sub.it] (1)
where [[beta].sub.t] is a market franchise price index, [H.sub.it]
is a Gaussian random walk term, and [N.sub.it] is a mean zero, constant
variance random variable, so that [N.sub.it] ~ (0,
[[sigma].sup.2.sub.N]). The Gaussian random walk term captures variation
in individual franchise value growth rates around the market growth
rate. The mean zero random variable captures cross-sectional variation
in franchise values due to completely idiosyncratic differences in
franchises at each point in time during the sample. These factors are
assumed to be uncorrelated over time. If franchise prices evolve in this
way, then the total percentage change in price for a given franchise i
that is purchased at time s and again at time t can be expressed as
[[DELTA]V.sub.it] = ln([P.sub.it]) - ln([P.sub.is])
= [[beta].sub.t] - [[beta].sub.s] + [H.sub.it] - [H.sub.is] +
[N.sub.it] - [N.sub.is] (2)
The properties of this stochastic process are
E[[H.sub.it] - [H.sub.is]] = 0
E[[([H.sub.it] - [H.sub.is]).sup.2]] = [A.sub.t-s] +
[B.sup.2.sub.t-s]
E[[N.sub.it]] = 0
E[[H.sub.it][N.sub.js]] = 0
E[[N.sup.2.sub.it]] = C
where A, B, and C are parameters defining the variance of the
stochastic process over time. Note that the second equation incorporates
the assumption that the variance of this stochastic process increases at
an increasing rate as time between sales increases. Given a sample of
repeat sales of sports franchises over time, the difference in the
natural log of the franchise values of franchise i that is sold multiple
times in the sample period can be expressed
[DELTA][V.sub.i] = [summation]ln([P.sub.i]) [D.sub.i] (3)
where [D.sub.i] is an indicator variable equal to 1 if period [tau]
is the time of the subsequent observed sale, equal to -1 if period [tau]
is the time of the previous observed sale, and equal to zero in other
periods. Using equation (1), equation (3) can be expressed
[DELTA][V.sub.i] = [summation][[beta].sub.[tau]][D.sub.i[tau]] +
[[epsilon].sub.i] (4)
where the [[beta].sub.[tau]]'s are unknown parameters to be
estimated. The estimated [[beta].sub.[tau]]'s can be used to
calculate an index number for sports franchise values holding quality
constant. The index can be calculated by
[I.sub.t] = 100[e.sup.[beta]t] (5)
Note if the variance parameters A and B are not equal to zero, Case
and Shiller (1989) showed the variance of the equation error term in (4)
is heteroscedastic and proposed a feasible Generalized Least Squares (GLS) estimator to correct for this problem. The GLS estimator is based
on the fact sports franchise i that is sold in periods s and t in the
sample has a predicted sale value of
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII].
Consequently, the predicted price is the actual price marked up by
the expected market appreciation. Based on the assumed functional form
of the variance structure described above, the deviation of the actual
franchise price from its expected value is
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
and A, B, and C can be estimated using the residuals of (4) as the
dependent variable from the above equation. The fitted values from this
can be used to transform the original observations of [DELTA][V.sub.i]
and correct for the heteroscedasticity.
The Hybrid Method
Quigley (1995) suggested a hybrid model to analyze housing prices
by combining both single sales and multiple sales. We apply his
methodology to franchise valuation. In this hybrid approach, franchise
value can be represented by a multiplicative term, PQ, where P is a
price index of sports franchises and Q is the innate quality of each
franchise. We can represent the relationship as follows
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (1')
Here, [V.sub.it] denotes the franchise value and can be defined as
the sum of the logarithm of the observed price and the franchise
quality. [Q.sub.it] captures the quality of franchise i sold at time t,
and Pt is the logarithm of the price index at time t. [[epsilon].sub.it]
is a random error.
According to equation (1'), each franchise has some level of
quality [Q.sub.it], at price [P.sub.t] at time t. The unobservable
quality [Q.sub.it] can be estimated using some observable
characteristics [Y.sub.it] of traded franchises and franchise-specific
factors [[psi].sub.i]. That is, the unobservable franchise quality
[Q.sub.it] can be represented as a function of [Y.sub.it] and
[[psi].sub.i] as follows
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (2')
Substituting (2') into (1) gives
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (3')
Let [[phi].sub.it] be a composite error term, so that
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (4')
where [mu]it = [[theta].sub.it] + [[epsilon].sub.it]. Assume that
the relationship between these unobservable error terms is
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (5')
Finally, suppose that franchise prices follow a random walk such
that
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (6')
Recall from above that, if the variance parameters A and B are not
equal to zero, Case and Shiller (1989) showed the variance of the error
term ([[mu].sub.it]) is heteroscedastic and proposed a feasible
Generalized Least Squares (GLS) estimator to correct for this problem.
The intuition behind equation (6) is that the estimate of A determines
whether the variance is linear with the elapsed time between the
previous sale and the subsequent sale. That is, the variance of
franchise prices increases (decreases) with elapsed time if A has a
positive (negative) estimated sign. The estimate of B determines the
curvature of the variance as a function of elapsed time. If B is
positive (negative), then the variance increases at an increasing
(decreasing) rate over time.
To find the efficient estimates of the parameters of the hybrid
model, using single and multiple sales data, we can combine equations
(3') and (4'). The new error structure is a composite error
term [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] as defined
before. This gives the hybrid model
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (7')
The unknown parameters of this equation can be estimated2using a
sample of both single and repeat sales. We can easily estimate the
variances, [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]. That is,
after estimating the parameters of (7') using a subsample of repeat
sales, we can obtain an estimate of the variance, [MATHEMATICAL
EXPRESSION NOT REPRODUCIBLE IN ASCII] Similarly, after estimating the
parameters of (3'), we can obtain an estimate of the variance,
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]. The main difference
between these two regression models is that the first regression model
includes a set of dummy variables that represent unobservable franchise
characteristics while the second regression does not. In equation
(7'), [[psi].sub.i] captures the random factors that affect
individual franchise values. Intuitively, if we have some information
about franchise-specific factors then the random error can be identified
through the regression model, much like the fixed effects in standard
panel data models. We use indicator variables for new teams, teams in
new locations, teams that own their own facility, and variables
reflecting the number of competing teams and leagues in the market to
control for franchise quality and proxy for [[psi].sub.i].
After obtaining estimates of [MATHEMATICAL EXPRESSION NOT
REPRODUCIBLE IN ASCII], an unbiased estimator [MATHEMATICAL EXPRESSION
NOT REPRODUCIBLE IN ASCII] can be found with some manipulation. Details
can be found in Quigley(1995). As discussed before, the sample of
multiple sales yields the estimates of A and B from equation (6").
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (6")
Using the estimates [??] and [??], the variance-covariance matrix
of disturbances can be found from Equation (7') as follows
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (8')
Intuitively, when i = j, the sample of single sales has estimated
variance [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]. However,
if the sample of multiple sales is included, the estimated variance is
increased by [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]. When
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] since we assume that
all errors are independent. From equation (8'), the GLS weights can
be derived like those in the repeat sales model, using
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
where M is the number of franchises and f corrects for degrees of
freedom, i.e., f = (N - M)/N, where N is the degrees of freedom needed
to compute [MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII].
Equation (7') can be estimated by GLS using the entire sample
of single sales and multiple sales. Using all observations, including
single sales and multiple sales, increases the efficiency of estimation
of the parameters [alpha] and thus estimates of [P.sub.t] can also be
improved. The presence of unobservable attributes related to quality was
a problem in the repeat sales model. In the hybrid model, the unmeasured
attributes actually contribute to explaining the total variance for the
model, using all observations. The hybrid model relaxes the assumption
that unobserved quality remains constant and uses a method similar to
the repeat sales method described above.
Data Description
The data source on franchise sale prices is Rodney Fort's
Sports Business Data website
(http://www.rodneyfort.com/PHSportsEcon/Common/OtherData/DataDirectory.ht ml). This web site contains franchise sales price data for all four of
the major North American professional sports leagues--the NBA, NFL, NHL,
and MLB--back to the early part of the 20th century. We analyze
franchise sale prices over the period 1960-2009. We restricted our
sample to the post-1960 period because the quality of franchises must
remain constant for the repeat sales method to work and the longer the
time period analyzed the less likely is this assumption to hold. Many of
the franchise sales are fractional--an individual or group of investors
buys a portion of a professional sports franchise. Following the method
used by Fort (2006), we converted all fractional sales to full value.
For example, if 50% of a franchise was sold for $10 million dollars, we
estimate the total franchise value at $20 million dollars.
The data set contains observations for all franchise sales in the
four major North American professional sports leagues over the period
1960-2009. There were 275 individual franchise sales during the sample
period in these four leagues; 80 occurred in MLB, 77 in the NBA, 56 in
the NFL, and 62 in the NHL.
Table 1 contains summary statistics on the franchise sales over the
sample period, in current dollar or nominal terms. Research on the sale
price of real estate, art, and other assets uses nominal prices rather
than real prices to avoid bias introduced by deflation; this also makes
the results comparable to the nominal rate of return on other assets
like stocks and bonds. We follow this convention in this paper. From
Table 1, NFL franchises had the largest average sale price and NHL
franchises the smallest. NBA sale prices were more volatile than other
leagues and NHL sale prices were the least variable. The largest price
paid for a sports franchise in the sample was $2.125 billion dollars
paid for the New York Knicks in 1997. While this transaction would
appear as an outlier initially, closer examination revealed this
transaction also included Madison Square Garden, an extremely valuable
piece of real estate in midtown Manhattan. The largest price paid for an
NFL franchise was $1.2 billion dollars paid for the Miami Dolphins in
2009. That transaction included Dolphins Stadium. The largest price paid
for a MLB franchise was $889.5 million paid for the Chicago Cubs in
2009. That transaction included Wrigley Field. The largest price paid
for an NHL franchise was $575 million paid for the Montreal Canadians in
2009. That transaction included the Bell Centre. Ownership of the
team's stadium or arena had a significant effect on the sale price,
consistent with the results in Miller (2007, 2009).
Implementing the Case-Shiller estimator requires repeated
observations on the sale of the underlying asset. In this case, we need
observations on repeated sales of the same sports franchises in order to
estimate a quality-adjusted sport franchise appreciation. Fortunately,
the 1960-2006 time period contains a number of repeat sales of sports
franchises. Of the 275 franchise sales occurring from 1960 to 2009, 139
were repeat sales of a sports team, although none of these repeat sales
took place until 1967. These repeat sales involved about 50 teams and
among the franchises with multiple sales, the average number of
transactions was 3. Most of the repeat sales involved only two
transactions; however, the Boston Celtics were bought and sold six times
during this period and the Philadelphia Eagles and Minnesota Vikings were bought and sold five times. There is at least one transaction in
every year in the sample except 1971, 1976, 1979, and 1987.
The repeat sales in the sample period are summarized in Table 2.
Baseball teams appear most frequently and football teams appear least
frequently in this sample of repeat sales. The % change variable is the
average value for the variable [DELTA][V.sub.it] from the previous
section; it is the difference in the log of the sale price from period t
to period s. This value approximates the percentage change in the sale
price calculated by the traditional formula. The average number of years
between sales in the sample, t-s, was 10 years, with a standard
deviation of 7.6. The longest period between transactions was 35 years.
Owners of sports teams realized a considerable gain when they sold their
team; the average rate of return was well over 100% in all leagues, and
the extreme figures confirm several owners realized gains in the
neighborhood of 300%.
The negative minimum values reported on Table 2 deserve some
explanation, as negative returns to owning a professional sports team
would appear unlikely. Only eight of the transactions in the sample
generated a loss and virtually all of those can be explained as
anomalous. The largest negative return in the sample, a 68% loss,
involved the sale of 80% of the Chicago White Sox to Bill Veeck in the
1970s. The second largest negative return in the sample, a 61% loss, was
the sale of the Pittsburgh Penguins in 1975. The franchise was in
bankruptcy at the time, for the second time in five years, and had been
taken over by the league. The other negative returns on Table 2
represent fractional purchases of additional stakes in teams by the same
individual. The -41% return for MLB comes from the 1973 sale of a 7%
stake in the Cleveland Indians by Nick Mileti. Mileti bought the Tribe
in 1972 for $10.8 million and sold a 7% interest in the team the next
year for $500,000. The -40% return in the NBA is from the 1972 sale of
the Boston Celtics. Transnational Communications, a holding company
owned by businessman E. E. Erdman, bought the Celtics for $6 million in
1970 and sold the team to Bob Schmertz for $4 million in 1972.
Results and Discussion
The Repeat Sales Model
The repeat sales data described in the previous section was used to
estimate a quality-adjusted sports team sale price index implementing
the Case-Shiller three-step estimation procedure outlined by Case and
Shiller (1989) and described above. The three-step procedure is a
feasible Generalized Least Squares (GLS) estimator controlling for
quality differences by using only repeat sales data. The first stage
involves regressing the log first difference of the franchise sales
price on a vector of year dummy variables. The second stage uses the
squared residuals from the first stage as the dependent variable and the
number of years between sales, and the square of this value, as
explanatory variables. The third stage dependent variable is the log
first difference of the sale price from the first stage divided by the
square root of the fitted value from the second stage in order to
correct for heteroscedasticity. The results of this estimation procedure
are available by request.
The key summary statistic for the repeat sales model is the quality
adjusted price index that can be calculated from the parameter estimates
for equation (4) using the 141 repeat sales of professional sports
franchises from 1967 to 2009. Most of the parameters are statistically
significant at conventional levels and our model explains almost 70% of
the observed variation in growth of franchise values from sale to sale.
Figure 1 contains a time series plot of the quality-adjusted sports
franchise price index that can be calculated from these parameter
estimates using equation (5). Because there are relatively few repeat
transactions early in the sample period, some of the early index values
may not be well identified. The quality adjusted index values are
identified by multiple transactions that take place in each year. Some
early years in the sample have only one transaction, which means that
the parameters from those years may not be precisely estimated.
Recall this price index holds the underlying quality of sports
franchises, including factors like market characteristics, team
reputation, and league characteristics constant. Several interesting
features are apparent in Figure 1. The index exhibits quite a bit of
variability. The year-to-year variation in the index can be substantial,
involving changes of several hundred points in the index value. This
variation can be attributed to the relatively small sample size. The
average number of repeat sales transactions in a year in the sample is
0.957. In addition, an extreme value occurs in 2001, where the index
value equals 1277. This extreme value contributes to the high
year-to-year variation. Three repeat transactions took place in 2001.
The Atlanta Hawks (price $184 million) were sold for the first time
since 1977, the Montreal Canadians (price $228 million) were sold for
the first time since 1971, and the Seattle SuperSonics (price $200
million) were sold for the first time since 1984. The franchise prices
were not extraordinary relative to other sales in the early 2000s, but
these three franchises had not changed hands in decades, so the change
in the price was exceptionally large for each transaction. Meese and
Wallace (1997) point out the sensitivity of repeat sales and hedonic
models to these types of outliers. We view this value as an outlier
attributable to coincidental circumstances.
[FIGURE 1 OMITTED]
There is no apparent upward trend in the index. The average value
of the index over the past four decades is 162.7 in the 1970s, 424.7 in
the 1980s, 328.2 in the 1990s, and 380.8 in the 2000s. The dashed line
on Figure 1 is a quadratic time trend drawn through the sample. This
trend line peaks at some point in the early 1990s.
The Hybrid Model
We use the same data as in the analysis of the repeat sales model
and all single sales that were dropped for the repeat sale model to
estimate Quigley's (1995) hybrid model that is described above.
Quigley's (1995) hybrid approach is a four-step procedure, where
equation (7') is estimated separately using single and repeat
sales, the residuals are used to estimate the parameters of (6"),
and GLS weights are calculated from this and applied to (7') using
the full sample of single and repeat sales. Recall that the hybrid model
explicitly controls for changes in quality, as it makes use of both
single sales and repeat sales. The vector of explanatory variables that
captures franchise quality includes facility age, total championships
that a team has won, the population of the market that the team plays
in, and the franchise average winning percentage over the past 10 years,
and a time dummy variable, [d.sub.it] measured in years from 1970 to
2009. Table 3 contains the results of steps 1, 2, and 4, which shows
parameter estimates and p-values. The results from step 3, estimates of
the unknown parameters in equation (6"), are available on request.
The estimated variance and standard errors calculations are
described in the hybrid model section above. Column 1 contains the
results for single sales, column 2 for only multiple sales, and column 3
the pooled regression with both single and multiple sales. From this
regression, we can find the estimated variance [MATHEMATICAL EXPRESSION
NOT REPRODUCIBLE IN ASCII] and can calculate the estimated variance
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] based on the formula
provided by Quigley (1995). Note that the regression with only multiple
sales includes a franchise-dummy variable and indicator variables for
new teams, teams in new locations, and teams that own their facility,
which represents the individual-specific factors of franchises.
Also recall that the estimates of the parameters A and B in
(6") identify and control for heteroscedasticity. Based on the
estimates of A and B, the variance increases linearly with time elapsed since the previous sale, as the estimate of A is significant and
positive and the estimate of B is not statistically significant. From
these results, the GLS weights are derived and used to generate the
results in column 3 on Table 3.
From both single sales and the pooled model, only population has a
significant and positive parameter estimate. Franchises in larger
markets are more valuable, other things equal. The parameter on the
average winning percentage over the last 10 years is positive and
significant in the single sale model only. Similar results were obtained
from a model that used the average winning percentage over the last five
years. Winning programs do not affect franchise values much, supporting
the idea that professional sports teams in North America are profit
maximizers, not win maximizers.
Again, the key summary statistic for the hybrid model is a
quality-adjusted franchise price index that can be calculated from the
year dummy variables in equation (7'). Figure 2 shows this price
index. Note that the lags needed to estimate the error structure of the
hybrid model means that we can only estimate the price index beginning
in 1970.
[FIGURE 2 OMITTED]
Figure 2 tells a different story than Figure 1. Figure 2 shows a
substantial increase in quality-adjusted franchise values beginning in
the early 1990s. Figure 1 shows a peak in quality adjusted franchise
values in the late 1980s or early 1990s and a decline thereafter.
Discussion
According to the repeat sales model, there was no substantial
appreciation in franchise values over time. According to the hybrid
model, which uses both single and repeat sales, franchise values of
professional sports teams steadily increased over time beginning in the
early 1990s. The results from a hedonic model in Humphreys and Mondello
(2008), which uses single sales and does not account for repeat sales
shows that the value of professional sports franchises increased
steadily over time beginning in around 1980, a full 10 years earlier
than the hybrid model results. The differences can be attributed to the
underlying assumptions about franchise quality made by each model and
the inclusion of variables controlling for observable franchise
characteristics in the hybrid and hedonic models. The repeat sales model
assumes that unobservable franchise quality is constant, and can be
removed by only analyzing repeat sales. So, although the population or
the facility age increases, the model does not account for the changes.
The arguing point could be the population. From the results of the
hybrid model, only population significantly and positively affects
franchise values. In most markets, the population tends to increase over
time, except for a few "rust belt" cities in the North and
Northeast. Humphreys and Mondello (2008) found that population and
franchise age increased franchise value in their hedonic model. The
repeat sale quality-adjusted franchise price index indicates a different
pattern in franchise price appreciation than the unconditional analysis
by Fort (2006), the hybrid model, and the hedonic analysis by Humphreys
and Mondello (2008).
The literature identifies four possible reasons for observed
difference between quality adjusted price indexes based on the hedonic,
hybrid, and repeat sales approaches:
1. Some important characteristics of each franchise change between
transactions, while the repeat sales approach assumes that these
characteristics remain unchanged, leading to bias in indexes derived
from the repeat sales approach. In this context, the most important
characteristics that change are the population of the market, the age of
the franchise, and the age of the facility that the franchise plays in.
Both increase over time, and the repeat sales approach does not account
for this. Quigley's (1995) hybrid repeat sales method accounts for
the effects of changes in market population and age-related factors in
repeat sales methods. The results from this approach indicate that
quality adjusted franchise prices began increasing rapidly in the early
1990s.
2. The prices of hedonic attributes change over time, while the
repeat sales approach holds them constant, leading to bias in indexes
derived from the repeat sales approach. Previous research suggests that
local market population and income, private ownership of the facility,
and on-field success are the most important observable hedonic
characteristics in the market for professional sports franchises in
North America. While we cannot rule out the possibility that the hedonic
price of these characteristics has changed over time, it seems unlikely
that underlying factors that affect the hedonic price of on-field
franchise success in professional sports leagues should have changed
over time, given the zero sum nature of wins in sports leagues. Similar
reasoning applies to the hedonic price of a privately owned facility,
given the instability of real estate markets.
3. The franchises that are bought and sold in the sample are not
representative of the entire population of franchises, leading to
selectivity bias in indexes derived from the repeat sales approach. No
formal test exists to determine if the repeat sales analyzed here are
representative of the overall sample of franchise sales in North
America. But the repeat sales reported in Table 2 constitute 63% of the
total sales reported in Table 1 for MLB, 51% of the total sales in the
NBA, 45% of the sales in the NFL, and 40% of the sales in the NHL.
Selectivity seems to be an unlikely culprit, given the relatively large
number of franchises in the repeat sales sample.
4. The hedonic and hybrid approaches mis-specify the functional
form of the model, and omit important hedonic characteristics from the
model, leading to bias in indexes derived from the hedonic approach. The
hedonic models used in the literature have been basic linear or
linear-quadratic functions; no papers have used flexible functional
forms. This makes the assessment of specification problems difficult,
but leave ample room for mis-specification to be an important problem
with indexes derived from hedonic models. There may be a number of
franchise characteristics omitted from the hedonic model and hybrid,
including tax benefits associated with owning professional sports teams,
the fact that owning a sports team may be more valuable to some agents,
like media corporations, than to others, and changes in the
characteristics of modern sports facilities that began occurring after
the opening of Camden Yards in Baltimore in 1992. The advent of the
modern, entertainment-complex/sports facility began in the early 1990s,
which coincides with the increase in the hybrid quality adjusted price
index.
Of these four possible problems, bias due to mis-specification and
omitted variables in hedonic models appears to contribute more to the
observed difference between the quality adjusted franchise price index
reported by Humphreys and Mondello (2008), the hybrid model, and the
repeat sales model based indexes reported here. If correct, the
implication is clear: the increase in the value of professional sports
teams over the past 30 years cannot be attributed to general price
increases in this market. The quality adjusted repeat sales index
developed here has no upward trend; it appears to have peaked sometime
in the late 1980s or early 1990s. The hybrid index increased in 1990.
The increase in the value of sports franchises appears to be driven by
characteristics of the franchises themselves, not to market
appreciation.
Conclusions
Based on a repeat sales approach and a hybrid model incorporating
both single and repeat sales, one quality adjusted North American
professional sport franchise index developed here has no upward trend
over the past 40 years, while the other increases markedly after 1990.
The repeat sale quality adjusted price index appears to have peaked
decades ago, indicating that the large increases in franchise prices
documented by Fort (2006) cannot be attributed to market wide forces.
Put another way, changes in the quality of individual franchises appear
to drive increases in the value of professional sports franchises. Based
on the results from hedonic and hybrid models of franchise values, the
main factors associated with franchise quality are market income and
population, facility characteristics, and on-field success. Market
income and population have both increased significantly over the past
century in North America. The four major professional sports leagues
operate as monopolies in North America, and therefore restrict the
number of franchises in order to generate monopoly rents. This
restriction in the number of franchises in the face of increasing
population and income clearly drives some of the increase in franchise
values reported by Fort (2006).
Facility characteristics also affect franchise quality. Zimbalist
and Long (2006) document an explosion in new facility construction in
professional sports beginning in the early 1990s, and also show that
public funds constituted an increasing fraction of money used to finance
this stadium and arena construction boom. The hedonic based quality
adjusted franchise price index in Humphreys and Mondello (2008)
increases sharply after the mid-1980s, suggesting that general market
conditions in the market for professional sports franchises contributed
to much of the recent increases in professional sports franchises. This
result also suggested that the increasing subsidies for new facility
construction (as well as the increasing monopoly rents discussed in the
previous paragraph) were not the only factors driving recent franchise
price increases. Our results paint a less rosy picture. Since the repeat
sales based quality adjusted price index declines over time, factors
like the increasing subsidies for new sports facility construction
appear to contribute much more to increases in professional sports
franchise values than was previously thought. While these new facilities
enhance the experience of fans attending games by providing improved
sight lines, seats, and amenities, the also appear to line the pockets
of wealthy sports team owners by ensuring that they will realize large
capital gains when selling the franchise.
References
Alexander, D. L., & Kern W. (2004). The economic determinants
of professional sports franchise values. Journal of Sports Economics,
5(1), 51-66.
Bailey, M. J., Muth, R. F., & Nourse, H. O. (1963). A
regression method for real estate price index construction. Journal of
the American Statistical Association, 58(4), 933-942.
Beggs, A., & Graddy, K. (2006). Failure to meet the reserve
price: The impact on returns to art. University of Oxford Department of
Economics Discussion Paper number 272.
Burton, B. J., & Jacobsen, J. P. (2001). The rate of return on
investment in wine. Economic Inquiry, 39(3), 337-350.
Case. B., & Quigley, J. M. (1991). The dynamics of real estate
prices. Review of Economics and Statistics, 73(1), 50-58.
Fort, R. (2006). The value of Major League Baseball ownership.
International Journal of Sport Finance, 1(1), 9-20.
Goetzmann, W. N. (1993). Accounting for taste: Art and the
financial markets over three centuries. American Economic Review, 83(5),
1370-1376.
Graeser, P. (1993). Rate of return to investment in American
antique furniture. Southern Economic Journal, 59(2), 817-821.
Humphreys, B. R., & Mondello, M. (2008). Determinants of
franchise values in North American professional sports leagues: Evidence
from a hedonic price model. International Journal of Sport Finance,
3(2), 98-105.
Johnson B. K., & Whitehead, J.C. (2000). Value of public goods
from sports stadiums: The CVM approach. Contemporary Economic Policy,
18(1), 48-58.
Meese, R. A., & Wallace, N. E. (1997). The construction of
residential housing price indexes: A comparison of repeat-sales, hedonic
regression, and hybrid approaches. Journal of Real Estate Finance and
Economics, 14(1), 51-73.
Miller, P. A. (2007). Private financing and sports franchise
values: The case of major league baseball. Journal of Sports Economics,
8(5), 449-467.
Miller, P. A. (2009). Facility age and ownership in major American
team sports leagues: The effect on team franchise values. International
Journal of Sport Finance, 4(3), 176-191.
Palmquest, R. B. (1980). Alternative techniques for developing real
estate price indexes. Review of Economics and Statistics, 62(3),
442-448.
Pesando, J. E. (1993). Art as an investment: The market for modern
prints. American Economic Review, 83(5), 1075-1089.
Quigley, J. M. (1995). A simple hybrid model for estimating real
estate price indexes. Journal of Housing Economics, 4(1), 1-12.
Rosen, S. (1974). Hedonic prices and implicit markets: Product
differentiation in pure competition. Journal of Political Economy,
82(1), 34-55.
Zimbalist A., & Long, J. G. (2006). Facility finance:
Measurement, trends, and analysis, International Journal of Sport
Finance, 1(4), 201-211.
Authors' Note
The authors would like to thank Gary Deeds for valuable research
assistance.
Brad R. Humphreys and Yang Seung Lee
University of Alberta
Brad R. Humphreys is a professor in the Department of Economics and
chair in the economics of gaming. His current research focuses on the
economic impact of professional sports and the economics of sports
gambling.
Yang Seung Lee is a post-doctoral fellow in the Department of
Economics. His research focuses on applied microeconomic theory and its
estimation.
Table 1: Franchise Sales Prices 1960-2009
Sport # Sales Mean St. Dev. Min Max
Nominal Price
MLB 80 124.37 168.99 4.5 889.5
NBA 77 159.93 322.67 2.0 2125.0
NFL 56 212.29 296.83 1.4 1222.2
NHL 62 85.39 97.83 2.0 575.0
Table 2: Repeat Sales 1967-2009
Sport # Repeat Sales % Change St. Dev. Min Max
MLB 50 115% 1.21 -68% 409%
NBA 39 122% 1.04 -41% 377%
NFL 25 104% 0.87 -40% 343%
NHL 25 119% 1.16 61% 331%
Table 3: Regression Results, Hybrid Model
Variable Single Sales Repeat Sales All Sales
Facility Age 0.0007 0.008 -0.002
(0.789) (0.173) (0.589)
Winning % Last 10 Years 0.746 0.855 0.522
(0.001) (0.151) (0.114)
Championships Won -0.011 -0.001 -0.026
(0.380) (0.953) (0.163)
Market Population 0.004 0.003 0.006
(0.001) (0.533) (0.001)
Constant 2.048 -0.932 1.962
(0.001) (0.395) (0.001)
Franchise Dummy? No Yes No
[??]
[??] 0.362 0.432
[??] - 0.005 -
R2 - 0.948 -
0.87 0.51 0.78
p-values in parentheses.