Abstract:

This article explores if ticket revenue increases due to a particular team’s performance, or if it increases on how much Stars team might have. This article takes a more comprehensive look then the study done by Hausman and Leonard (1997) that looked at attendance changes when a team added or played a team with stars. The structure of the study first shows the empirical model they use to examine the demand for professional basketball. Then the authors discuss a review of the econometric of the empirical model.

Dependent variable

GATE=Gate revenue (in $millions)

Independent variables

Team performance characteristics

WINS= Regular season wins

WPLAY= Playoff wins

WPLAY(-1)=lagged playoff wins

WCH20= Championships won, weighted

(Prior championship gets 20, year before 19…)

STARVOT=All-Star votes received

Franchise characteristics

SCAP= Stadium capacity

DCAP=Teams at capacity

OLD=Age of stadium

DEXP5=Expansion team, dummy variable equal to one if the team is

less than five years old.

RSTAB=Roster stability

WHITERRATIO= White ratio (WHITEMIN / WHITEPOP)

ATTEND = Team attendance

Market characteristics

CB=Competitive balance in conference

COMPTM=Competing teams

RYCAP= Real per-capita income

POP=Population

Racial variables

WHITEMIN=Percentage of white minutes

WHITEPOP=Percentage of whites in population

1.) Competitive Balance formula

CB= Competitive balance

σ(wp)it=Standard deviation of winning percentages within league (I) in period (t)

μ(wp)it= League (I)’s mean

N= the total number of games.

CBit= σ(wp)itactual/σ(wp)itideal ; where σit ideal=μ(wp)it/√N

For this study the competitive balance equation was calculated for each conference, Eastern and Western, and each year, for this study.

2.) Econometric issues and estimation-The list of the dependent and independent variables was utilized to construct the following model:

Yn= 4Σ i=1αi+19Σ k=1α kXkn+εn n = 1,2...,108.

3.) Marginal value of team wins

Y= The value of gate revenue

Xi= The value of team wins

αi=The estimated coefficient from the double-logged model.

X1=[Y/Xi]αi

2a.) Relationship between revenues and the values of wins multiplicative model:

Yin=[α I19Σ k=1Xα k]

Results:

Table 2: Estimated coefficients for equation 1, dependent variable is GATE, multiplicative model.

T-Statistics, significant at the 1% level:

WPLAY=2.718

WPLAY(-1)=3.896

WCHM20=3.547

SCAP=3.761

OLD=-2.940

T-Statistics, significant at the 5% level:

WNS=2.334

STARVOT=2.474

DEXP5=2.319

POP=2.197

The R2 value is .815 meaning that 81.5% of the data is explained.

R2 = .815

Adjusted R2=.767

F statistic= 17.038

P value: F statistic = .000

Table 3: Estimated coefficients for equation 3, dependent variable GATE, Linear Specification.

T-Statistic, significant at the 1% level:

WINS=3.544

WPLAY=3.578

WPLAY(-1)=3.466

WCH20=3.089

SCAP=3.519

T-Statistic, significant at the 5% level:

DHILL=-2.217

DCAP=2.048

The R2 value is .760 which means 76% of the data is explained.

R2= .760

Adjusted R2=.698

F statistic=12.231

P value: F statistic = .000

Conclusion:

Given the results, the study concludes that gate revenue is most responsive to changes in stadium capacity and wins. A single win generates $83,037 in revenue while one All-star vote produces $.22, which the team would need 370,000 votes per team to have the equivalent of one win. Which proves that performance on the basketball quart is what attracts the fans not star power. One thing that was not taken into account for revenue was that star power might generate, is the revenue that they generate for their opponents.

Source:

Berri, David J. Martin B. Schmidt, Stacey L. Brook. "Stars at the Gate". Journal of Sports Economics, 2004, Vol. 5, no. 1, Pages 33-50.