Title: Incentives in Tournaments
1 - Incentives in Tournaments
- with Heterogeneous Agents
- Empirical Evidence from the German Bundesliga
- Bernd Frick and Joachim Prinz
- University of Paderborn
- bernd.frick_at_notes.upb.de
- joachim.prinz_at_wiwi.uni-paderborn.de
- Oliver Gürtler
- University of Bonn
- oliver.guertler_at_uni-bonn.de
2Structure of the Presentation
- Motivation
- Related Literature
- The Model
- 4. Data and Hypothesis
- Estimation and Empirical Findings
- Summary and Implications
31. Motivation (I)
- Tournaments are an important element of firms
incentive systems - Promotion tournaments are used to identify the
most talented employee(s) - Bonus pools are offered to motivate the most
productive em-ployee(s). - Theory suggests that tournaments can be effective
only if the con-testants are homogeneous. In
tournaments with heterogeneous par-ticipants the
underdog will soon recognize that he has no
chance to win and will, therefore, reduce his
effort. The favorites best respon-se is to
reduce his effort, too. Thus, the incentive
effects of tourna-ments are likely to
disappear
41. Motivation (II)
- The design of tournaments
- prizes are fixed in advance and independent of
absolute performan-ce - - a player receives the winners prize not by
being good, but by being better than the other
player - the level of effort of each player depends on the
size of the potential increase in his wage - since the optimal amount of effort is not
infinite, there is a limit to the prize spread. - The average prize money must be high enough to
attract contest-ants to enter the tournament in
the first place
51. Motivation (III)
- larger prize spreads not only induce higher
effort levels, but may also result in a rat
race - collusion is less likely, if the number of
contestants is high as an agreement to slack off
is difficult to enforce - the higher the noise in the tournament (luck,
production uncertain-ty and measurement error),
the lower the level of effort - the more important luck is in determining the
winner, the larger the spread has to be - tournaments serve a sorting function as well as
an incentive function
61. Motivation (IV)
- advantage of using relative performance as
measure of effort - lower measurement costs
- elimination of the effect of luck on reward
- Problem to be addressed in our empirical analysis
- efforts suffer when heterogeneous contestants
compete with each other. Effort has the largest
effect on changing the probability of winning
when the contestants are of similar ability. If
ability differs among contestants, then both the
less able and the more able tend to slack off.
71. Motivation (V)
-
- to maintain high levels of effort, it is
important to group contestants so that, at least
at the outset, participants feel they are (more
or less) evenly matched with those against whom
they will directly compete for the tournament
prize. - when contestants are (too) heterogeneous not even
a highly skewed prize money distribution will
motivate well, because contestants who feel that
they have no chance of winning the tournament
will give up early. - - Our paper is the first to test this hypothesis
in the context of a pro-fessional team sports
league, the German Bundesliga.
81. Motivation (VI)
- It is difficult to observe the effects of
tournament-like pay structures on effort because
in cases where tournaments are used, neither
effort nor output is easily observed. If effort
or output could be observed easily, then the case
for using a relative performance-based incentive
scheme would be diminished. There is, however,
one arena in which output is easily measured and
in which the tournament pay structure is explicit
professional sports (Lazear 1998 241).
92. Related Literature
103. The Model (I)
- N
- (1) yi S eij ai ei
- i1
- (2) Ui U(Ii) - C(ei)
- Prob S e1j a1 e1 gt S e2j a2 e2
-
- Prob e2 - e1 lt S e1j - S e2j a1 - a2
-
- G(S e1 - S e2 a1 - a2)
113. The Model (II)
-
- EU1j U(w2) G(S e1j - S e2j a1 - a2) (U(w1)
(U(w2)) C(e1) -
- and
- (5) EU2j U(w2) 1 - G (S e1j - S e2j a1 -
a2) (U(w1) - U(w2)) - C(e2j)
123. The Model (III)
- dEU1j
- (6) ________ g (S e1j - S e2j a1 - a2)
(U(w1) - U(w2)) - C(e1j) 0 - de1j
- dEU2j
- (7) ________ g (S e1j - S e2j a1 - a2)
(U(w1) - U(w2)) - C(e2j) 0 - de2j
- (8) g (a1 a2) (U(w1) U(w2)) C(e)
133. The Model (IV)
- Result 1
-
- The optimal level of effort of both contestants
is strictly decreasing in a1 - a2
14Figure 1Talent Difference and Optimal Effort
Level
Effort Level
Talent Difference
154. Data and Hypothesis (I)
- 756 matches played in the seasons 1998/99
(n144), 1999/2000 (n306) and 2000/01 (n306) - Match and referee characteristics as well as
betting odds (Oddset) - - age of referee
- - body mass index
- - FIFA-referee (0no 1yes)
- - goals scored by home and away team
- - attendance
- - score after 45 minutes
164. Data and Hypothesis (II)
- We use two different, yet related measures of
heterogeneity of the contestants - HET1 ODDS_H ODDS_A
- HET2 ODDS_H2 - ODDS_A2
- The larger the heterogeneity between the two
competing teams (HET), the smaller the
intensity of the match, i.e. the smaller the
number of cards (CARDS).
17Figure 2Number of Disciplinary Sanctions (I)
Number of Matches
Number of Yellow Cards and Total Number of Cards
18Figure 3Number of Disciplinary Sanctions (II)
Number of Matches
Number of Yellow / Red and Red Cards
19Figure 4Kernel Density Estimate of HET1 and HET2
205. Estimation and Empirical Findings (I)
- The model is of the following general form
- CARDS a0 a1 AGE a2 AGE2 a3 BMI a4 FIFA
- a6 H_G a7 A_G a8 ATT a9 ATT2
a10 HTS - a11 DER a12 HET e
- Count data model controlling for unobserved
referee-specific effects (Negbin Model with
Random and Fixed Effects).
21Table 1Intensity Measures
22Table 2Control Variables
23Table 3Betting Odds
245. Estimation and Empirical Findings (II)
255. Estimation and Empirical Findings (III)
266. Summary and Implications (I)
- Using a unique data set from the top tier in
German professional football we demonstrate that
the effort levels of the two teams in a single
match are significantly lower when the teams are
heteroge-neous. - Our measure of match intensity is the number of
disciplinary sanc-tions, the measure of
heterogeneity is the (squared) difference in the
respective betting odds. - - So far, we have looked at destructive efforts
only. In further re-search we will, of course,
also look at constructive efforts.
276. Summary and Implications (II)
- Next steps include
- International comparison with data from the other
four top lea-gues in Europe (England, Italy,
France and Spain) - Adding controls for the market values of the
teams at the start of the respective season.
28Literature
- Chevalier, J., and G. Ellison (1997) Risk Taking
by Mutual Funds as a Respon-se to Incentives.
Journal of Political Economy, 105, pp. 1167-1200 - Clark, D. and C. Riis (2001) Rank-Order
Tournaments and Selection. Journal of Economics,
73, pp. 167-191 - Kräkel, M. and D. Sliwka (2004) Risk Taking in
Asymmetric Tournaments. Ger-man Economic Review,
5, pp. 103-116 - Lazear, E. (1998) Personnel Economics for
Managers, New York Wiley - Lazear, E. and S. Rosen (1981) Rank-Order
Tournaments as Optimum Labor Contracts. Journal
of Political Economy, 89, pp. 841-864 - Schotter, A. and K. Weigelt (1992) Asymmetric
Tournaments, Equal Opportu-nity Laws, and
Affirmative Action Some Experimental Results,
in Quarterly Journal of Economics, 107, pp.
511-539