May 27, 2003
Vítězslav Babický
Attitudes to risk and fairness: how they are related and how they
evolved - theoretical and experimental studies
Proposed committee: Dirk EngelmannAxel Ockenfels Avner Shaked
Tentative chair: Andreas Ortmann
Plan of the presentation:
• Questions - motivation for papers• Models from recent literature• Fairness under risk: Insights from dictator games• Proposed experiments• Modelling the “game of life”• Conclusion, discussion
1. Are attitudes to fairness and to risk related
and if so, how?
• Fairness under risk: Insights from dictator games - 1st paper for my dissertation
(accepted for CERGE-EI working paper series)
Questions - motivation for papers
2. Are there alternatives to fairness attitudes and how do they evolve?
• Mutual shareholding and inequity aversion - theoretical and experimental analysis (joint work with Werner Gueth, Wiebke Kuklys and Andreas Ortmann)- theory completely worked out- first experiments already done in Jena
• Evolutionarily stable positive inequity aversion in the mutual shareholding environment for the composition of the game of life from dictator, ultimatum and market games (joint work with Werner Gueth)
Questions - motivation for papers
3. How do risk attitudes evolve and how is the result of evolution affected by various composition of the game of life?
• Evolution of risk attitudes on 2x2 games- risk-loving players advantaged in some games, while risk-averse players advantaged in other games(joint work with Andreas Ortmann)
Questions - motivation for papers
Starting point: existing theories of other-regarding preferences
– decisions about ex-ante known pies, possibly with information constraint
People’s life circumstances are diverse and subject to chance events (sometimes there is need to decide earlier)
So, introduce risk (sticking to use of expected utility theory, prospect theory may be a possibility)Note: issue of procedural fairness studied in recent literature (Bolton, Brandts, Ockenfels, 2001)
Models from recent literature
To recall the main contenders:
1) Theory of fairness, competition and cooperation [FCC] (Fehr, Schmidt, 1999)- proposed model: aversion to differences in payoffs
Utility function in the form Ui(x) = xi – (i/(n–1))∑kmax(xi–xk,0) –
– (i/(n–1))∑kmax(xk–xi,0) n=number of players (=2 for the dictator game)Example: the graph of Ui(xk|xi) , e. g. i =0.5, i = 2Empirical results for various classes of games can be explained in accordance with this fairness model
Models from recent literature
What the FCC theory predicts for the dictator game:
Prediction with FCC is still s = 0 if 1< 0.5and s = 0.5 if 1> 0.5
while in empirical studies both 0 and 0.5 are the modal outcomes
Problem: LINEAR inequity aversionAnother consequence of linearity: In case of decision to sacrifice share k on the pie, the expected utility of any lottery for the size of a pie is the same as for the sure pie size in (linear) FCC.
Need: Concavity in the amount of advantageous inequality
Models from recent literature
2) Theory of Equity, Reciprocity and Competition [ERC] (Bolton, Ockenfels, 2000)
Agents maximize Vi = Vi(yi, i) (motivation function)where yi is their payoff andi = i(yi, c, n) is the relative payoff(c = yi total payoff)i = yi/c if c > 0 and 1/n otherwise
Under this utility function agents have narrowself-interest: Vi1 0, Vi11 0, Vi22 < 0, Vi2 = 0 for i = 1/n
Models from recent literature
Examples: Vi(ci, i) = aici – bi/2(i – 0.5)2
ai, bi >0 given constantsAdditively separable Vi(yi, i) = u(yi) – v(i)
u concave, v convex – given functions
Works for Dictator game (and many others)Also works under incomplete information:Response to proposal in the ultimatum game is done without knowing actual size of the pie
Models from recent literature
The dictator game is the simplest one – the decision is affected only by preferences of the decision-maker - we can study a single agent’s preferences separately
Risk: Only a probability distribution of the pie size is known to the dictator in the moment of decision. The decision is to give a percentage share on the actual pie to the recipient.
Example: Prenuptial agreement
Fairness under risk: Insights from dictator games
Pilot experiment:Dictator game with ex-ante unknown sizeof pie in two groups. Both have the same expected size but different variance (note: symmetric distributions were used).
Subjects asked to decide both absolute and relative part of the pie to transfer to the second player. They are also asked about the preference of one of the decision.
Fairness under risk: Insights from dictator games
Intuition:People would like to transfer part of the risk to the recipient Hypothesis 1: More preference for relative over absolute offers.
Dictator wants to get a risk premium Hypothesis 2: Lower offers in high variance treatment than in the low variance one.
Do the results conform to intuition?
Fairness under risk: Insights from dictator games
Results of the pilot experiment(25 subjects, CERGE 1st year students):
For group A (low variance, 13 subjects):4 decisions for absolute offer (risk captured by proposer)Average offers: 2108 absolutely
28% relatively (2506 expected value)
For group B (high variance, 12 subjects):1 decisions for absolute offerAverage offers: 1425 absolutely
17% relatively (1533 expected value)
Fairness under risk: Insights from dictator games
Theory modifications:Need - concave utility function
For the Fehr-Schmidt model, I can introduce exponent γ>1 and a concave function u into(note: higher share is always preferred to lower share by dictator, i.e. xdictator≥xrecipient always holds)
Ui(x) = u(xi) – i (xi-xk) (i k {1,2})
Let C be random variable for the size of pie and p be the decision of the dictator – the share on the pie transferred to the recipient
Fairness under risk: Insights from dictator games
For simplicity, let u(x)=sgn(r) xr , r<1, r≠0be an increasing concave CRRA function
Measurement of risk: E(C)
If EC1=EC2 then E(Ci) determines variance of Ci
(since Var Ci = E(Ci) – [E(Ci)])
Obviously, Var C1< Var C2 iff E(C1) < E(C2
).
Typically, also E(C1) < E(C2
) for any γ>1;E(C1
r) > E(C2r) for any r (0,1) and
E(C1r) < E(C2
r) for all r<0 (namely for symmetric distributions)
Fairness under risk: Insights from dictator games
Similarly, for the ERC model, dictator maximizes :
EV(p)= sgn(r) (1–p)r E(Cr) – (1–2p)
The solution: (1–2p)(1–p)r = r sgn(r)E(Cr)/(2γ)
The comparative statics:the left-hand side is decreasing in p (since γ>1, r<1)Dictator giving p is higher for lower variance treatments if r<0, it goes in the opposite direction if r (0,1)
Fairness under risk: Insights from dictator games
Remark: if r=0 … the corresponding CRRA function is u(x)=log x
Then, the dictator maximizes expected utility
EV(p)= log(1–p) + E(log C) – k(1–2p)
i.e. the solution does not depend on changes in the size of pie to be distributed in this situation.
Fairness under risk: Insights from dictator games
The solution for Fehr-Schmidt type model: (1–2p)(1–p)r = r sgn(r)E(Cr)/(2γE(C))
Left-hand side is decreasing in p (γ>1, r<1),i.e. the dictator giving is higher if the right-hand side is lower (the decision depends on parameters γ, r)
THE PAPER CONCLUDES:
Attitude to fairness is related with attitude to risk
Fairness under risk: Insights from dictator games
In the laboratory controlled conditions,computerized using z-Tree (Fischbacher, 1999)
• Experiments on risky dictator games to confirm the theory • Possible refinements using prospect theory
(arbitrary division among absolute and relative offer also measurable by a new experiment and testable)
Proposed experiments
Experiments about the distribution concern, working with efficiency gains
- important difference between Fehr-Schmidt and Bolton-Ockenfels models: if number of players n>2 then distribution matters only for inequity aversion in differences (Fehr-Schmidt)
- experimental evidence about total efficiency concern (Engelmann, Strobel, 2002 with n=3), social welfare model by Charness and Rabin, AER 2002.
Proposed experiments
My goal: to measure total efficiency concern against the distribution and own-payoff concerns
Source of funding: grant proposal
Experiments in Jena - effects of mutual shareholding on the level of inequity aversion
Hypothesis: stronger degrees of mutual shareholding weakens inequity aversion; comparison for dictator, ultimatum and market games - the weakest effect in market games
Proposed experiments
Evolutionary studies based on the evolution of preferences - Gueth, Yaari, 1992 - indirect evolutionary approach
Principle: The game G (game of life) consist from a composition of predefined different games; 2 playersPreferences of agents depend on parameter R(, ’) is the payoff of player with -preferences whenshe is involved in the game G with ’-type player* is evolutionarily stable type if R(*, *)> R(, *)for any *
Modelling the “game of life”
- evolution of risk attitudes on a habitat of 2x2 games
Baseline: Strobel, 2001 showed advantage of risk-loving attitudes for a class of chicken games
Engelmann, 2003 proved advantage of risk-aversion for another class of 2x2 games (with mixed strategiesequilibrium only)
Goal: for an arbitrary mix of 2x2 games prove theexistence and uniqueness theorem for evolutionary stableparameter of risk aversion for CRRA utilities;comparative statics of the resulting parameter on the composition of the game of life
Modelling the “game of life”
Similar approach: evolution of fairness attitudes under mutual shareholding in the habitat composedfrom three types of interactions - dictator, ultimatumand market games.
The aim: dependence on the results of evolutiondepending on the composition of the habitat (influence of different mixtures of games on resulting risk and fairness attitudes)
Preliminary results: border fairness attitude for dictatorand ultimatum games; interior evolutionary stable inequity aversion parameter resulting from the market game
Modelling the “game of life”
DISCUSSION
• Comments
• Suggestions
• Questions