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Game Theory: introduction and applications to computer networks Game Theory: introduction and applications to computer networks Lecture 2: two-person non.

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Presentation on theme: "Game Theory: introduction and applications to computer networks Game Theory: introduction and applications to computer networks Lecture 2: two-person non."— Presentation transcript:

1 Game Theory: introduction and applications to computer networks Game Theory: introduction and applications to computer networks Lecture 2: two-person non zero-sum games (part A) Giovanni Neglia INRIA – EPI Maestro 14 December 2009 Slides are based on a previous course with D. Figueiredo (UFRJ) and H. Zhang (Suffolk University)

2 Outline r Two-person zero-sum games m Matrix games Pure strategy equilibria (dominance and saddle points), ch 2 Mixed strategy equilibria, ch 3 m Game trees, ch 7 m About utility, ch 9 r Two-person non-zero-sum games m Nash equilibria… …And its limits (equivalence, interchangeability, Prisoner’s dilemma), ch. 11 and 12 m Strategic games, ch. 14 m Subgame Perfect Nash Equilibria (not in the book) m Repeated Games, partially in ch. 12 m Evolutionary games, ch. 15 r N-persons games

3 References r Main one: m Straffin, Game Theory and Strategy, The mathematical association of America r Subjects not covered by Straffin: m Osborne and Rubinstein, A course in game theory, MIT Press

4 Two-person Non-zero Sum Games r Players are not strictly opposed m payoff sum is non-zero AB A3, 42, 0 B5, 1-1, 2 Player 1 Player 2 r Situations where interest is not directly opposed m players could cooperate m communication may play an important role for the moment assume no communication is possible

5 What do we keep from zero-sum games? r Dominance r Movement diagram m pay attention to which payoffs have to be considered to decide movements r Enough to determine pure strategies equilibria m but still there are some differences (see after) AB A5, 42, 0 B3, 1-1, 2 Player 1 Player 2

6 What can we keep from zero-sum games? r As in zero-sum games, pure strategies equilibria do not always exist… r …but we can find mixed strategies equilibria AB A5, 0-1, 4 B3, 22, 1 Player 1 Player 2

7 Mixed strategies equilibria r Same idea of equilibrium m each player plays a mixed strategy (equalizing strategy), that equalizes the opponent payoffs m how to calculate it? AB A5, 0-1, 4 B3, 22, 1 Rose Colin

8 Mixed strategies equilibria r Same idea of equilibrium m each player plays a mixed strategy, that equalizes the opponent payoffs m how to calculate it? AB A-0-4 B-2 Rose Colin Rose considers Colin’s game 4 1 1/5 4/5

9 Mixed strategies equilibria r Same idea of equilibrium m each player plays a mixed strategy, that equalizes the opponent payoffs m how to calculate it? AB A5 B32 Rose Colin Colin considers Rose’s game 3/5 2/5

10 Mixed strategies equilibria r Same idea of equilibrium m each player plays a mixed strategy, that equalizes the opponent payoffs m how to calculate it? AB A5, 0-1, 4 B3, 22, 1 Rose Colin Rose playing (1/5,4/5) Colin playing (3/5,2/5) is an equilibrium Rose gains 13/5 Colin gains 8/5

11 Good news: Nash’s theorem [1950] r Every two-person games has at least one equilibrium either in pure strategies or in mixed strategies m Proved using fixed point theorem m generalized to N person game r This equilibrium concept called Nash equilibrium in his honor m A vector of strategies (a profile) is a Nash Equilibrium (NE) if no player can unilaterally change its strategy and increase its payoff

12 An useful property r Given a finite game, a profile is a mixed NE of the game if and only if for every player i, every pure strategy used by i with non-null probability is a best response to other players mixed strategies in the profile m see Osborne and Rubinstein, A course in game theory, Lemma 33.2

13 Bad news: what do we lose? r equivalence r interchangeability r identity of equalizing strategies with prudential strategies r main cause m at equilibrium every player is considering the opponent’s payoffs ignoring its payoffs. r New problematic aspect m group rationality versus individual rationality (cooperation versus competition) m absent in zero-sum games  we lose the idea of the solution

14 Game of Chicken 2 2 r Game of Chicken (aka. Hawk-Dove Game) m driver who swerves looses swervestay swerve0, 0-1, 5 stay5, -1-10, -10 Driver 1 Driver 2 Drivers want to do opposite of one another Two equilibria: not equivalent not interchangeable! playing an equilibrium strategy does not lead to equilibrium

15 Prudential strategies r Each player tries to minimize its maximum loss (then it plays in its own game) AB A5, 0-1, 4 B3, 22, 1 Rose Colin

16 Prudential strategies r Rose assumes that Colin would like to minimize her gain r Rose plays in Rose’s game r Saddle point in BB r B is Rose’s prudential strategy and guarantees to Rose at least 2 (Rose’s security level) AB A5 B32 Rose Colin

17 Prudential strategies r Colin assumes that Rose would like to minimize his gain (maximize his loss) r Colin plays in Colin’s game r mixed strategy equilibrium, r (3/5,2/5) is Colin’s prudential strategy and guarantees Colin a gain not smaller than 8/5 AB A0-4 B-2 Rose Colin

18 Prudential strategies r Prudential strategies m Rose plays B, Colin plays A w. prob. 3/5, B w. 2/5 m Rose gains 13/5 (>2), Colin gains 8/5 r Is it stable? m No, if Colin thinks that Rose plays B, he would be better off by playing A (Colin’s counter-prudential strategy) AB A5, 0-1, 4 B3, 22, 1 Rose Colin

19 Prudential strategies r are not the solution neither: m do not lead to equilibria m do not solve the group rationality versus individual rationality conflict r dual basic problem: m look at your payoff, ignoring the payoffs of the opponents

20 The Prisoner’s Dilemma r One of the most studied and used games m proposed in 1950 r Two suspects arrested for joint crime m each suspect when interrogated separately, has option to confess NCC 2, 210, 1 C1, 105, 5 Suspect 1 Suspect 2 payoff is years in jail (smaller is better) single NE better outcome

21 Pareto Optimal NCC 2, 210, 1 C1, 105, 5 Suspect 1 Suspect 2 r Def: outcome o* is Pareto Optimal if no other outcome would give to all the players a payoff not smaller and a payoff higher to at least one of them r Pareto Principle: to be acceptable as a solution of a game, an outcome should be Pareto Optimal o the NE of the Prisoner’s dilemma is not! r Conflict between group rationality (Pareto principle) and individual rationality (dominance principle) Pareto Optimal

22 Payoff polygon r All the points in the convex hull of the pure strategy payoffs correspond to payoffs obtainable by mixed strategies r The north-east boundary contains the Pareto optimal points AB A5, 0-1, 4 B3, 22, 1 Rose Colin A,A B,A A,B B,B NE Rose’s payoff Colin’s payoff

23 Exercises r Find NE and Pareto optimal outcomes: NCC 2, 210, 1 C1, 105, 5 AB A2, 33, 2 B1, 00, 1 swervestay swerve0, 0-1, 5 stay5, -1-10, -10 AB A2, 41, 0 B3, 10, 4


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