Multiplayer Bandit Learning - From Competition to Cooperation

APA

(2020). Multiplayer Bandit Learning - From Competition to Cooperation. The Simons Institute for the Theory of Computing. https://simons.berkeley.edu/talks/multiplayer-bandit-learning-competition-cooperation

MLA

Multiplayer Bandit Learning - From Competition to Cooperation. The Simons Institute for the Theory of Computing, Oct. 29, 2020, https://simons.berkeley.edu/talks/multiplayer-bandit-learning-competition-cooperation

BibTex

          @misc{ scivideos_16704,
            doi = {},
            url = {https://simons.berkeley.edu/talks/multiplayer-bandit-learning-competition-cooperation},
            author = {},
            keywords = {},
            language = {en},
            title = {Multiplayer Bandit Learning - From Competition to Cooperation},
            publisher = {The Simons Institute for the Theory of Computing},
            year = {2020},
            month = {oct},
            note = {16704 see, \url{https://scivideos.org/Simons-Institute/16704}}
          }
          
Simina Branzei (Purdue University)
Source Repository Simons Institute

Abstract

The stochastic multi-armed bandit model captures the tradeoff between exploration and exploitation. We study the effects of competition and cooperation on this tradeoff. Suppose there are k arms and two players, Alice and Bob. In every round, each player pulls an arm, receives the resulting reward, and observes the choice of the other player but not their reward. Alice's utility is ΓA+λΓB (and similarly for Bob), where ΓA is Alice's total reward and λ∈[−1,1] is a cooperation parameter. At λ=−1 the players are competing in a zero-sum game, at λ=1, they are fully cooperating, and at λ=0, they are neutral: each player's utility is their own reward. The model is related to the economics literature on strategic experimentation, where usually players observe each other's rewards. With discount factor β, the Gittins index reduces the one-player problem to the comparison between a risky arm, with a prior μ, and a predictable arm, with success probability p. The value of p where the player is indifferent between the arms is the Gittins index g=g(μ,β)>m, where m is the mean of the risky arm. We show that competing players explore less than a single player: there is p∗∈(m,g) so that for all p>p∗, the players stay at the predictable arm. However, the players are not myopic: they still explore for some p>m. On the other hand, cooperating players explore more than a single player. We also show that neutral players learn from each other, receiving strictly higher total rewards than they would playing alone, for all p∈(p∗,g), where p∗ is the threshold from the competing case. Finally, we show that competing and neutral players eventually settle on the same arm in every Nash equilibrium, while this can fail for cooperating players. This is based on a joint work with Yuval Peres.