Distributed Learning in Multi-Armed Bandit with Multiple Players

Mathematics – Optimization and Control

Scientific paper

Rate now

  [ 0.00 ] – not rated yet Voters 0   Comments 0

Details

31 pages, 8 figures, revised paper submitted to IEEE Transactions on Signal Processing, April, 2010, the pre-agreement in the

Scientific paper

We formulate and study a decentralized multi-armed bandit (MAB) problem. There are M distributed players competing for N independent arms. Each arm, when played, offers i.i.d. reward according to a distribution with an unknown parameter. At each time, each player chooses one arm to play without exchanging observations or any information with other players. Players choosing the same arm collide, and, depending on the collision model, either no one receives reward or the colliding players share the reward in an arbitrary way. We show that the minimum system regret of the decentralized MAB grows with time at the same logarithmic order as in the centralized counterpart where players act collectively as a single entity by exchanging observations and making decisions jointly. A decentralized policy is constructed to achieve this optimal order while ensuring fairness among players and without assuming any pre-agreement or information exchange among players. Based on a Time Division Fair Sharing (TDFS) of the M best arms, the proposed policy is constructed and its order optimality is proven under a general reward model. Furthermore, the basic structure of the TDFS policy can be used with any order-optimal single-player policy to achieve order optimality in the decentralized setting. We also establish a lower bound on the system regret growth rate for a general class of decentralized polices, to which the proposed policy belongs. This problem finds potential applications in cognitive radio networks, multi-channel communication systems, multi-agent systems, web search and advertising, and social networks.

No associations

LandOfFree

Say what you really think

Search LandOfFree.com for scientists and scientific papers. Rate them and share your experience with other people.

Rating

Distributed Learning in Multi-Armed Bandit with Multiple Players does not yet have a rating. At this time, there are no reviews or comments for this scientific paper.

If you have personal experience with Distributed Learning in Multi-Armed Bandit with Multiple Players, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Distributed Learning in Multi-Armed Bandit with Multiple Players will most certainly appreciate the feedback.

Rate now

     

Profile ID: LFWR-SCP-O-463899

  Search
All data on this website is collected from public sources. Our data reflects the most accurate information available at the time of publication.