Distributed exploration in Multi-Armed Bandits

Eshcar Hillel, Zohar Karnin, Tomer Koren, Ronny Lempel, Oren Somekh

Research output: Contribution to journalConference articlepeer-review

65 Scopus citations

Abstract

We study exploration in Multi-Armed Bandits in a setting where κ players collaborate in order to identify an ε-optimal arm. Our motivation comes from recent employment of bandit algorithms in computationally intensive, large-scale applications. Our results demonstrate a non-trivial tradeoff between the number of arm pulls required by each of the players, and the amount of communication between them. In particular, our main result shows that by allowing the κ players to communicate only once, they are able to learn √ κ times faster than a single player. That is, distributing learning to k players gives rise to a factor √ κ parallel speedup. We complement this result with a lower bound showing this is in general the best possible. On the other extreme, we present an algorithm that achieves the ideal factor κ speed-up in learning performance, with communication only logarithmic in 1=ε.

Original languageEnglish
JournalAdvances in Neural Information Processing Systems
StatePublished - 2013
Externally publishedYes
Event27th Annual Conference on Neural Information Processing Systems, NIPS 2013 - Lake Tahoe, NV, United States
Duration: 5 Dec 201310 Dec 2013

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