DocumentCode :
56605
Title :
Distributed Online Learning via Cooperative Contextual Bandits
Author :
Tekin, Cem ; Van der Schaar, Mihaela
Author_Institution :
Dept. of Electr. Eng., Univ. of California, Los Angeles (UCLA), Los Angeles, CA, USA
Volume :
63
Issue :
14
fYear :
2015
fDate :
15-Jul-15
Firstpage :
3700
Lastpage :
3714
Abstract :
In this paper, we propose a novel framework for decentralized, online learning by many learners. At each moment of time, an instance characterized by a certain context may arrive to each learner; based on the context, the learner can select one of its own actions (which gives a reward and provides information) or request assistance from another learner. In the latter case, the requester pays a cost and receives the reward but the provider learns the information. In our framework, learners are modeled as cooperative contextual bandits. Each learner seeks to maximize the expected reward from its arrivals, which involves trading off the reward received from its own actions, the information learned from its own actions, the reward received from the actions requested of others and the cost paid for these actions-taking into account what it has learned about the value of assistance from each other learner. We develop distributed online learning algorithms and provide analytic bounds to compare the efficiency of these with algorithms with the complete knowledge (oracle) benchmark (in which the expected reward of every action in every context is known by every learner). Our estimates show that regret-the loss incurred by the algorithm-is sublinear in time. Our theoretical framework can be used in many practical applications including Big Data mining, event detection in surveillance sensor networks and distributed online recommendation systems.
Keywords :
Big Data; computer aided instruction; data mining; groupware; recommender systems; assistance value; big data mining; cooperative contextual bandits; decentralized learning; distributed online learning algorithms; distributed online recommendation systems; event detection; knowledge benchmark; multiuser learning; surveillance sensor networks; Algorithm design and analysis; Benchmark testing; Context; Partitioning algorithms; Security; Signal processing algorithms; Training; Contextual bandits; cooperative learning; distributed learning; multi-user bandits; multi-user learning; online learning;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2015.2430837
Filename :
7103356
Link To Document :
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