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arxiv: 1306.4653 · v4 · pith:JTC76LYQnew · submitted 2013-06-19 · 💻 cs.LG

Multiarmed Bandits With Limited Expert Advice

classification 💻 cs.LG
keywords regretadvicealgorithmbanditsbigpboundexpertexperts
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We solve the COLT 2013 open problem of \citet{SCB} on minimizing regret in the setting of advice-efficient multiarmed bandits with expert advice. We give an algorithm for the setting of K arms and N experts out of which we are allowed to query and use only M experts' advices in each round, which has a regret bound of \tilde{O}\bigP{\sqrt{\frac{\min\{K, M\} N}{M} T}} after T rounds. We also prove that any algorithm for this problem must have expected regret at least \tilde{\Omega}\bigP{\sqrt{\frac{\min\{K, M\} N}{M}T}}, thus showing that our upper bound is nearly tight.

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