Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Finite-Time Analysis of Kernelised Contextual Bandits

About

We tackle the problem of online reward maximisation over a large finite set of actions described by their contexts. We focus on the case when the number of actions is too big to sample all of them even once. However we assume that we have access to the similarities between actions' contexts and that the expected reward is an arbitrary linear function of the contexts' images in the related reproducing kernel Hilbert space (RKHS). We propose KernelUCB, a kernelised UCB algorithm, and give a cumulative regret bound through a frequentist analysis. For contextual bandits, the related algorithm GP-UCB turns out to be a special case of our algorithm, and our finite-time analysis improves the regret bound of GP-UCB for the agnostic case, both in the terms of the kernel-dependent quantity and the RKHS norm of the reward function. Moreover, for the linear kernel, our regret bound matches the lower bound for contextual linear bandits.

Michal Valko, Nathaniel Korda, Remi Munos, Ilias Flaounas, Nelo Cristianini• 2013

Related benchmarks

TaskDatasetResultRank
Contextual BanditsYelp
Cumulative Regret4.87e+3
7
Contextual BanditsMovieLens
Cumulative Regret1.72e+3
7
Contextual BanditsMNIST
Cumulative Regret7.64e+3
7
Contextual BanditsDisin
Cumulative Regret8.22e+3
7
Contextual BanditContextual Bandit Theoretical Bounds
Regret Scaling38
6
Sleep Stage ClassificationSleep-EDF Database Expanded (final 200 rounds)
Accuracy61.6
3
Showing 6 of 6 rows

Other info

Follow for update