articleDec 12, 2011Closed access

Improved Algorithms for Linear Stochastic Bandits

University of Alberta

Abstract

We improve the theoretical analysis and empirical performance of algorithms for the stochastic multi-armed bandit problem and the linear stochastic multi-armed bandit problem. In particular, we show that a simple modification of Auer’s UCB algorithm (Auer, 2002) achieves with high probability constant regret. More importantly, we modify and, consequently, improve the analysis of the algorithm for the for linear stochastic bandit problem studied by Auer (2002), Dani et al. (2008), Rusmevichientong and Tsitsiklis (2010), Li et al. (2010). Our modification improves the regret bound by a logarithmic factor, though experiments show a vast improvement. In both cases, the improvement stems from the construction of…

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912
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24.56
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100%
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30
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Authors

3

Topics & keywords

Keywords
  • Regret
  • Logarithm
  • Computer science
  • Constant (computer programming)
  • Simple (philosophy)
  • Algorithm
  • Mathematical optimization
  • Multi-armed bandit
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