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Improving Regret Bounds for Combinatorial Semi-Bandits with Probabilistically Triggered Arms and Its Applications (1703.01610v5)

Published 5 Mar 2017 in cs.LG and stat.ML

Abstract: We study combinatorial multi-armed bandit with probabilistically triggered arms (CMAB-T) and semi-bandit feedback. We resolve a serious issue in the prior CMAB-T studies where the regret bounds contain a possibly exponentially large factor of $1/p*$, where $p*$ is the minimum positive probability that an arm is triggered by any action. We address this issue by introducing a triggering probability modulated (TPM) bounded smoothness condition into the general CMAB-T framework, and show that many applications such as influence maximization bandit and combinatorial cascading bandit satisfy this TPM condition. As a result, we completely remove the factor of $1/p*$ from the regret bounds, achieving significantly better regret bounds for influence maximization and cascading bandits than before. Finally, we provide lower bound results showing that the factor $1/p*$ is unavoidable for general CMAB-T problems, suggesting that the TPM condition is crucial in removing this factor.

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Authors (2)
  1. Qinshi Wang (4 papers)
  2. Wei Chen (1290 papers)
Citations (82)

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