LGMLNov 16, 2020

DART: aDaptive Accept RejecT for non-linear top-K subset identification

arXiv:2011.07687v24 citations
Originality Incremental advance
AI Analysis

This addresses the problem of efficient subset selection in bandit settings with non-linear rewards for applications like cross-selling optimization, though it builds incrementally on existing combinatorial bandit frameworks.

The paper tackles the combinatorial bandit problem of selecting K out of N arms with non-linear and correlated rewards, presenting the DART algorithm that achieves a regret bound of Õ(K√(KNT)) matching the lower bound up to a logarithmic factor.

We consider the bandit problem of selecting $K$ out of $N$ arms at each time step. The reward can be a non-linear function of the rewards of the selected individual arms. The direct use of a multi-armed bandit algorithm requires choosing among $\binom{N}{K}$ options, making the action space large. To simplify the problem, existing works on combinatorial bandits {typically} assume feedback as a linear function of individual rewards. In this paper, we prove the lower bound for top-$K$ subset selection with bandit feedback with possibly correlated rewards. We present a novel algorithm for the combinatorial setting without using individual arm feedback or requiring linearity of the reward function. Additionally, our algorithm works on correlated rewards of individual arms. Our algorithm, aDaptive Accept RejecT (DART), sequentially finds good arms and eliminates bad arms based on confidence bounds. DART is computationally efficient and uses storage linear in $N$. Further, DART achieves a regret bound of $\tilde{\mathcal{O}}(K\sqrt{KNT})$ for a time horizon $T$, which matches the lower bound in bandit feedback up to a factor of $\sqrt{\log{2NT}}$. When applied to the problem of cross-selling optimization and maximizing the mean of individual rewards, the performance of the proposed algorithm surpasses that of state-of-the-art algorithms. We also show that DART significantly outperforms existing methods for both linear and non-linear joint reward environments.

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