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      Multi-point Feedback of Bandit Convex Optimization with Hard Constraints

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          Abstract

          This paper studies bandit convex optimization with constraints, where the learner aims to generate a sequence of decisions under partial information of loss functions such that the cumulative loss is reduced as well as the cumulative constraint violation is simultaneously reduced. We adopt the cumulative \textit{hard} constraint violation as the metric of constraint violation, which is defined by Tt=1max{gt(xt),0}. Owing to the maximum operator, a strictly feasible solution cannot cancel out the effects of violated constraints compared to the conventional metric known as \textit{long-term} constraints violation. We present a penalty-based proximal gradient descent method that attains a sub-linear growth of both regret and cumulative hard constraint violation, in which the gradient is estimated with a two-point function evaluation. Precisely, our algorithm attains O(d2Tmax{c,1c}) regret bounds and O(d2T1c2) cumulative hard constraint violation bounds for convex loss functions and time-varying constraints, where d is the dimensionality of the feasible region and c[12,1) is a user-determined parameter. We also extend the result for the case where the loss functions are strongly convex and show that both regret and constraint violation bounds can be further reduced.

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          Author and article information

          Journal
          16 October 2023
          Article
          2310.10946
          eb625c45-7eba-475e-8c54-08cc2615eb30

          http://creativecommons.org/licenses/by/4.0/

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          cs.LG

          Artificial intelligence
          Artificial intelligence

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