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Efficient Lipschitzian Global Optimization of Hölder Continuous Multivariate Functions

2023-03-24Unverified0· sign in to hype

Kaan Gokcesu, Hakan Gokcesu

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Abstract

This study presents an effective global optimization technique designed for multivariate functions that are H\"older continuous. Unlike traditional methods that construct lower bounding proxy functions, this algorithm employs a predetermined query creation rule that makes it computationally superior. The algorithm's performance is assessed using the average or cumulative regret, which also implies a bound for the simple regret and reflects the overall effectiveness of the approach. The results show that with appropriate parameters the algorithm attains an average regret bound of O(T^-n) for optimizing a H\"older continuous target function with H\"older exponent in an n-dimensional space within a given time horizon T. We demonstrate that this bound is minimax optimal.

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