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arxiv: 2304.07861 · v1 · pith:5P5XMDY6new · submitted 2023-04-16 · 🧮 math.OC

Stochastic Adversarial Noise in the "Black Box" Optimization Problem

classification 🧮 math.OC
keywords blacknoiseproblemstochasticadversarialconvergencegradient-freelevel
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This paper is devoted to the study of the solution of a stochastic convex black box optimization problem. Where the black box problem means that the gradient-free oracle only returns the value of objective function, not its gradient. We consider non-smooth and smooth setting of the solution to the black box problem under adversarial stochastic noise. For two techniques creating gradient-free methods: smoothing schemes via $L_1$ and $L_2$ randomizations, we find the maximum allowable level of adversarial stochastic noise that guarantees convergence. Finally, we analyze the convergence behavior of the algorithms under the condition of a large value of noise level.

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