Online function minimization with convex random relu expansions

Laurens Bliek, M. Verhaegen, S. Wahls
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引用次数: 5

Abstract

We propose CDONE, a convex version of the DONE algorithm. DONE is a derivative-free online optimization algorithm that uses surrogate modeling with noisy measurements to find a minimum of objective functions that are expensive to evaluate. Inspired by their success in deep learning, CDONE makes use of rectified linear units, together with a nonnegativity constraint to enforce convexity of the surrogate model. This leads to a sparse and cheap to evaluate surrogate model of the unknown optimization objective that is still accurate and that can be minimized with convex optimization algorithms. The CDONE algorithm is demonstrated on a toy example and on the problem of hyper-parameter optimization for a deep learning example on handwritten digit classification.
凸随机relu展开的在线函数最小化
我们提出了CDONE, DONE算法的凸版本。DONE是一种无导数的在线优化算法,它使用带有噪声测量的代理建模来找到评估代价昂贵的目标函数的最小值。受他们在深度学习方面的成功启发,CDONE利用整流线性单元,以及非负性约束来增强代理模型的凸性。这导致了一个稀疏和廉价的评估未知优化目标的代理模型,它仍然是准确的,并且可以用凸优化算法最小化。通过一个简单的例子和一个手写体数字分类的深度学习实例,对CDONE算法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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