A Discrete Version of CMA-ES

E. Benhamou, J. Atif, R. Laraki, A. Auger
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引用次数: 5

Abstract

Modern machine learning uses more and more advanced optimization techniques to find optimal hyper parameters. Whenever the objective function is non-convex, non continuous and with potentially multiple local minima, standard gradient descent optimization methods fail. A last resource and very different method is to assume that the optimum(s), not necessarily unique, is/are distributed according to a distribution and iteratively to adapt the distribution according to tested points. These strategies originated in the early 1960s, named Evolution Strategy (ES) have culminated with the CMA-ES (Covariance Matrix Adaptation) ES. It relies on a multi variate normal distribution and is supposed to be state of the art for general optimization program. However, it is far from being optimal for discrete variables. In this paper, we extend the method to multivariate binomial correlated distributions. For such a distribution, we show that it shares similar features to the multi variate normal: independence and correlation is equivalent and correlation is efficiently modeled by interaction between different variables. We discuss this distribution in the framework of the exponential family. We prove that the model can estimate not only pairwise interactions among the two variables but also is capable of modeling higher order interactions. This allows creating a version of CMA ES that can accomodate efficiently discrete variables. We provide the corresponding algorithm and conclude.
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CMA-ES的离散版本
现代机器学习使用越来越先进的优化技术来寻找最优超参数。当目标函数是非凸的、不连续的并且可能有多个局部极小值时,标准的梯度下降优化方法就会失败。最后一个资源和非常不同的方法是假设最优(s),不一定是唯一的,是根据一个分布分布的,并根据测试点迭代地调整分布。这些策略起源于20世纪60年代初,被称为进化策略(ES),并以CMA-ES(协方差矩阵适应)ES达到高潮。它依赖于多变量正态分布,被认为是最先进的一般优化方案。然而,对于离散变量,它远不是最佳的。本文将该方法推广到多元二项相关分布。对于这样的分布,我们表明它具有与多变量正态分布相似的特征:独立性和相关性是等价的,并且通过不同变量之间的相互作用有效地建模相关性。我们在指数族的框架下讨论这种分布。我们证明了该模型不仅可以估计两个变量之间的成对相互作用,而且能够模拟高阶相互作用。这允许创建一个版本的CMA ES,可以有效地适应离散变量。给出了相应的算法并得出结论。
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