非参数上下文随机搜索

A. Abdolmaleki, N. Lau, Luis Paulo Reis, G. Neumann
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引用次数: 3

摘要

随机搜索算法是目标函数的黑盒优化器。由于其易用性和通用性,近年来在机器人运动技能的运筹学、机器学习和政策搜索方面受到了广泛关注。然而,如果任务或目标函数发生轻微变化以使解决方案适应新情况或新背景,许多随机搜索算法需要重新学习。在本文中,我们考虑上下文随机搜索设置。在这里,我们想为多个相关任务找到多个好的参数向量,其中每个任务由一个连续的上下文向量描述。因此,对于任务或上下文的每个参数向量评估,目标函数可能会略有变化。上下文算法已经在策略搜索领域进行了研究,然而,搜索分布通常使用参数模型,该模型在一些手工定义的上下文特征中是线性的。寻找好的上下文特征是一项具有挑战性的任务,因此,非参数方法通常比参数方法更受欢迎。本文提出了一种能够同时学习多个任务的非参数搜索分布的非参数上下文随机搜索算法。与现有方法不同的是,我们的方法还可以学习上下文相关的协方差矩阵,指导搜索过程的探索。我们说明了它在几个非线性上下文任务中的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-parametric contextual stochastic search
Stochastic search algorithms are black-box optimizer of an objective function. They have recently gained a lot of attention in operations research, machine learning and policy search of robot motor skills due to their ease of use and their generality. Yet, many stochastic search algorithms require relearning if the task or objective function changes slightly to adapt the solution to the new situation or the new context. In this paper, we consider the contextual stochastic search setup. Here, we want to find multiple good parameter vectors for multiple related tasks, where each task is described by a continuous context vector. Hence, the objective function might change slightly for each parameter vector evaluation of a task or context. Contextual algorithms have been investigated in the field of policy search, however, the search distribution typically uses a parametric model that is linear in the some hand-defined context features. Finding good context features is a challenging task, and hence, non-parametric methods are often preferred over their parametric counter-parts. In this paper, we propose a non-parametric contextual stochastic search algorithm that can learn a non-parametric search distribution for multiple tasks simultaneously. In difference to existing methods, our method can also learn a context dependent covariance matrix that guides the exploration of the search process. We illustrate its performance on several non-linear contextual tasks.
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