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Deep Metacyclic Parameter Search: Non-Convex optimization Based on Evolutionary Computing with a Few Twists

机译:深度元循环参数搜索:基于很少扭曲的进化计算的非凸优化

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This paper proposes a new framework for non-convex optimization referred to as Metacyclic Parameter Search (MEPS). The framework combines several approaches that are well known from the field of artificial intelligence-namely the iterative update of generations of candidate solutions prevalent in evolutionary computing and particle swarm optimization, as well as metacognitive approaches implementing reward-based improvement such as (deep) reinforcment learning-resulting in a gradient-free approach to non-convex optimization that combines the benefits (and alleviates the mutual shortcomings) of each of these individual approaches. Following an overview of the framework, its workings are demonstrated on three rudimentary examples.
机译:本文提出了一种新的非凸优化框架,称为元循环参数搜索(MEPS)。该框架结合了从人工智能领域众所周知的几种方法,即迭代更新在进化计算和粒子群优化中普遍存在的候选解决方案的代,以及实现基于奖励的改进(例如(深度)强化)的元认知方法。以无梯度方法进行非凸优化的学习结果,该方法结合了每种方法的优点(并减轻了相互的缺点)。在对该框架进行了概述之后,通过三个基本示例演示了其工作原理。

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