VARIANTS FOR IMPLEMENTING MACHINE LEARNING WITH REINFORCEMENT IN THE ANYLOGIC PROGRAM

M. S. Рrоkоfiеvа, S. A. Andronov
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Abstract

Artificial intelligence methods are widely applied in the detection of type problems. There are many variations of machine learning, among which reinforcement learning occupies a special place. At present, there is no answer to the teacher's question, but there is a response from the environment. Such environments can be real (for example, on random roads, in confined airspace, or on a training assembly line) or natural. Simulation software tools allow you to create realistic artificial intelligence environments, safely train and test learning agents. Including such approaches to solving various business problems. This article is devoted to the analysis of implementation options for a coupling simulation model with machine learning with reinforcement, used in the proposed software product, to identify their features, shortcomings and shortcomings.
在anylogic程序中实现强化机器学习的变体
人工智能方法在类型问题检测中得到了广泛的应用。机器学习有很多变体,其中强化学习占有特殊的地位。目前,老师的问题没有答案,但有来自环境的回应。这样的环境可以是真实的(例如,在随机的道路上,在密闭的空间里,或者在训练装配线上),也可以是自然的。仿真软件工具允许您创建逼真的人工智能环境,安全地训练和测试学习代理。包括解决各种业务问题的方法。本文致力于分析在提议的软件产品中使用的具有机器学习和强化的耦合仿真模型的实现选项,以确定其特征,缺点和缺点。
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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