MACHINE LEARNING OF ARTIFICIAL INTELLIGENCE AGENTS ON ASSOCIATIVE HETERARCHICAL MEMORY

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Abstract

Natural language processing is an essential task for the whole field of artificial intelligence. To solve this problem, the authors proposed a new mathematical form, so called associative-heterarchical memory, based on the concept of hypergraph. Machine learning is a widely used method of artificial intelligence, especially when humans cannot determine patterns and frequencies of output values when viewing the data. Machine learning is best applicable for such tasks. Associative-heterarchical memory can also be applied to machine learning, and several methods (learning with a teacher, learning without a teacher, reinforcement learning) can be used to optimize the performance of associative-heterarchical memory-based artificial intelligence agents and perform required tasks. The output of such programs can be semantic or logical. Thus, machine learning is an important part of thewhole structure of associative-heterarchical memory. This article is devoted to interaction between associative-heterarchical memory and machine learning methods. Later on, the team of authors plans to write an additional article describing the output method using activation focus. This article will be of interest to experts in the area of artificial intelligence and mathematicians.
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联想层次记忆下的人工智能代理机器学习
自然语言处理是整个人工智能领域的一项重要任务。为了解决这一问题,作者在超图概念的基础上提出了一种新的数学形式——联想-层次记忆。机器学习是一种广泛使用的人工智能方法,特别是当人类在查看数据时无法确定输出值的模式和频率时。机器学习最适用于这类任务。联想-层次记忆也可以应用于机器学习,有几种方法(有老师学习、无老师学习、强化学习)可以用来优化基于联想-层次记忆的人工智能代理的性能,并执行所需的任务。这些程序的输出可以是语义的,也可以是逻辑的。因此,机器学习是联想-层次记忆整个结构的重要组成部分。本文致力于联想-层次记忆和机器学习方法之间的相互作用。稍后,作者团队计划编写另外一篇文章,描述使用激活焦点的输出方法。这篇文章将会引起人工智能领域的专家和数学家的兴趣。
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