逻辑谓词方法框架下人工智能问题粗解的公式偏序实现

T. Kosovskaya
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引用次数: 2

摘要

这篇论文是对作者在CSIT-2017会议上的一份报告中提出的问题的回答:是否有可能改变逻辑谓词网络,以便不仅识别来自训练集的描述的对象,而且与它们略有不同。作者之前引入的谓词公式的部分序列的概念使得改变网络单元的内容成为可能,从而可以计算出可识别对象片段与训练集中对象片段的相似度,然后计算出该对象属于给定类的确定性程度。本文简要介绍了人工智能问题的逻辑谓词方法、逻辑谓词网络的相关信息、部分序列的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Formula Partial Sequence for Rough Solution of AI Problems in the Framework of the Logic-Predicate Approach
The paper is the answer to the question posed to the author during a report at the CSIT-2017 conference: whether it is possible to change a logic-predicate network so that not only objects with descriptions from the training set are recognized, but also differ slightly from them. The notion of partial sequence of a predicate formula, introduced by the author earlier, makes it possible to change the content of network cells so that the degree of similarity of a recognizable object fragment to fragments of objects from the training set, and then the degree of certainty that the object belongs to a given class, is calculated. A brief description of the logic-predicate approach to AI problems, the information about a logic-predicate network, the notion of partial sequence are presented in the paper.
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