识别复杂系统中用于分类的显著特征

S. Shahrestani
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引用次数: 0

摘要

研究了复杂系统中模式的分类问题。它描述了一种模式识别方法,该方法产生了完整可靠的分类技术。需要指出的是,现有的大多数模式识别方法都是从识别不同类别的成员之间的相似性开始其分类行为的。相比之下,这里报告的工作从识别遇到的模式的独特特征开始。建议将模式以特定的方式聚类,以便于探索其独特的特征。这个过程不依赖于启发式规则的使用。然后,不同类的成员将基于某些或所有这些特征的不同值。本文还将建立,通过利用独特的特征,可以实现所有模式的完整分类,即使是复杂的系统。
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Identification of distinctive features for classification in complex systems
This paper deals with the problem of classifying patterns encountered in complex systems. It describes an approach to pattern recognition that results in a complete and reliable classification technique. It is noted that the majority of existing pattern recognition methods initiate their classification acts on identification of similarities between the members of various classes. On contrast, the work reported here, starts with the recognition of distinctive features of encountered patterns. It is proposed that the patterns to be clustered in a particular fashion to facilitate the exploration of their distinctive features. The process does not depend on utilization of heuristic rules. The membership of different classes will then be based on different values for some or all of such features. This paper will also establish that by utilizing the distinctive features complete classification of all patterns, even for complex systems, can be achieved.
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