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Data and knowledge classification in intelligence informational systems by the evolutionary method

机译:基于进化方法的情报信息系统中的数据和知识分类

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This article discusses the promising direction in the field of intelligence informational system such as knowledge bases development. These knowledge bases use ontology systemization as a tool for classification of domain objects. The developed model is able to select essential features of classifiable objects. To solve problems of classification and structuring of data and knowledge, we suggest a new evolutionary approach based on the arranging of knowledge objects with respect to the basic element inside of a multidimensional space of features. The basic element is denoted by the genetic algorithm (GA). This algorithm allows to obtain the effective solution of classification with the use of different types of basic element representation inside of multidimensional space and various classes ordering in sequence of ontology objects. The genetic algorithm is an iterative probabilistic heuristic search algorithm with simultaneous use of a variety of populations from alternative solution space.
机译:本文讨论了诸如知识库开发之类的智能信息系统领域的有前途的方向。这些知识库使用本体系统化作为领域对象分类的工具。开发的模型能够选择可分类对象的基本特征。为了解决数据和知识的分类和结构化问题,我们提出了一种新的进化方法,该方法基于知识对象相对于要素多维空间内部的基本元素的排列方式。基本元素由遗传算法(GA)表示。该算法允许使用多维空间内部的不同类型的基本元素表示以及按本体对象顺序排列的各种类来获得有效的分类解决方案。遗传算法是一种迭代概率启发式搜索算法,同时使用替代解决方案空间中的各种种群。

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