信息分析系统中企业知识构建模型的启发式方法

V. Bova, V. Kureichik, D. Zaruba
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引用次数: 4

摘要

在智能信息与分析系统中,最具发展前景的领域之一是利用本体系统化来构建知识库,作为企业知识分类的工具。作者从领域本体的角度解释了一个能力模型,该模型可以选择可分类对象的显著特征。为了对企业对象进行分类,提出了一种多维特征空间知识聚类的启发式方法,该方法利用遗传算法根据已知的分类准则获得分类过程的有效解。遗传算法是一种迭代概率搜索算法,其主要特点是同时使用一组来自潜在解空间的种群。该方法的一个优点是保证所有聚类没有交集,并且需要定义聚类的数量。在测试任务的基础上进行了实验,验证了该方法的理论相关性和应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heuristic approach to model of corporate knowledge construction in information and analytical systems
Concerning intelligent information and analytical systems one of the most prospective areas is the construction of knowledge bases used ontological systematization as a tool for classification of corporate knowledge. The authors interpret a competence model, which can select significant features of classifiable objects, in terms of domain ontology. To classify corporate objects it is suggested a heuristic method of knowledge clusterization in multidimensional feature space in which a genetic algorithm is used to obtain effective solutions for classification procedure according to well-known criteria. The genetic algorithm is an iterative probabilistic search algorithm whose main feature is simultaneous using of a set of population from the space of potential solutions. A certain advantage of the method is guaranteed lack of intersections for all clusters and necessary to define the number of clusters. Experimental results were carried out on the basis of test tasks and confirmed a theoretical relevance and promising of the suggested method.
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