Multi-objective particle swarm optimization for ontology alignment

A. Semenova, V. Kureychik
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引用次数: 8

Abstract

In computer science design and implementation of high-tech areas in the modern society is accompanied by increasing the role of ontological knowledge base. Accumulation of shared ontologies is seen as a mechanism of unlimited knowledge acquisition about the world. However, the problem of integration, matching and alignment of ontologies is not solved yet. The problem of ontology alignment is to find such a structure and permissible parameters that provide the optimal values for one or more quality criteria. It should be noted that today there are many methods to compute the similarity between two discrete elements of different ontologies. Integration of up-to-date similarity computation techniques allows obtaining a versatile and accurate result. One of approach is based on the weights. Typically, the weights are assigned manually or by specific approaches. The main shortcoming of existing approaches is the lack of optimality. This article proposes a new combined approach for ontology alignment based on Latent Semantic Indexing and multi-objective particle swarm optimization method. For objective functions two criteria were chosen: the accuracy and recall. To obtain an optimal population the method of local search was employed to replace the worst of the population in the new generation. Experimental research of the suggested approach confirms the effectiveness of it.
本体对齐的多目标粒子群优化
在计算机科学的设计与实现中,伴随着现代社会高科技领域本体知识库的作用越来越大。共享本体的积累被视为一种关于世界的无限知识获取机制。然而,本体的集成、匹配和对齐问题还没有得到解决。本体对齐的问题是找到这样一个结构和允许的参数,为一个或多个质量标准提供最优值。值得注意的是,目前有许多方法可以计算不同本体的两个离散元素之间的相似性。集成最新的相似度计算技术,可以获得通用和准确的结果。其中一种方法是基于权重。通常,权重是手动或通过特定的方法分配的。现有方法的主要缺点是缺乏最优性。提出了一种基于潜在语义索引和多目标粒子群优化的本体对齐新方法。对于目标函数,选择了两个标准:准确率和召回率。为了获得最优种群,采用局部搜索的方法替换新一代中最差的种群。实验研究证实了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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