基于概念子图权值自调整的中文概念图匹配算法

Hui Zeng, Liyan Xiong, Jianjun Chen
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引用次数: 1

摘要

语义计算是自然语言处理研究中的一个重要课题。针对概念子图匹配不准确的问题,提出了基于概念子图权值自调整的算法。该算法以汉语概念内涵的内张逻辑模型为基础,采用递归概念图作为知识表示方法,结合E-A-V结构相似度计算方法,计算概念图的相似度。该算法在计算概念图相似度时,可以根据子图在整个概念图中所包含的信息量所占的比例,给予子图相应的权重。实验结果表明,新算法取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Chinese Conceptual Graph Matching Algorithm Based on Conceptual Sub-graph Weight Self-Adjustment
Semantic computing is an important task in the research of natural language processing. For the problem of the inaccurate conceptual graph matching, this paper proposed the algorithm based on Conceptual sub-Graph weight self-adjustment. Based on the in tensional logic model of Chinese concept connotation, using Recursive Conceptual Graph as knowledge representation method and combining with the computation method of E-A-V structures similarity, the algorithm computed the similarity of conceptual graphs. When using this algorithm to compute the Conceptual Graph similarity, it can give the homologous weight to the sub graph based on the proportion of how much information the sub graph contains in the whole Conceptual Graph. The experiment results show that this new algorithm achieve better results.
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