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Improvement and Analysis of Semantic Similarity Algorithm Based on Linguistic Concept Structure

机译:基于语言概念结构的语义相似性算法改进与分析

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摘要

With the rapid development of information age, various social groups and corresponding institutions are producing a large amount of information data every day. For such huge data storage and identification, in order to manage such data more efficiently and reasonably, traditional semantic similarity algorithm emerges. However, the accuracy of the traditional semantic similarity algorithm is relatively low, and the convergence of corresponding algorithm is poor. Based on this problem, this paper starts with the conceptual structure of language, analyzes the depth of language structure and the distance between nodes, and analyzes the two levels as the starting point. For the information of a specific data resource description frame type, the weight of interconnected edges is used for impact analysis so as to realize the semantic similarity impact analysis of all information data. Based on the above improvements, this paper also systematically establishes the data information modeling process based on language conceptual structure and establishes the corresponding model. In the experimental part, the improved algorithm is simulated and analyzed. The simulation results show that compared with the traditional algorithm, the algorithm has obvious accuracy improvement.
机译:随着信息时代的快速发展,各种社会群体和相应的机构每天正在产生大量的信息数据。对于如此庞大的数据存储和识别,为了更有效地管理这些数据,传统的语义相似性算法出现。然而,传统的语义相似性算法的准确性相对较低,并且相应算法的收敛性差。在此问题的基础上,本文从语言的概念结构开始,分析语言结构的深度和节点之间的距离,分析为起点的两个级别。对于特定数据资源描述帧类型的信息,互连边缘的权重用于影响分析,以实现所有信息数据的语义相似性影响分析。基于上述改进,本文还系统地建立了基于语言概念结构的数据信息建模过程,并建立了相应的模型。在实验部分中,模拟和分析了改进的算法。仿真结果表明,与传统算法相比,该算法具有明显的准确性改进。

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