Feature recognition of English clauses based on particle swarm optimization algorithm

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引用次数: 0

Abstract

Feature recognition of English clauses is a basic problem of syntactic analysis. It is the basis of English-Chinese machine translation. A feature recognition method of English clauses based on particle swarm optimization algorithm is proposed. This paper analyzes the characteristics of English clauses, delimits the boundary of clauses, and follows the current optimal particle in the solution space to search the best position through the cooperation and information sharing between particle swarm individuals. The feature set is selected, the crossover and mutation idea of genetic algorithm is introduced, and the crossover operation is carried out to complete the feature recognition of English clauses. The experimental results show that when the threshold P is 50, the recognition accuracy of this algorithm is consistent with that when p is 100, and the recognition accuracy is 93.45%. The accuracy of particle swarm optimization algorithm for English clause feature recognition is high, which remains at about 90%. Compared with the two literature methods, the convergence performance of particle swarm optimization algorithm is better.
基于粒子群优化算法的英语分句特征识别
英语分句特征识别是句法分析的一个基本问题。它是英汉机器翻译的基础。提出了一种基于粒子群优化算法的英语分句特征识别方法。本文分析了英语分句的特点,划分了分句的边界,通过粒子群个体之间的合作和信息共享,跟踪解空间中当前最优的粒子,搜索到最优位置。选择特征集,引入遗传算法的交叉和变异思想,进行交叉操作,完成英语分句的特征识别。实验结果表明,当阈值P为50时,该算法的识别精度与P为100时的识别精度一致,识别精度为93.45%。粒子群算法对英语小句特征识别的准确率较高,保持在90%左右。与两种文献方法相比,粒子群优化算法的收敛性能更好。
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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