用于智能语言分类推荐系统的 TF-IDF 组合秩因子 Naive Bayesian 算法

Yonglian Luo, Cailin Lu
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引用次数: 0

摘要

随着智能语言系统的不断完善,大量语言文本数据应运而生。如何高效、准确地处理这些文本数据成为一项重要挑战。因此,本文提出了一种基于改进型 Naive Bayesian 算法的语音分类推荐系统。该系统首先采用传统的贝叶斯算法对语言文本进行分类。结合词频-反向文档频率和等级因子来增加特征语言的权重。然后,将分类后的语言文本与改进算法相结合,进行语言分类推荐。最后,对系统进行性能测试和模拟应用。从结果来看,在古腾堡语料库中,研究算法的准确率和完整率最高,分别为 98.5 % 和 91.6 %,最低值分别为 92.6 % 和 89.4 %。平均值为 95.5 % 和 91.1 %,F1 值约为 92.6 %。在布朗语料库中,所设计算法的平均准确率、完整率和 F1 值分别为 96.2 %、91.2 % 和 93.2 %。当在线客户数达到 1000 时,所设计的中文系统的响应时间为 1.15 秒,分类推荐准确率为 95 %,系统稳定性平均约为 83 %。英文系统的响应时间为 0.64 秒,分类推荐准确率为 96%,系统稳定性平均约为 90%。这表明所设计的方法能显著提高分类推荐系统的运行准确性。
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TF-IDF combined rank factor Naive Bayesian algorithm for intelligent language classification recommendation systems

With the continuous improvement of smart language systems, a large amount of language text data has emerged. How to efficiently and accurately process these text data has become an important challenge. Therefore, a speech classification recommendation system based on improved Naive Bayesian algorithm is proposed. The system first adopts the traditional Bayesian algorithm to classify language texts. The Term Frequency-Inverse Document Frequency and rank factor are combined to increase the weight of feature languages. Then, the classified language texts are combined with the improved algorithm for language classification recommendation. Finally, performance testing and simulation applications are conducted on the system. From the results, in the Gutenberg corpus, the research algorithm had the highest accuracy and completeness, with 98.5 % and 91.6 %, respectively, and the lowest values were 92.6 % and 89.4 %. The average values were 95.5 % and 91.1 %, with an F1 value of about 92.6 %. In the Brown corpus, the average accuracy, completeness, and F1 value of the designed algorithm were 96.2 %, 91.2 %, and 93.2 %, respectively. When the number of online customers reached 1000, the response time of the designed Chinese system was 1.15 s, the classification recommendation accuracy was 95 %, and the system stability was about 83 % on average. The response time of the English system was 0.64 s, the classification recommendation accuracy was 96 %, and the system stability was about 90 % on average. It shows that the designed method can significantly enhance the operation accuracy of the classification recommendation system.

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