基于改进KNN算法的智能英语文本分类模型在图书馆大数据背景下的应用

IF 3.6
Qinwen Xu
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引用次数: 0

摘要

在大数据时代,图书馆管理着庞大的电子文本资源,其中英语文本资源对于学术研究、学生学习和专业知识获取尤为重要。本文旨在改进k近邻算法,设计一种智能分类模型,以提高图书馆服务的效率和质量。基于类内k均值聚类和类平均距离的改进方法,利用向量空间模型对文本信息进行表征和提取。结果表明,改进的k近邻算法在查准率、查全率和F1值上均有显著提高,分别达到90.50%、89.95%和89.37%。分类时间明显缩短至1034.57 s。此外,改进算法的分类准确率达到94%,超过了其他流行的文本分类算法。本研究成功地实现了文本的高效分类。研究结果不仅提高了图书馆英语文本资源的分类效率,而且为读者快速获取所需信息提供了有力支持,具有重要的应用价值和广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of an intelligent English text classification model with improved KNN algorithm in the context of big data in libraries
In the era of big data, libraries manage huge electronic text resources, of which English text resources are particularly critical for academic research, student learning, and professional knowledge acquisition. This paper aims to improve the K-nearest neighbor algorithm and design an intelligent classification model to improve the efficiency and quality of library services. An improved method based on in-class K-means clustering and class mean distance is used to characterize and extract text information with a vector space model. The results showed that the improved K-nearest neighbor algorithm achieved significant improvement in the precision, recall, and F1 values, reaching 90.50 %, 89.95 %, and 89.37 %, respectively. The classification time was significantly reduced to 1034.57 s. In addition, the improved algorithm had a classification accuracy of 94 %, surpassing other popular text classification algorithms. The research successfully realizes the efficient classification of text. The research results not only improve the classification efficiency of library English text resources but also provide strong support for readers to quickly obtain the required information, which has important application value and wide application prospects.
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CiteScore
2.20
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