基于语义相似度度量的web数据分类方法分析

K. Ramesh, Mohanasundaram R
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摘要

本文综述了60篇基于各种网络数据分类技术的研究论文,这些技术用于对网络数据进行有效分类,并测量两个词之间的语义相关性。本文将web数据分类技术分为基于语义的方法、基于搜索引擎的方法和基于wordnet的方法三种类型,并报告了现有技术的研究问题和面临的挑战。在此基础上,利用分类网络数据分类技术、数据集和评价指标对研究成果进行了分析。从分析中可以看出,基于语义的方法是网络数据分类中广泛使用的技术。同样,Miller-Charles数据集是大多数研究论文中最常用的数据集,其精度、召回率、F-measure等评价指标在web数据分类中被广泛使用。从这个手稿的见解可以用来了解各种研究差距和问题在这一领域。这些可以在未来通过开发新的优化算法来考虑,这可能会提高web数据分类的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of web data classification methods based on semantic similarity measure
ABSTRACT In this survey, 60 research papers are reviewed based on various web data classification techniques, which are used for effective classification of web data and measuring the semantic relatedness between the two words. The web data classification techniques are classified into three types, such as semantic-based approach, search engine-based approach, and WordNet-based approach, and the research issues and challenges confronted by the existing techniques are reported in this survey. Moreover, the analysis is carried out based on the research works using the categorized web data classification techniques, dataset, and evaluation metrics are carried out. From the analysis, it is clear that semantic-based approach is the widely used techniques in the classification of web data. Similarly, Miller-Charles dataset is the most commonly used dataset in most of the research papers, and the evaluation metrics, like precision, recall, and F-measure are widely utilized in web data classification. The insights from this manuscript can be utilized to understand various research gaps and problems in this area. Those can be considered in the future by developing novel optimization algorithms, which might enhance the performance of web data classifications.
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