罗马尼亚博客圈的主题分类

A. Vasile, Roxana Rădulescu, I. Pavaloiu
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引用次数: 8

摘要

在本文中,我们分析了几种分类方法的性能,适用于罗马尼亚博客圈。无论是人类还是机器,都很难对博客进行分类,因为它们的写作风格多变。在网络的早期,人类维护的目录无法维护数百万个网站;同样,博客目录也跟不上博客圈的爆炸式增长。本文研究了使用机器学习对属于罗马尼亚博客圈的罗马尼亚语博客进行分类的功效。我们设计了一个文本分类实验,将罗马尼亚博客分为九个主题。基线特征是以TF-IDF加权的单位为单位。我们分析语料库、特征和结果数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic classification in Romanian blogosphere
In this paper we analyze the performance of several methods for classification applied to the Romanian blogosphere. Blogs are difficult to categorize by humans and machines alike, because they are written in a changeable style. In the early days of web, directories maintained by humans could not keep up millions the websites; likewise, blog directories cannot keep up with the explosive growth of the blogsphere. This paper investigates the efficacy of using machine learning to categorize blogs written in Romanian language belonging to the Romanian blogosphere. We design a text classification experiment to categorize Romanian blogs into nine topics. The baseline feature is unigrams weighed by TF-IDF. We analyze the corpus, features, and the result data.
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