Lightweight Lexical and Semantic Evidence for Detecting Classes Among Wikipedia Articles

Marius Pasca, Travis Wolfe
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Abstract

A supervised method relies on simple, lightweight features in order to distinguish Wikipedia articles that are classes (Shield volcano) from other articles (Kilauea). The features are lexical or semantic in nature. Experimental results in multiple languages over multiple evaluation sets demonstrate the superiority of the proposed method over previous work.
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轻量级词汇和语义证据在维基百科条目中检测类
有监督的方法依赖于简单、轻量级的特征来区分维基百科文章的类别(盾火山)和其他文章(基拉韦厄火山)。这些特征本质上是词汇性的或语义性的。在多语言、多评价集上的实验结果表明了该方法的优越性。
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