Examining Variations of Prominent Features in Genre Classification

Yunhyong Kim, S. Ross
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引用次数: 36

Abstract

This paper investigates the correlation between features of three types (visual, stylistic and topical types) and genre classes. The majority of previous studies in automated genre classification have created models based on an amalgamated representation of a document using a combination of features. In these models, the inseparable roles of different features make it difficult to determine a means of improving the classifier when it exhibits poor performance in detecting selected genres. In this paper we use classifiers independently modeled on three groups of features to examine six genre classes to show that the strongest features for making one classification is not necessarily the best features for carrying out another classification.
体裁分类中突出特征的变化研究
本文研究了三种类型(视觉类型、文体类型和主题类型)的特征与类型类别之间的关系。以前的大多数自动类型分类研究都是基于使用特征组合的文档的合并表示来创建模型。在这些模型中,不同特征的不可分割的作用使得当分类器在检测选定的类型方面表现不佳时,很难确定改进分类器的方法。在本文中,我们使用基于三组特征独立建模的分类器来检查六种类型类别,以表明进行一种分类的最强特征不一定是进行另一种分类的最佳特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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