不同文体特征对历代散文分类的影响

K. Lagutina, N. Lagutina, E. Boychuk, I. Paramonov
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引用次数: 6

摘要

本文从分类质量上比较了不同类型的文体特征:包括基于字符和基于词的低级特征和高级节奏特征。作者使用随机森林和AdaBoost元算法、LSTM神经网络和GRU神经网络四种分类器,将文本按每个特征类型分别分类为世纪。对英语、俄语和法语三种语言的文本语料库进行的实验表明,节奏特征和低层次特征的结合显著提高了分类质量。此外,分类结果允许从句子结构的角度比较不同语言的写作风格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Influence of Different Stylometric Features on the Classification of Prose by Centuries
In this paper the authors compare by classification quality different types of stylometric features: low-level features that include character-based and word-based ones, and high-level rhythm features. The authors classified texts into centuries with each feature type separately and their combinations applying four classifiers: Random Forest and AdaBoost meta-algorithms, a LSTM neural network, and a GRU neural network. The experiments with three text corpora in English, Russian, and French languages showed that combining rhythm features and low-level features significantly improved quality of classification by centuries. Besides, classification results allowed to compare the styles of writing in different languages from a point of view of structure of sentences.
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