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A Classifier System for Author Recognition Using Synonym-Based Features

机译:使用基于同义词的特征进行作者识别的分类器系统

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摘要

The writing style of an author is a phenomenon that computer scientists and stylometrists have modeled in the past with some success. However, due to the complexity and variability of writing styles, simple models often break down when faced with real world data. Thus, current trends in stylometry often employ hundreds of features in building classifier systems. In this paper, we present a novel set of synonym-based features for author recognition. We outline a basic model of how synonyms relate to an author's identify and then build an additional two models refined to meet real world needs. Experiments show strong correlation between the presented metric and the writing style of four authors with the second of the three models outperforming the others. As modern stylometric classifier systems demand increasingly larger feature sets, this new set of synonym-based features will serve to fill this ever-increasing need.
机译:作者的写作风格是计算机科学家和发型师过去模仿并获得成功的一种现象。但是,由于书写风格的复杂性和可变性,当面对现实世界的数据时,简单的模型经常会崩溃。因此,当前的测绘趋势通常在建筑分类器系统中采用数百种功能。在本文中,我们提出了一套新颖的基于同义词的功能以用于作者识别。我们概述了同义词如何与作者身份相关联的基本模型,然后构建了另外两个满足现实世界需求的模型。实验表明,提出的指标与四位作者的写作风格之间具有很强的相关性,三个模型中的第二个优于其他模型。随着现代风格分类器系统要求越来越大的功能集,基于同义词的新功能集将可以满足这一不断增长的需求。

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