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Neural Computation in Authorship Attribution: The Case of Selected Tamil Articles*

机译:作者身份归因的神经计算:以泰米尔文摘录为例*

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摘要

Neural networks regard author attribution as a problem of pattern recognition and the proven results of their applications make them promising techniques for the future. Several neural networks are being applied for authorship determination. Learning vector quantization (LVQ) is a neural network technique that develops a codebook of quantization vectors and makes use of these vectors to encode any input vector. In this article an attempt is made to attribute authorship to disputed articles using LVQ and verify them with the results obtained by traditional canonical discriminant analysis. This study demonstrates that statistical methods of attributing authorship can be paired effectively with neural networks to produce a powerful classification tool. Comparisons are made using means of 24 function words identified from the 32 articles written in the Tamil language by three contemporary scholars of great repute to determine the authorship of 23 unattributed articles pertaining to the same period. This study establishes the fact that LVQ is a powerful technique for computational stylistics.
机译:神经网络将作者归因视为模式识别的问题,其应用的可靠结果使它们成为未来的有希望的技术。几种神经网络正被用于确定作者身份。学习向量量化(LVQ)是一种神经网络技术,它开发了量化向量的密码本,并利用这些向量对任何输入向量进行编码。在本文中,我们尝试使用LVQ将作者归因于有争议的文章,并通过传统的规范判别分析获得的结果对其进行验证。这项研究表明,作者属性的统计方法可以与神经网络有效地配对,以产生强大的分类工具。使用来自三位当代有名望的当代学者以泰米尔语撰写的32篇文章中确定的24个功能词的方式进行比较,以确定同一时期的23篇未归因文章的作者身份。这项研究确定了LVQ是一种强大的计算文体技术的事实。

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