语言处理分类模型的评价

Z. H. Kilimci, M. Ganiz
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引用次数: 14

摘要

Naïve贝叶斯算法实现简单,复杂度低,是文本分类中常用的一种算法。Naïve贝叶斯主要有两种用于文本分类的事件模型,即多元伯努利模型和多项模型。大量的研究选择多项模型和拉普拉斯平滑,只是基于它在几乎任何条件下都优于多元模型的假设。本研究旨在通过从不同的角度分析Naïve贝叶斯事件模型和平滑方法来阐明这一被广泛采用的假设。为了澄清Naïve贝叶斯事件模型之间的差异,比较了它们在不同语言(英语和土耳其语)数据集上的分类性能。大量的实验结果表明,多项模型并非总是表现出优越的性能。另一方面,在不同的训练数据规模条件下,多元伯努利模型与适当的平滑方法相结合,可以取得较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of classification models for language processing
Naïve Bayes is a commonly used algorithm in text categorization because of its easy implementation and low complexity. Naïve Bayes has mainly two event models used for text categorization which are multivariate Bernoulli and multinomial models. A very large number of studies choose multinomial model and Laplace smoothing just based on the assumption that it performs better than multivariate model under almost any conditions. This study aims to shed some light into this widely adopted assumption by analyzing Naïve Bayes event models and smoothing methods from a different perspective. To clarify the difference between events models of Naïve Bayes, their classification performance are compared on different languages - English and Turkish - datasets. Results of our extensive experiments demonstrate that superior performance of multinomial model does not observed all the time. On the other hand, multivariate Bernoulli model can perform well when combined with an appropriate smoothing method under different training data size conditions.
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