Exploiting Function Words Feature in Classifying Deceptive and Truthful Reviews

A. Siagian, M. Aritsugi
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引用次数: 4

Abstract

In this paper, we exploit function words as a feature for classifying deceptive and truthful opinions in the online reviews. Initially, we employ function words as a single feature to classify deceptive and truthful reviews. Then, we combine those function words with widely used text features in this task, namely, word and character n-grams, as our proposed combination feature. The experimental results exhibit that our proposed feature could perform well in this deceptive and truthful reviews classification. In particular, the obtained results of our proposed combination feature could outperform those using the baseline feature, i.e., word and character n-grams combinations. In addition, we apply the feature attribute selection, that is, Information Gain in conjunction with Ranker of WEKA, on our proposed combination feature. This treatment is to examine further the robustness of our proposed combination feature when dealing with this task. The latter experiment shows that after applying the feature attribute selection, our proposed combination feature was able to increase the classification results.
虚词特征在虚假评论与真实评论分类中的应用
在本文中,我们利用虚词作为特征对在线评论中的虚假和真实意见进行分类。最初,我们使用虚词作为一个单一的特征来分类虚假和真实的评论。然后,我们将这些虚词与本任务中广泛使用的文本特征(即单词和字符n图)结合起来,作为我们提出的组合特征。实验结果表明,我们提出的特征可以很好地用于虚假评论和真实评论的分类。特别是,我们提出的组合特征所获得的结果可以优于使用基线特征(即单词和字符n-图组合)的结果。此外,我们将特征属性选择(Information Gain)与WEKA的Ranker相结合,应用到我们提出的组合特征上。这种处理是为了进一步检查我们提出的组合特征在处理此任务时的鲁棒性。后一个实验表明,在应用特征属性选择后,我们提出的组合特征能够提高分类结果。
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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