Classifying insincere questions on Question Answering (QA) websites: meta-textual features and word embedding

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Business Analytics Pub Date : 2021-01-02 DOI:10.1080/2573234X.2021.1895681
M. Al-Ramahi, I. Alsmadi
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引用次数: 2

Abstract

ABSTRACT The power of information and information exchange defines the current Internet and Online Social Networks (OSNs). With such power and influence, individuals and entities expose those networks to different types of false information. This paper proposes several classification models based on Quora insincere questions; a dataset released by Kaggle. We evaluated several models including word embeddings based on meta and word-level features. Best results were achieved using the BERT transformer with an overall accuracy of more than 95% on several individual classifiers. Overall, results indicated that the meta-textual features are important predictors for whether a question is sincere or not. In one implication, we noticed that users are putting more cognitive efforts into writing more readable sincere questions compared to insincere questions. Moreover, a dictionary is assembled from several explicit dictionaries and significant words selected from Quora questions. The dictionary showed a good performance in predicting insincere questions.
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问答网站上不真实问题的分类:元文本特征和词嵌入
信息和信息交换的力量定义了当前的互联网和在线社交网络(OSNs)。有了这样的权力和影响力,个人和实体将这些网络暴露于不同类型的虚假信息中。本文提出了几种基于Quora非真诚问题的分类模型;一个由Kaggle发布的数据集。我们评估了几种模型,包括基于元特征和词级特征的词嵌入。使用BERT转换器在几个单独的分类器上获得了最好的结果,总体准确率超过95%。总体而言,结果表明元文本特征是问题是否真诚的重要预测因素。在一个暗示中,我们注意到,与不真诚的问题相比,用户在写更可读的真诚问题上投入了更多的认知努力。此外,词典是由几个显式词典和从Quora问题中选择的重要单词组合而成的。词典在预测言不由衷的问题方面表现得很好。
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来源期刊
Journal of Business Analytics
Journal of Business Analytics Business, Management and Accounting-Management Information Systems
CiteScore
2.50
自引率
0.00%
发文量
13
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