Using of n-grams from morphological tags for fake news classification

被引:0
作者
Kapusta J. [1 ]
Drlik M. [1 ]
Munk M. [1 ,2 ]
机构
[1] Department of Informatics, Constantine the Philosopher University in Nitra, Nitra
[2] Science and Research Centre, University of Pardubice, Pardubice
关键词
Computational Linguistics; Data Mining and Machine Learning; Fake news identification; Morphological analysis; Natural Language and Speech; Natural language processing; POS tagging; Text mining;
D O I
10.7717/PEERJ-CS.624
中图分类号
学科分类号
摘要
Research of the techniques for effective fake news detection has become very needed and attractive. These techniques have a background in many research disciplines, including morphological analysis. Several researchers stated that simple content-related n-grams and POS tagging had been proven insufficient for fake news classification. However, they did not realise any empirical research results, which could confirm these statements experimentally in the last decade. Considering this contradiction, the main aim of the paper is to experimentally evaluate the potential of the common use of n-grams and POS tags for the correct classification of fake and true news. The dataset of published fake or real news about the current Covid-19 pandemic was pre-processed using morphological analysis. As a result, n-grams of POS tags were prepared and further analysed. Three techniques based on POS tags were proposed and applied to different groups of n-grams in the pre-processing phase of fake news detection. The n-gram size was examined as the first. Subsequently, the most suitable depth of the decision trees for sufficient generalization was scoped. Finally, the performance measures of models based on the proposed techniques were compared with the standardised reference TF-IDF technique. The performance measures of the model like accuracy, precision, recall and f1-score are considered, together with the 10-fold cross-validation technique. Simultaneously, the question, whether the TF-IDF technique can be improved using POS tags was researched in detail. The results showed that the newly proposed techniques are comparable with the traditional TF-IDF technique. At the same time, it can be stated that the morphological analysis can improve the baseline TF-IDF technique. As a result, the performance measures of the model, precision for fake news and recall for real news, were statistically significantly improved. © 2021 Kapusta et al. All Rights Reserved.
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页码:1 / 27
页数:26
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共 39 条
  • [1] Ahmad MR., Testing homogeneity of several covariance matrices and multi-sample sphericity for high-dimensional data under non-normality, Communications in Statistics -Theory and Methods, 46, 8, pp. 3738-3753, (2013)
  • [2] Ahmed H, Traore I, Saad S., Detection of online fake news using N-gram analysis and machine learning techniques, pp. 127-138, (2017)
  • [3] Allcott H, Gentzkow M., Social media and fake news in the 2016 election, Journal of Economic Perspectives, 31, 2, pp. 211-236, (2017)
  • [4] Chen CH., Improved TFIDF in big news retrieval: an empirical study, Pattern Recognition Letters, 93, 4, pp. 113-122, (2017)
  • [5] Conroy NJ, Rubin VL, Chen Y., Automatic Deception Detection: Methods for Finding Fake News, Proceedings of the 78th ASIS&T Annual Meeting: Information Science with Impact: Research in and for the Community, ASIST '15, (2015)
  • [6] Deepak S, Chitturi B., Deep neural approach to fake-news identification, Procedia Computer Science, 167, pp. 2236-2243, (2020)
  • [7] de Oliveira NR, Pisa PS, Lopez MA, de Medeiros DSV, Mattos DMF., Identifying fake news on social networks based on natural language processing: trends and challenges, Information-an International Interdisciplinary Journal, 12, 1, pp. 1-38, (2021)
  • [8] Dien J., Best practices for repeated measures ANOVAs of ERP data: reference, regional channels, and robust ANOVAs, International Journal of Psychophysiology: Official Journal of the International Organization of Psychophysiology, 111, 6, pp. 42-56, (2017)
  • [9] Feng S, Banerjee R, Choi Y., Syntactic stylometry for deception detection, Proceedings of the 50th Annual Meeting of the Association for Computational Linguistics: Short Papers, pp. 171-175, (2012)
  • [10] Genc S, Soysal M., Parametrik ve parametrik olmayan çoklu karşilaştirma testleri, Black Sea Journal of Engineering and Science, 1, pp. 18-27, (2018)