2017
DOI: 10.1007/978-981-10-3376-6_30
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Review Spam Detection Using Opinion Mining

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Cited by 19 publications
(17 citation statements)
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“…Narayan et al () used different types of text related properties such as LIWC, Uni‐gram, and the sentiment score of each review and reached an accuracy of 86.25%, a precision of 90.00% and a recall of 83.72%. Etaiwi and Awajan () examined two text related properties: bag of words and words count and reached an accuracy of 87.31%, a precision of 52.78% and a recall of 92.63%.…”
Section: Evaluation Results and Discussionmentioning
confidence: 99%
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“…Narayan et al () used different types of text related properties such as LIWC, Uni‐gram, and the sentiment score of each review and reached an accuracy of 86.25%, a precision of 90.00% and a recall of 83.72%. Etaiwi and Awajan () examined two text related properties: bag of words and words count and reached an accuracy of 87.31%, a precision of 52.78% and a recall of 92.63%.…”
Section: Evaluation Results and Discussionmentioning
confidence: 99%
“…• Spam reviews are detected using some review and reviewer-centric features. Narayan et al (2018) • Spam reviews are detected using some text related properties such as LIWC, POS, N-gram, and sentiment score of each review. Mani et al (2018) • Spam reviews are detected using some text related properties such as Uni-gram and Bi-gram properties.…”
Section: Fontanarava Et Al (2017)mentioning
confidence: 99%
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“…O trabalho proposto por Narayan et al [2018] consistiu na utilização de técnicas de Aprendizado de Máquina para reavaliar reviews fraudulentas sobre produtos. O LIWC foi utilizado em conjunto com n-gram feature para a classificação do conteúdo.…”
Section: Trabalhos Relacionadosunclassified
“…Natural language engineers have recognized this and begun applying the tools of computational linguistics to automatically detect particular kinds of text-based deception. 1 One type receiving considerable attention is opinion spam (e.g., Ott et al 2011;Feng, Banerjee, and Choi 2012;Ott et al 2013;Feng and Hirst 2013;Fornaciari and Poesio 2014;Li, et al 2014;Kim, et al 2017;Kleinberg, et al 2017;Rosso and Cagnina 2017;Narayan, Rout, and Jena 2018). Opinion spam refers to deceptive opinions in service and product reviews that are intended to influence consumer opinion.…”
Section: Automatic Deception Detectionmentioning
confidence: 99%