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Fake Research Detection using Weighting Algorithm in Netspam Framework
Publication year - 2019
Publication title -
international journal of recent technology and engineering
Language(s) - English
Resource type - Journals
ISSN - 2277-3878
DOI - 10.35940/ijrte.b1136.0982s1119
Subject(s) - publicity , computer science , weighting , product (mathematics) , sentiment analysis , naive bayes classifier , social media , service (business) , classifier (uml) , world wide web , machine learning , artificial intelligence , business , marketing , support vector machine , medicine , geometry , mathematics , radiology
Now a day’s our life has become more dependent on social media. Social has opened many opportunity for business so, whenever customer wants to buy new product they will look for other people’s opinion. Social media has also have major drawback for business strategies which is spammers. Spammers create spam surveys about various products which mislead a consumer. This online opinion plays important role in business strategies, while positive opinion gives good publicity and market on the other side negative opinion gives bad publicity and market which affects the service providers. To avoid this spammers there have been many research but very have work on user and review related feature. In this investigation we propose a classification system using heterogeneous information network NetSpam framework. This system will classify spam and non-spam reviews using NetSpam algorithm and naïve bayes classifier for sentiment analysis which will provide positive and negative value of the product review. And furthermore if wants to search top product, user can use search query, in addition to that it will display recommendation product on the basis of user’s point of interest.

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