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Title: | Detecting fake review using opinion mining |
Authors: | Ansari, Mukhtar Ansari, Mohd Faiz Mohd Siddique (14CO17) Khan, Khalid Ahmed Sajid Ahmed (16DCO54) Shaikh, Azamali Mohd Majid (17DCO75) |
Keywords: | Project Report - CO |
Issue Date: | May-2020 |
Publisher: | AIKTC |
Abstract: | In today’s lifeline online marketing is on it’s verge and keep increasing as people buy and sell products online. Digital marketing is an interesting and trending business platform. Sellers often post fake reviews on their products or pay people to post reviews and give higher rating, most consumer usually see and select products according to that product’s rating and review which can be turn into dissatisfaction of consumer as he bought that product on the basis of fake reviews. To detect such reviews various methods are being used in past works. In this paper the method is being used is Sentiment Analysis (SA). SA has become one of the most interesting topics in text analysis, due to its promising commercial benefits. SA detects fake positive and fake negative reviews based on emotions in the opinion. In this study, we used machine learning algorithm Support Vector Machine (SVM) to detect those fake negative and fake positive reviews. Reviews can be positive or negative which helps consumers to select product. This paper aims to classify movie reviews into groups of positive or negative polarity by using machine learning algorithms. For the movies data-sets we performed some data scrapping library like Beautiful- soup and Request to scrap movies data-sets and collected data-sets from websites |
URI: | http://localhost:8080/xmlui/handle/123456789/3599 |
Appears in Collections: | Computer Engineering - Project Reports |
Files in This Item:
File | Description | Size | Format | |
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14CO17.pdf | Black Book | 2.19 MB | Adobe PDF | View/Open |
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