Sentiment Analysis for Product Recommendation System Using Enhanced Stochastic Learning Algorithm

Authors

  • S. Gayathri  Research Scholar, Department of Computer Science, A. V. C. College, Mayiladuthurai,Tamil Nadu, India
  • Dr. K. Thyagarajan  Head of The Department of Computer Science, A. V. C. College, Mayiladuthurai, Tamil Nadu, India

DOI:

https://doi.org//10.32628/CSEIT195537

Keywords:

E-Commerce Framework, Recommendation System, Opinion Mining, Fake Review Analysis

Abstract

E-Commerce has been known as a rapidly growing commercial enterprise, and even though on line purchasing has no longer accompanied those identical boom patterns within the beyond, it's miles now being diagnosed for its capability. Sentiment evaluation is one of the current research subjects in the subject of textual content mining. Opinions and sentiments mining from natural language are very difficult task. Sentiment analysis is the best solution. This gives important information for decision making in various domains. Various sentiment detection methods are available which affect the quality of result. In this project we are finding the sentiments of people related to the services of E-shopping websites. The sentiments include reviews, ratings and emoticons. The main goal is to recommend the products to users which are posted in E-shopping website and analyzing which one is the best. For this we use hybrid learning algorithm which analyze various feedbacks related to the services. Text mining algorithm is used to find scores of each word. Then sentiments are classified as negative, positive and neutral. It has been observed that the pre-processing of the data is greatly affecting the quality of detected sentiments. Finally analysis takes place based on classification. To find out fake review in the website can be analyzed. This device will discover fake critiques made via posting fake remarks about a product via figuring out the MAC deal with in conjunction with assessment posting styles. User will login to the device using his consumer identification and password and could view various merchandise and will give assessment approximately the product. To discover the evaluation is fake or authentic, system will find out the MAC address of the consumer if the machine observes fake assessment send by way of the identical MAC Address many a times it'll inform the admin to do away with that overview from the device. This gadget uses information mining technique. This machine allows the user to find out accurate overview of the product.

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Published

2019-10-30

Issue

Section

Research Articles

How to Cite

[1]
S. Gayathri, Dr. K. Thyagarajan, " Sentiment Analysis for Product Recommendation System Using Enhanced Stochastic Learning Algorithm, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 5, Issue 5, pp.228-234, September-October-2019. Available at doi : https://doi.org/10.32628/CSEIT195537