A Model to Classify Book Buyers’ Sentiments Using Ensemble Approach

In recent years, the growth of social networks and, consequently, the increasing content of these networks have led people to use others’ opinions to make decisions for the purchase and use of products, services or even political choices. Given the fact that users' comments are textual and thei...

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Bibliographic Details
Main Authors: Fatemeh Abbasi, Babak Sohrabi, Amir Manian, Ameneh Khadivar
Format: Article
Language:fas
Published: Allameh Tabataba'i University Press 2017-09-01
Series:مطالعات مدیریت کسب و کار هوشمند
Subjects:
Online Access:https://ims.atu.ac.ir/article_8512_1b6473e084e4e7eeace20e442da5e051.pdf
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Summary:In recent years, the growth of social networks and, consequently, the increasing content of these networks have led people to use others’ opinions to make decisions for the purchase and use of products, services or even political choices. Given the fact that users' comments are textual and their reading and summarizing is timely and difficult, the automation of the extraction of opinions and sentiments of users' comments is one of the suggested solutions for online sales sites to provide more efficient services to customers for better decision making. Sentiment analysis or opinion mining is a process where people's opinions, feelings and attitudes are extracted in relation to a particular subject and are recognized as a branch of the text mining. The results of sentiment analysis can be used in recommender systems to provide more effective shopping suggestions. Information derived from the opinion mining can be used in a variety of fields such as libraries for better choices and purchases based on the users' real opinions. In this research, a system for automatically categorizing the sentiments expressed in the opinions of the buyers of the Amazon book website is presented. The system is designed using ensemble voting models to analyze the sentiment of Amazon users' comments. For all analyses, Python text mining packages are used. In ensemble method two methods are used: majority voting and weight-based voting. In the weighting method, a greater weight is assigned to a classifier by higher accuracy. By comparing the performance of the results, the weighting model is chosen as the final model for making  the sentiment analysis. Results show that the proposed system can automatically classify positive and negative comments with an accuracy of over 80%.
ISSN:2821-0964
2821-0816