
Feature-Based Opinion Mining for Amazon Product’s using MLT
Author(s) -
Siva Kumar Pathuri,
Viswa Ganesh. Alapati,
Ponnekanti. Ravi Teja,
Rishi Chowdary
Publication year - 2019
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.k1837.0981119
Subject(s) - sentiment analysis , naive bayes classifier , computer science , support vector machine , artificial intelligence , analytics , product (mathematics) , feature (linguistics) , machine learning , data science , natural language processing , data mining , mathematics , linguistics , philosophy , geometry
analysis of sentiment’s or opinion mining is one of the major challenge of NLP (natural language processing) .Business Analytics plays a major role in the present scenario with a view to improve their business. These human beings especially relies upon on reviews about their product to resist in the marketplace and information analytics which can give us an excellent insight on what to expect in the future. Opinions can be referred to, with which futures opinions can be expected. Few words or terms can determine outcomes or results. As maximum of these business people try to improve their business to get maximum profit by selling quality products .So, in this regard sentiment analysis has gain a whole lot attention in current years.SA is an area of study within NLP which is used in identifying the view or opinion of a particular feature inside a content i.e., text. This paper is based on the different techniques used to classify a specified text according to the views expressed in it, i.e. whether a person's overall mentality is negative or positive or neutral. We also examine the two-advance methods (feature classification followed by polarity classification) followed along with the experimental results. Finally in this paper we compared 3 ML classification techniques 1) SVM, 2) Naïve Bayes (NB) 3) Logistic Regression with Hybrid Algorithm in which hybrid algorithm gives more accuracy when compared with the other 3 ML algorithms