Data Mining and Machine Learning Approach for Online Product Recommendation System Using Sentiment Analysis
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Date
2019Author
Hettikankanama
HKSK
Vasanthapriyan
S
Rathnayake
RMTK
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Show full item recordAbstract
With the evolution of Internet and ecommerce physical stores and businesses were moved to
web breaking geographical barriers. Most online
businesses use recommender systems to find right
product for right customer at right time to increase
customer satisfaction. Product recommendation systems
are filtering tools which use data mining and machine
learning algorithms to suggest the most relevant items to
a particular user. This study illustrate how recommender
systems increase the quality of the decisions that
customers make while selecting a product by reducing the
information overload and complexity. The goal of this
study is to propose a novel product recommendation
algorithm considering user reviews which provide
multiuser recommendation. In this research a data set
was taken through some different supervised and
unsupervised learning methods, available
recommendation systems and finally through proposed
recommendation system. New recommendation model
and its workflow is illustrated here which analyse review
text and provide rating value for reviews through
sentiment analysis and polarity estimation. This paper
presents the methodology and techniques used in novel
recommendation algorithm and its evaluation.
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- Computing [68]