Implementation of The Naïve Bayes Algorithm with Feature Selection using Genetic Algorithm for Sentiment Review Analysis of Fashion Online Companies
Siti Ernawati; Eka Rini Yulia; Frieyadie; Samudi
Abstract:
Opinion
rivalry that occurs in social media have an important role in
increasing the potential customers to the company or agency. The review
is a rich and useful resource for marketing, social and others for
excavations and mining opinions such as views, moods, and behavior. The
reviews describe perceptions of something, such as review of a product,
review of airline services, reviews of restaurant and others. The
analysis of sentiment is an ongoing field of text-based research. The
analysis of sentiment or opinion mining is the study of ways to solve
problems of public opinion, attitudes, and emotions of an entity, in
which the entity may represent individuals, events or topics. Sentiment
analysis is an important tool for analyzing opinions in social media.
This measurement begins with pre-processing consisting of tokenizing,
stopwords removal and stemming. This study uses naïve Bayes algorithm
and genetic algorithms as applied feature selection. Selection features
aim to classify text for the review of online fashion companies. This
measurement results in the classification of text in form of positive
text and negative text. Measurements are based on the accuracy of naïve
Bayes before addition of genetic algorithms and after addition of
genetic algorithms as feature selection. Validation using 10 fold
cross-validation. For measurement accuracy using confusion matrix and
ROC curve. The purpose of the study is to calculate the increased
accuracy of naïve Bayes algorithm if using genetic algorithms for
feature selection. The results showed that the genetic algorithm was
able to improve the accuracy.
Date of Conference: 7-9 Aug. 2018
Date Added to IEEE Xplore: 28 March 2019
ISBN Information:
INSPEC Accession Number: 18548540
Publisher: IEEE
Conference Location: Parapat, Indonesia
Link Paper : https://ieeexplore.ieee.org/abstract/document/8674286
Link Paper : https://ieeexplore.ieee.org/abstract/document/8674286


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