ICDM 2019 Conference

Extraction Sentiment Analysis Using naive Bayes Algorithm and Reducing Noise Word applied in Indonesian Language
Aris Tri Jaka Harjanta, Bambang Agus Herlambang

Universitas PGRI Semarang


Abstract

Sentiment Analysis is now very important and very useful in machine learning technology where a contextual mining of text to identify and extract subjective information in the source, and in helping to understand social sentiment from comments In general, sentiment analysis can be classified into three broad categories namely sentiment positive and negative. One method of machine learning is the Deep Belief Network (DBN). DBN which is included in the Deep Learning method, is by stacking several algorithms with several extraction features that utilize all resources optimally. This research has two points. First, it aims to classify positive, negative, and neutral sentiments for the test data. The following experiments provide a system of sentiment analysis through the naive Bayes algorithm to calculate sentiment and to improve accuracy by reducing noise in words applied in Indonesian language.

Keywords: Sentiment Analysis, Machine Learning, Naive Bayes

Topic: Computer Engineering

Link: https://ifory.id/abstract-plain/pkNtAQ47FgRc

Web Format | Corresponding Author (Aris Tri Jaka Harjanta)