Litcius/Paper detail

Twitter Sentiment Analysis Using an Ensemble Majority Vote Classifier

Alaa Khudhair Abbas, Ali Khalil Salih, Harith A. Hussein, Qasim Mohammed Hussein, Saba Alaa Abdulwahhab

2020Journal of Southwest Jiaotong University26 citationsDOIOpen Access PDF

Abstract

Twitter social media data generally uses ambiguous text that can cause difficulty in identifying positive or negative sentiments. There are more than one billion social media messages that need to be stored in a proper database and processed correctly to analyze them. In this paper, an ensemble majority vote classifier to enhance sentiment classification performance and accuracy is proposed. The proposed classification model is combined with four classifiers, using varying techniques—naive Bayes, decision trees, multilayer perceptron and logistic regression—to form a single ensemble classifier. In addition to these, a comparison is drawn among the four classifiers to evaluate the performance of the individual classifiers. The result shows that in terms of an individual classifier, the naive Bayes classifier is optimal as compared to the others. However, for comparing the proposed ensemble majority vote classifier with the four individual classifiers, the result illustrates that the performance of the proposed classifier is better than the independent one.

Topics & Concepts

Classifier (UML)Naive Bayes classifierComputer scienceArtificial intelligenceRandom subspace methodMachine learningSentiment analysisMajority rulePerceptronLogistic regressionCascading classifiersMultilayer perceptronEnsemble learningQuadratic classifierBayes classifierPattern recognition (psychology)Decision treeSupport vector machineArtificial neural networkSentiment Analysis and Opinion MiningText and Document Classification TechnologiesSpam and Phishing Detection