Litcius/Paper detail

Sentiment classification using hybrid feature selection and ensemble classifier

Achin Jain, Vanita Jain

2021Journal of Intelligent & Fuzzy Systems23 citationsDOI

Abstract

This paper presents a Hybrid Feature Selection Technique for Sentiment Classification. We have used a Genetic Algorithm and a combination of existing Feature Selection methods, namely: Information Gain (IG), CHI Square (CHI), and GINI Index (GINI). First, we have obtained features from three different selection approaches as mentioned above and then performed the UNION SET Operation to extract the reduced feature set. Then, Genetic Algorithm is applied to optimize the feature set further. This paper also presents an Ensemble Approach based on the error rate obtained different domain datasets. To test our proposed Hybrid Feature Selection and Ensemble Classification approach, we have considered four Support Vector Machine (SVM) classifier variants. We have used UCI ML Datasets of three domains namely: IMDB Movie Review, Amazon Product Review and Yelp Restaurant Reviews. The experimental results show that our proposed approach performed best in all three domain datasets. Further, we also presented T-Test for Statistical Significance between classifiers and comparison is also done based on Precision, Recall, F1-Score, AUC and model execution time.

Topics & Concepts

Feature selectionComputer scienceArtificial intelligenceClassifier (UML)Support vector machinePattern recognition (psychology)Data miningTest setEnsemble learningEnsemble forecastingFeature (linguistics)Machine learningPhilosophyLinguisticsSentiment Analysis and Opinion MiningSpam and Phishing DetectionText and Document Classification Technologies