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Bangla E-Commerce Sentiment Analysis Optimization Using Tokenization and TF-IDF

Saieef Sunny, Sadia Pinky, Sanjida Jalal, Mehedi Kayser, Mostofa Wadud, Nafees Mansoor

202410 citationsDOI

Abstract

This paper aims to explore the sentiments of Bangla customer reviews and provide valuable in-sights for potential buyers. The proposed methodology involves a comprehensive approach to data collection from online shopping platforms, carefully removing duplicates and irrelevant information and labeling sen-timents. Trigram features were used in combination with TF-IDF for effective feature selection. Data augmentation was also utilized to address the class imbalance. Various classifiers were deployed to categorize sentiments, including Naive Bayes, Random Forest, Extra Tree, KNN, Logistic Regression, Support Vector Machine, Artificial Neural Network, and Multilayer Perceptron. In analyzing BangIa product sentiments, the Multilayer Perceptron model performed exceptionally well and achieved an accuracy rate of 96.42% using the proposed methodology. The Artificial Neural Network closely followed it with 96.23% and Naive Bayes with 95.38%, providing valuable insights into the BangIa customer sentiment analysis landscape.

Topics & Concepts

Lexical analysisBengaliComputer sciencetf–idfSentiment analysisArtificial intelligenceNatural language processingPhysicsTerm (time)Quantum mechanicsSentiment Analysis and Opinion MiningCustomer churn and segmentationImbalanced Data Classification Techniques
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