A Voting classification approach for Sentiment Extraction from Bengali text
Journal: International Journal of Emerging Trends in Engineering Research (IJETER) (Vol.11, No. 5)Publication Date: 2023-05-15
Authors : Piyal Roy Amitava Podder Smaranika Roy;
Page : 132-136
Keywords : Sntiment Extraction; Logistic Regression; Support Vector Classifier; Multinomial Naïve Base; Decision Tree; Voting Classification;
Abstract
Sentiment extraction is one of the most challenging tasks in Natural Language Processing (NLP). It is essential for analysing consumer and user feedback on social media sites and in the commercial world. Finding sentiments or emotions in raw text data and identifying their polarity, or whether they are positive or negative, is the main objective of sentiment extraction. This area has been the focus of various research projects for English and other significant natural languages. In this article, we offer a voting classification method that uses a variety of machine learning classifiers to extract sentiment from Bengali language text. We explored Logistic Regression, Decision Tree Classifier, Random Forest Classifier, Support Vector Classifier, Multinomial Nave Base and Ridge Classifier, and lastly, we used a voting classification strategy to extract sentiments from social media comments.
Other Latest Articles
- An Energy Efficient and High Performance Modified Trng based Two Phase Multi Bit Per Cycle Ring Oscillator for IoT Applications
- Spatio-Temporal Analysis of Land Use Change in Uyo Urban, Akwa Ibom State, Nigeria
- MICRO POWER GENERATION USING PIEZOELECTRIC TRANSDUCER INFOOTWEAR
- Cost and Benefit Analysis of Solar Panels at Home
- The Government Procurement Law (RA 9184) And Its IRR: Flaws on the Compliance Based on the Observations in the Procurement Bidding Process by the Employees of the Philippine Center for Postharvest and Mechanization Development (PHilMech)
Last modified: 2023-05-21 22:12:32