E-ISSN 3041-4849
 

Original Article
Online Published: 17 Jan 2025
 


Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning

Bhuvaneswari K.


Abstract
Aim: The proposed Filter Based Sentiment Feature Selection (FBSFS) model focuses on to improve the performance of Sentiment Learning (SL) by selecting the most relevant sentiment features from text reviews using feature selection methods at document level.
Method: Sentiment Learning is applied at the document level for classifying text reviews into two categories either positive or negative. The key sentiment features adjectives (ADJ), adverbs (ADV), and verbs (VRB) which are essential for sentiment analysis, are extracted from text document using the WordNet dictionary. Feature selection is performed by applying four different algorithms: Information Gain, Correlation, Gini Index, and Chi-Square. These algorithms help identify the most significant features that contribute to sentiment classification. The selected features are then fed into a Back Propagation Deep Learning (BPDL) classification model for sentiment analysis.
Result: The experimental findings show that the proposed model achieved higher accuracy of 91.15% using Correlation feature selection. This accuracy signifies the effectiveness of the proposed model in classifying text reviews, outperforming other methods in terms of sentiment feature selection and classification.
Conclusion: The proposed model enhances the performance of sentiment learning by selecting the most relevant sentiment features, particularly those extracted from adjectives, adverbs, and verbs, and combining them with BPDL. The FBSFS model as a robust tool for sentiment classification.

Key words: Back Propagation, Chi Square, Correlation, Deep Learning, Feature Selection


 
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How to Cite this Article
Pubmed Style

Bhuvaneswari K. Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning. J Comp Sci Informatics. 2025; 2(1): 15-21. doi:10.5455/JCSI.20241216054507


Web Style

Bhuvaneswari K. Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning. https://www.wisdomgale.com/jcsi/?mno=233158 [Access: January 22, 2025]. doi:10.5455/JCSI.20241216054507


AMA (American Medical Association) Style

Bhuvaneswari K. Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning. J Comp Sci Informatics. 2025; 2(1): 15-21. doi:10.5455/JCSI.20241216054507



Vancouver/ICMJE Style

Bhuvaneswari K. Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning. J Comp Sci Informatics. (2025), [cited January 22, 2025]; 2(1): 15-21. doi:10.5455/JCSI.20241216054507



Harvard Style

Bhuvaneswari K (2025) Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning. J Comp Sci Informatics, 2 (1), 15-21. doi:10.5455/JCSI.20241216054507



Turabian Style

Bhuvaneswari K. 2025. Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning. Journal of Computer Sciences and Informatics, 2 (1), 15-21. doi:10.5455/JCSI.20241216054507



Chicago Style

Bhuvaneswari K. "Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning." Journal of Computer Sciences and Informatics 2 (2025), 15-21. doi:10.5455/JCSI.20241216054507



MLA (The Modern Language Association) Style

Bhuvaneswari K. "Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning." Journal of Computer Sciences and Informatics 2.1 (2025), 15-21. Print. doi:10.5455/JCSI.20241216054507



APA (American Psychological Association) Style

Bhuvaneswari K (2025) Filter Based Sentiment Feature Selection Using Back Propagation Deep Learning. Journal of Computer Sciences and Informatics, 2 (1), 15-21. doi:10.5455/JCSI.20241216054507