International Journal of Electronics and Computer Applications

Volume: 1 Issue: 2

  • Open Access
  • Original Article

Sentiment Analysis

Soniya Zore1∗, Amol Bhosale2, Pratibha Chavan2

1 PG student, Department of Electronics and Telecommunication, Trinity College of Engineering & Research, Kondhawa Budruk, Pune, 411048, Maharashtra, India
2 Assistant Professor, Department of Electronics and Telecommunication, Trinity College of Engineering & Research, Kondhawa Budruk, Pune, 411048, Maharashtra, India

*Corresponding author email: [email protected]
 

Year: 2024, Page: 50-54, Doi: https://doi.org/10.54839/ijeaca.v1i2.8

Received: Sept. 8, 2024 Accepted: Nov. 10, 2024 Published: Dec. 12, 2024

Abstract

Social media platforms like Twitter have become a rich source of real-time data and public sentiment. Analysing sentiment on Twitter is essential for various applications, from brand monitoring to political analysis. This work focuses on Twitter sentiment analysis, employing natural language processing (NLP) techniques to categorize tweets as positive, negative, or neutral. We collect a large dataset of tweets, pre-process the text, and train machine learning models to predict sentiment. Our goal is to provide insights into public sentiment on various topics, trends, and events, which can be valuable for decision-makers in diverse domains.

Keywords: Sentiment Analysis

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Cite this article

Zore S, Bhosale A, Chavan P. (2024). Sentiment Analysis. International Journal of Electronics and Computer Applications. 1(2): 50-54. https://doi.org/10.54839/ijeaca.v1i2.8

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