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International Journal Of Electrical, Electronics And Computers(IJEEC)

Twitter Sentimental Analysis Using NLP

Kanika Chalana , Jishad Abdulla P , Navaneeth S Biju , Chethas LP , Mohammed Ajas


International Journal of Electrical, Electronics and Computers (IJECC), Vol-11,Issue-1 (Special Issue-NCASTEM), January - February 2026, Pages 52-59, 10.22161/eec.ncastem.2025-7

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Article Info: Received: 22 Nov 2025; Accepted: 01 Feb 2025; Date of Publication: 08 Feb 2026

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Social media sites like Twitter produce enormous volumes of textual data that record people's thoughts, feelings, and comments on a wide range of subjects. The main objective of this study is to classify tweets into categories like positive, negative, and neutral by applying natural language processing (NLP) techniques to analyze sentiment in Twitter data. Tokenization, text standardization, and preprocessing procedures to eliminate noise are the next steps in the study's structured pipeline, which starts with data collection via Twitter application programming interfaces. Text is numerically represented through methods like Bag of Words, TF-IDF, and word embeddings. Both contemporary deep learning architectures and Traditional machine learning methods are investigated for classification. Advanced models like transformer-based architectures and long short-term memory (LSTM) networks are contrasted with logistic regression, Naive Bayes, and support vector machines. According to experimental results, deep learning techniques—in particular, transformers—offer better accuracy and a greater capacity to capture contextual meaning than traditional methods. The comparative perspective of this research focuses on the pros and cons of different methods that sets it apart. Besides tackling ethical concerns such as privacy, justice, and algorithmic bias, the study also emphasizes its applications in areas like marketing, politics, public health, and customer service.

Sentiment analysis, Twitter, Natural language processing, Machine learning, Deep learning

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