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Exploring ChatGPT’s Role in Education: An NLP-Based Sentiment and Thematic Study Using Twitter Data

2025·1 Zitationen·Procedia Computer ScienceOpen Access
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Abstract

The emergence of AI-driven technologies such as ChatGPT in education has profoundly influenced students’ learning experiences, especially in India. This study examines the sentiment of ChatGPT’s application in Indian education by evaluating 25,000 tweets gathered from August 2023 to June 2024 utilizing Natural Language Processing (NLP) techniques. The data underwent noise reduction, followed by sentiment analysis utilizing both lexicon-based (TextBlob) and machine learning models (BERT and RoBERTa) for a comprehensive assessment. Thematic analysis utilizing Latent Dirichlet Allocation (LDA) was employed to discern major topics including educational improvement, ethical issues, and the future of AI integration in education. Findings indicate that 45% of the tweets exhibited positive sentiment, emphasizing advantages in tailored learning and accessibility, whereas 30% reflected negative sentiment, frequently addressing issues related to academic integrity and prejudice in AI models. A comparative investigation of sentiment analysis models demonstrated that RoBERTa surpassed others with a 92% accuracy rate, confirming its exceptional contextual comprehension. Ethical issues, including data protection, possible misuse, and excessive dependence on AI, were substantial, leading to suggestions for the ethical implementation of ChatGPT in educational contexts. This study enhances the conversation on AI in education by elucidating the perceptions of students and educators in India about ChatGPT, while underscoring the necessity for ethical rules and policies.

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Online Learning and AnalyticsTopic ModelingArtificial Intelligence in Healthcare and Education
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