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Fine-Grained Emotion Detection from Microblog Data Using Advanced NLP And Machine Learning Techniques

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  • P.Bhanu Siva Rama Krishna

    (Mohan Babu University Tirupathi, Andhra Pradesh, India)

  • Dr.K.Sailaja

    (Mohan Babu University Tirupathi, Andhra Pradesh, India)

Abstract

Social media platforms like Twitter, Instagram, and Facebook have exploded with user-generated content, offering a goldmine of data for understanding emotions online. But detecting nuanced feelings—like joy, anger, or surprise—in short, informal posts is far harder than basic sentiment analysis (which just labels things as "positive" or "negative"). This paper introduces a smarter way to detect emotions in microblogs by blending cutting-edge NLP and machine learning. Our key innovation? A hybrid model that combines the deep contextual understanding of transformer-based models (like BERT) with emotion- specific classifiers. Unlike older methods, our system doesn’t just skim the surface—it picks up subtle emotional cues, even in messy, slang-filled posts. We also tackle real-world challenges: emojis, sarcasm, and ever-changing internet slang. By fine-tuning our model on a diverse dataset (covering emotions from disgust to fear), we outperform traditional tools, especially for tricky cases like mixed emotions in a single tweet. The results? More accurate emotion tracking for applications like mental health monitoring, brand sentiment analysis, and real-time social media trends.

Suggested Citation

  • P.Bhanu Siva Rama Krishna & Dr.K.Sailaja, 2025. "Fine-Grained Emotion Detection from Microblog Data Using Advanced NLP And Machine Learning Techniques," International Journal of Latest Technology in Engineering, Management & Applied Science, International Journal of Latest Technology in Engineering, Management & Applied Science (IJLTEMAS), vol. 14(4), pages 519-525, April.
  • Handle: RePEc:bjb:journl:v:14:y:2025:i:4:p:519-525
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