KatavinaNguyen/hybrid-sentiment-analysis-engine-for-ugc
Built to help researchers and marketers extract actionable sentiment insights from noisy, context-heavy online content. A hybrid sentiment analysis engine for UGC, combining LDA topic modeling with Neuro-Symbolic Transformers. Achieves 81% accuracy and outperforms baselines by 14%.
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Jul 16, 2025
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