Anamt761/Feedback-Analysis
This research focuses on automated classification of feedback in college teaching and education using Machine Learning (ML) and Deep Learning (DL) techniques. The study aims to categorize feedback into five labels: Awesome, Good, Average, Poor, and Awful to help institutions assess teaching effectiveness and improve educational quality.
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Jupyter Notebook
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MIT
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Feb 15, 2025
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