e0xextazy/nlp_huawei_new2_task
A new second practical assignment for Huawei's NLP course
This project helps data scientists and machine learning engineers analyze customer feedback by classifying store review text into one of five rating categories (1-5 stars). You input a dataset of customer reviews, and it outputs predicted star ratings, enabling better understanding of customer sentiment. It is designed for those building or evaluating text classification models.
No commits in the last 6 months.
Use this if you are a data scientist or machine learning engineer looking for baseline solutions and a structured approach to classify customer reviews based on their text content.
Not ideal if you are a business user simply needing to visualize or quickly summarize existing review data without building a predictive model.
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19
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8
Language
Jupyter Notebook
License
MIT
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Last pushed
Mar 20, 2024
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