The practical works (TP) of SD-TSIA214 - Machine Learning for Text Mining course at Télécom Paris.
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Updated
Jun 21, 2024 - Jupyter Notebook
The practical works (TP) of SD-TSIA214 - Machine Learning for Text Mining course at Télécom Paris.
This project explores data analysis, blending core Probability Theory and Descriptive Statistics with Statistical Inference and Bayesian Machine Learning (Regression/Classification). It concludes with a comparative study of Frequentist vs. Bayesian A/B Testing.
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