One-Hot, Label, Target and K-Fold Target Encoding, Clearly Explained!!!
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1:06:24
Classification Trees in Python from Start to Finish
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16:35
Entropy (for data science) Clearly Explained!!!
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16:12
Word Embedding e Word2Vec, claramente explicados!!!
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9:03
One Hot Encoder with Python Machine Learning (Scikit-Learn)
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16:14
Informação Mútua, Claramente Explicada!!!
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24:07
Different Types of Feature Engineering Encoding Techniques
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19:48
Normalization Vs. Standardization (Feature Scaling in Machine Learning)
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10:14