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Categorical Encoding for Time Series: Embracing Dynamic and Meaningful Techniques
Jan. 8, 2024, 6:01 p.m. | Alexandre Warembourg
Towards AI - Medium pub.towardsai.net
Let’s move beyond static encoding methods and explore dynamic, meaningful techniques for high-cardinality categorical variables.
beyond categorical data science dynamic encoding explore feature engineering forecasting machine learning reading series time series timeseries variables
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