Time-based features are deceptively tricky — feeding raw hour or month values into your model treats December and January as maximally distant when they're actually neighbors. Cyclical encoding (sin/cos transforms) fixes this elegantly. A small preprocessing step that can meaningfully boost performance on anything from demand forecasting to user behavior prediction
Time-based features are deceptively tricky — feeding raw hour or month values into your model treats December and January as maximally distant when they're actually neighbors. Cyclical encoding (sin/cos transforms) fixes this elegantly. A small preprocessing step that can meaningfully boost performance on anything from demand forecasting to user behavior prediction 🔄
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Is Your Model Time-Blind? The Case for Cyclical Feature Encoding
How cyclical encoding improves machine learning prediction The post Is Your Model Time-Blind? The Case for Cyclical Feature Encoding appeared first on Towards Data Science.
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