
Seasonal Adaptation: Labeling Data for Time-Varying Conditions
Adapting machine learning models to seasonal or time-varying conditions requires increasing data volume. It demands strategic data labeling that reflects real-world temporal shifts. Seasonal variation introduces complexity through visual or numerical changes and context, such as altered user intent, sensor behavior, or product availability.
This can include annotating temporal metadata,