driftadjusted
driftadjusted refers to a statistical technique used to correct for the effects of temporal drift in data. Temporal drift, also known as time drift or concept drift, occurs when the underlying statistical properties of a dataset change over time. This can lead to a degradation of model performance if not addressed, as a model trained on past data may no longer accurately represent the current data.
Driftadjusted methods aim to mitigate these performance issues by accounting for the detected drift. This can
The application of driftadjusted techniques is prevalent in areas where data is inherently dynamic, such as