etikettförskjutning
Etikettförskjutning, also known as label shift or concept drift in machine learning, refers to a phenomenon where the statistical properties of the target variable, which the model is trying to predict, change over time in unforeseen ways. This change can occur after a model has been trained and deployed. For instance, if a model is trained to predict customer purchasing behavior based on historical data, an etikettförskjutning might happen if new marketing strategies or external economic factors significantly alter what customers are likely to buy.
The core issue with etikettförskjutning is that a model trained on past data may no longer accurately
Several strategies can be employed to mitigate the impact of etikettförskjutning. One common approach is continuous