Understanding Endogenous Data Drift in Adaptive Models with Recourse-Seeking Users
NeutralArtificial Intelligence
The article discusses the concept of endogenous data drift in adaptive models, particularly focusing on how users who experience negative outcomes may alter their behaviors to align with model expectations. This phenomenon is significant because it highlights the challenges faced by deep learning models in real-world applications, where the assumption of a static data distribution is often violated. Understanding these dynamics is crucial for improving decision-making and recommendation systems.
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