AI RESEARCH

Bayes-Sufficient Representations in Supervised Learning

arXiv CS.AI

ArXi:2606.04045v1 Announce Type: cross Representation learning is often described as preserving the information in an input that is relevant for prediction. This work asks what relevance means for a fixed supervised decision problem. A representation is defined to be Bayes-sufficient for a joint distribution and loss if some prediction head can use it to implement a Bayes-optimal action rule. This makes the target information loss-dependent.