AI RESEARCH
Spectral Alignment in Forward-Backward Representations via Temporal Abstraction
arXiv CS.AI
•
ArXi:2603.20103v1 Announce Type: cross Forward-backward (FB) representations provide a powerful framework for learning the successor representation (SR) in continuous spaces by enforcing a low-rank factorization. However, a fundamental spectral mismatch often exists between the high-rank transition dynamics of continuous environments and the low-rank bottleneck of the FB architecture, making accurate low-rank representation learning difficult. In this work, we analyze temporal abstraction as a mechanism to mitigate this mismatch.