AI RESEARCH

Robust Sequential Tracking via Bounded Information Geometry and Non-Parametric Field Actions

arXiv CS.LG

ArXi:2603.13613v1 Announce Type: cross Standard sequential inference architectures are compromised by a normalizability crisis when confronted with extreme, structured outliers. By operating on unbounded parameter spaces, state-of-the-art estimators lack the intrinsic geometry required to appropriately sever anomalies, resulting in unbounded covariance inflation and mean divergence. This paper resolves this structural failure by analyzing the abstraction sequence of inference at the meta-prior level (S_2.