English

Structural Learning Theory: A Metric-Topology Factorization Approach

Machine Learning 2026-05-08 v2

Abstract

Learning in structured, multi-context, or non-stationary environments involves two orthogonal difficulties. The first is \emph{metric}: once the correct context is known, how hard is prediction within it? This is the domain of Statistical Learning Theory (SLT). The second is \emph{structural}: how many local contexts are required, and how can they be discovered from data? This paper develops \emph{Structural Learning Theory} (StrLT) for the structural axis. We introduce \emph{width}, the minimum number of jointly contractive and low-risk cells needed to cover a learning problem. Width is incomparable with VC dimension: either can diverge while the other remains bounded. We show that width induces a \emph{phase transition}: if the allocated number of cells K<wK<w, learning suffers an irreducible structural error floor; if KwK\ge w, the problem reduces to ordinary within-cell statistical learning. To estimate width, we introduce the \emph{contractive-similarity} (CS) operator, a task-adaptive graph kernel combining geometric locality with predictive compatibility. Its CS Laplacian exposes contractive basins through spectral separation. We further develop the \emph{metric slingshot}, which reuses low-dimensional latent contraction maps to reduce funnel-learning cost. Together, width, CS estimation, and the slingshot decompose learning into trap discovery and funnel generalization, with deep implications for continual and lifelong learning in an open-ended environment.

Keywords

Cite

@article{arxiv.2602.07974,
  title  = {Structural Learning Theory: A Metric-Topology Factorization Approach},
  author = {Xin Li},
  journal= {arXiv preprint arXiv:2602.07974},
  year   = {2026}
}
R2 v1 2026-07-01T10:26:45.829Z