AI RESEARCH

Structural Inference: Interpreting Small Language Models with Susceptibilities

arXiv CS.LG

ArXi:2504.18274v3 Announce Type: replace We develop a linear response framework for interpretability that treats a neural network as a Bayesian statistical mechanical system. A small perturbation of the data distribution, for example shifting the Pile toward GitHub or legal text, induces a first-order change in the posterior expectation of an observable localized on a chosen component of the network. The resulting susceptibility can be estimated efficiently with local SGLD samples and factorizes into signed, per-token contributions that serve as attribution scores.