JOURNAL ARTICLE

Analysis of random sequential message passing algorithms for approximate inference

Burak ÇakmakYue M. LuManfred Opper

Year: 2022 Journal:   Journal of Statistical Mechanics Theory and Experiment Vol: 2022 (7)Pages: 073401-073401   Publisher: Institute of Physics

Abstract

Abstract We analyze the dynamics of a random sequential message passing algorithm for approximate inference with large Gaussian latent variable models in a student–teacher scenario. To model nontrivial dependencies between the latent variables, we assume random covariance matrices drawn from rotation invariant ensembles. Moreover, we consider a model mismatching setting, where the teacher model and the one used by the student may be different. By means of dynamical functional approach, we obtain exact dynamical mean-field equations characterizing the dynamics of the inference algorithm. We also derive a range of model parameters for which the sequential algorithm does not converge. The boundary of this parameter range coincides with the de Almeida Thouless (AT) stability condition of the replica-symmetric ansatz for the static probabilistic model.

Keywords:
Message passing Inference Algorithm Approximate inference Latent variable Mathematics Covariance Invariant (physics) Gaussian Replica Random field Ansatz Range (aeronautics) Computer science Applied mathematics Artificial intelligence Statistics Physics

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