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Exploring Learning Rate Selection in Generalised Bayesian Inference using Posterior Predictive Checks

Methodology 2025-01-22 v2 Applications

Abstract

Generalised Bayesian Inference (GBI) attempts to address model misspecification in a standard Bayesian setup by tempering the likelihood. The likelihood is raised to a fractional power, called the learning rate, which reduces its importance in the posterior and has been established as a method to address certain kinds of model misspecification. Posterior Predictive Checks (PPC) attempt to detect model misspecification by locating a diagnostic, computed on the observed data, within the posterior predictive distribution of the diagnostic. This can be used to construct a hypothesis test where a small pp-value indicates potential misfit. The recent Embedded Diachronic Sense Change (EDiSC) model suffers from misspecification and benefits from likelihood tempering. Using EDiSC as a case study, this exploratory work examines whether PPC could be used in a novel way to set the learning rate in a GBI setup. Specifically, the learning rate selected is the lowest value for which a hypothesis test using the log likelihood diagnostic is not rejected at the 10% level. The experimental results are promising, though not definitive, and indicate the need for further research along the lines suggested here.

Keywords

Cite

@article{arxiv.2410.01475,
  title  = {Exploring Learning Rate Selection in Generalised Bayesian Inference using Posterior Predictive Checks},
  author = {Schyan Zafar and Geoff K. Nicholls},
  journal= {arXiv preprint arXiv:2410.01475},
  year   = {2025}
}
R2 v1 2026-06-28T19:05:06.842Z