Partition function approach to non-Gaussian likelihoods: information theory and state variables for Bayesian inference
The significance of statistical physics concepts such as entropy extends far beyond classical thermodynamics. We interpret the similarity between partitions in statistical mechanics and partitions in Bayesian inference as an articulation of a result by Jaynes (1957), who clarified that thermodynamic...
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Zusammenfassung: | The significance of statistical physics concepts such as entropy extends far
beyond classical thermodynamics. We interpret the similarity between partitions
in statistical mechanics and partitions in Bayesian inference as an
articulation of a result by Jaynes (1957), who clarified that thermodynamics is
in essence a theory of information. In this, every sampling process has a
mechanical analogue. Consequently, the divide between ensembles of samplers in
parameter space and sampling from a mechanical system in thermodynamic
equilibrium would be artificial. Based on this realisation, we construct a
continuous modelling of a Bayes update akin to a transition between
thermodynamic ensembles. This leads to an information theoretic interpretation
of Jazinsky's equality, relating the expenditure of work to the influence of
data via the likelihood. We propose one way to transfer the vocabulary and the
formalism of thermodynamics (energy, work, heat) and statistical mechanics
(partition functions) to statistical inference, starting from Bayes' law.
Different kinds of inference processes are discussed and relative entropies are
shown to follow from suitably constructed partitions as an analytical
formulation of sampling processes. Lastly, we propose an effective dimension as
a measure of system complexity. A numerical example from cosmology is put
forward to illustrate these results. |
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DOI: | 10.48550/arxiv.2411.13625 |