Exact and Approximate MCMC for Doubly-intractable Probabilistic Graphical Models Leveraging the Underlying Independence Model

arXiv stat.ML / 3/30/2026

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Key Points

  • The paper addresses Bayesian inference in doubly-intractable pairwise exponential probabilistic graphical models, where standard exchange algorithms and approximate MCMC methods often need perfect/ sequential sampling and can mix poorly in high dimensions.
  • It introduces an approach for both exact and approximate MCMC that avoids perfect or sequential sampling by leveraging a tractable independence model to build a finite-sample unbiased Monte Carlo estimate of the Metropolis–Hastings ratio.
  • The authors argue that this construction is key to improving scalability in high-dimensional settings, where prior methods tend to become impractical.
  • The method is demonstrated on the Ising model, and the paper shows how gradient-based proposals (e.g., Langevin and Hamiltonian Monte Carlo) can be derived as corollaries of the same procedure.
  • The work contributes a unifying framework that reframes a hard MCMC acceptance ratio problem into something solvable via unbiased finite-sample estimation using underlying independence structure.

Abstract

Bayesian inference for doubly-intractable pairwise exponential graphical models typically involves variations of the exchange algorithm or approximate Markov chain Monte Carlo (MCMC) samplers. However, existing methods for both classes of algorithms require either perfect samplers or sequential samplers for complex models, which are often either not available, or suffer from poor mixing, especially in high dimensions. We develop a method that does not require perfect or sequential sampling, and can be applied to both classes of methods: exact and approximate MCMC. The key to our approach is to utilize the tractable independence model underlying the intractable probabilistic graphical model for the purpose of constructing a finite sample unbiased Monte Carlo (and not MCMC) estimate of the Metropolis--Hastings ratio. This innovation turns out to be crucial for scalability in high dimensions. The method is demonstrated on the Ising model. Gradient-based alternatives to construct a proposal, such as Langevin and Hamiltonian Monte Carlo approaches, also arise as a natural corollary to our general procedure, and are demonstrated as well.

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