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.
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