Algorithms for Models with Intractable Normalizing Functions
Murali Haran, Bokgyeong Kang, and Jaewoo Park

TL;DR
This paper reviews algorithms for inference in models with intractable normalizing functions, discussing their practical advantages, theoretical properties, and methods for assessing approximation accuracy, highlighting open research challenges.
Contribution
It provides a comprehensive overview of key algorithms, their connections, practical considerations, and introduces diagnostic methods for evaluating approximation quality.
Findings
Several algorithms are explained with their advantages and disadvantages.
Discussion on theoretical properties impacting practical use.
Introduction of diagnostic approaches for approximation accuracy.
Abstract
In this paper we discuss a well known computing problem -- inference for models with intractable normalizing functions. Models with intractable normalizing functions arise in a wide variety of areas, for instance network models, models for spatial data on lattices, spatial point processes, flexible models for count data and gene expression, and models for permutations. Simulating from these models for fixed parameter values is well studied, starting with work dating back seventy years to the origin of the Metropolis algorithm. On the other hand some of the most practical and theoretically justified algorithms for inference, particularly Bayesian inference, have only been developed within the past two decades. The most computationally efficient algorithms often do not have well developed theory and few if any approaches exist for assessing the quality of approximations based on them. For…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Bayesian Modeling and Causal Inference · Markov Chains and Monte Carlo Methods
