Delta-AI: Local objectives for amortized inference in sparse graphical models

Jean-Pierre Falet, Hae Beom Lee, Nikolay Malkin, Chen Sun, Dragos Secrieru, Dinghuai Zhang, Guillaume Lajoie, Yoshua Bengio

Research output: Contribution to conferencePosterpeer-review

Abstract

We present a new algorithm for amortized inference in sparse probabilistic graphical models (PGMs), which we call Δ-amortized inference (Δ-AI). Our approach is based on the observation that when the sampling of variables in a PGM is seen as a sequence of actions taken by an agent, sparsity of the PGM enables local credit assignment in the agent's policy learning objective. This yields a local constraint that can be turned into a local loss in the style of generative flow networks (GFlowNets) that enables off-policy training but avoids the need to instantiate all the random variables for each parameter update, thus speeding up training considerably. The Δ-AI objective matches the conditional distribution of a variable given its Markov blanket in a tractable learned sampler, which has the structure of a Bayesian network, with the same conditional distribution under the target PGM. As such, the trained sampler recovers marginals and conditional distributions of interest and enables inference of partial subsets of variables. We illustrate Δ-AI's effectiveness for sampling from synthetic PGMs and training latent variable models with sparse factor structure. Code: https://github.com/GFNOrg/Delta-AI.
Original languageEnglish
Pages1-21
Number of pages21
Publication statusPublished - 9 May 2024
EventThe Twelfth International Conference on Learning Representations - Vienna, Austria
Duration: 7 May 202411 May 2024
https://iclr.cc/

Conference

ConferenceThe Twelfth International Conference on Learning Representations
Abbreviated titleICLR 2024
Country/TerritoryAustria
CityVienna
Period7/05/2411/05/24
Internet address

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