Learning Local Neighborhoods of Non-Gaussian Graphical Models
Abstract
Identifying the Markov properties or conditional independencies of a collection of random variables is a fundamental task in statistics for modeling and inference. Existing approaches often learn the structure of a probabilistic graph, which encodes these dependencies, by assuming that the variables follow a distribution with a simple parametric form. Moreover, the computational cost of many algorithms scales poorly for high-dimensional distributions, as they need to estimate all the edges in the graph simultaneously. In this work, we propose a scalable algorithm to infer the conditional independence relationships of each variable by exploiting the local Markov property. The proposed method, named Localized Sparsity Identification for Non-Gaussian Distributions (L-SING), estimates the graph by using flexible classes of transport maps to represent the conditional distribution for each variable. We show that L-SING includes existing approaches, such as neighborhood selection with Lasso, as a special case. We demonstrate the effectiveness of our algorithm in both Gaussian and non-Gaussian settings by comparing it to existing methods. Lastly, we show the scalability of the proposed approach by applying it to high-dimensional non-Gaussian examples, including a biological dataset with more than 150 variables.
Copyright and License (English)
© 2025, Association for the Advancement of Artificial Intelligence.
Funding (English)
SL acknowledges support from the Citadel Global Fixed Income SURF Endowment. YM acknowledges support from DOE ASCR award DE-SC0023187 and from the Office of Naval Research under award N00014-20-1-259. RB is grateful for support from the von K´arm´an instructorship at Caltech, the Air Force Office of Scientific Research MURI on “Machine Learning and Physics-Based Modeling and Simulation” (award FA9550-20-1-0358) and a Department of Defense (DoD) Vannevar Bush Faculty Fellowship (award N00014-22-1-2790) held by Andrew M. Stuart.
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Additional details
- California Institute of Technology
- Citadel Global Fixed Income SURF Endowment -
- Office of Advanced Scientific Computing Research
- DE-SC0023187
- Office of Naval Research
- 00014-20-1-259
- United States Air Force Office of Scientific Research
- MURI on “Machine Learning and Physics-Based Modeling and Simulation” FA9550-20-1-0358
- United States Department of Defense
- Vannevar Bush Faculty Fellowship N00014- 22-1-2790
- Caltech groups
- Division of Engineering and Applied Science (EAS)
- Publication Status
- Published