A Complete Decomposition of KL Error using Refined Information and Mode Interaction Selection
arXiv stat.ML / 4/14/2026
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Key Points
- The paper revisits log-linear (energy-based) models through information geometry to explicitly study higher-order mode interactions beyond the usual 1-body (independent) and 2-body (Boltzmann/Markov) settings.
- It derives a complete decomposition of KL error based on these mode interactions, and formulates a sparse selection problem over candidate higher-order modes.
- The authors argue that sparse selection helps learned distributions generalize better by using limited data more efficiently than dense interaction modeling.
- They propose MAHGenTa, an algorithm combining a novel Monte-Carlo sampling method for energy-based models with a greedy heuristic aimed at statistical robustness.
- Experiments on synthetic and real-world datasets show MAHGenTa improves generative log-likelihood and can be adapted to discriminative classification.
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