Hierarchical Latent Structure Learning through Online Inference
arXiv cs.LG / 3/20/2026
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Key Points
- HOLMES introduces a hierarchical online learning framework for multiscale latent structure, using a nested Chinese Restaurant Process prior and sequential Monte Carlo to enable trial-by-trial inference.
- The approach tackles the limitations of online latent-cause models with flat partitions and offline hierarchical models by enabling online inference over hierarchical latent representations.
- In simulations, HOLMES matches the predictive performance of flat models while learning more compact representations that enable one-shot transfer to higher-level latent categories.
- In a context-dependent task with nested temporal structure, HOLMES improved outcome prediction relative to flat models, demonstrating its ability to discover hierarchical structure in sequential data.
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