Learning Discrete Latent Variable Structures with Tensor Rank Conditions Zhengming Chen
–Neural Information Processing Systems
Unobserved discrete data are ubiquitous in many scientific disciplines, and how to learn the causal structure of these latent variables is crucial for uncovering data patterns. Most studies focus on the linear latent variable model or impose strict constraints on latent structures, which fail to address cases in discrete data involving non-linear relationships or complex latent structures.
Neural Information Processing Systems
May-28-2025, 17:19:01 GMT
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