Learning Attribute Patterns in High-Dimensional Structured Latent Attribute Models

8 Apr 2019Yuqi GuGongjun Xu

Structured latent attribute models (SLAMs) are a special family of discrete latent variable models widely used in social and biological sciences. This paper considers the problem of learning significant attribute patterns from a SLAM with potentially high-dimensional configurations of the latent attributes... (read more)

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