Discovering Hidden Variables in Noisy-Or Networks using Quartet Tests
–Neural Information Processing Systems
We give a polynomial-time algorithm for provably learning the structure and parameters of bipartite noisy-or Bayesian networks of binary variables where the top layer is completely hidden. Unsupervised learning of these models is a form of discrete factor analysis, enabling the discovery of hidden variables and their causal relationships with observed data. We obtain an efficient learning algorithm for a family of Bayesian networks that we call quartet-learnable. For each latent variable, the existence of a singly-coupled quartet allows us to uniquely identify and learn all parameters involving that latent variable. We give a proof of the polynomial sample complexity of our learning algorithm, and experimentally compare it to variational EM.
Neural Information Processing Systems
Mar-13-2024, 17:02:28 GMT
- Country:
- North America > United States > New Jersey > Mercer County > Princeton (0.14)
- Industry:
- Health & Medicine (0.93)