English

Parameter and Structure Learning in Nested Markov Models

Machine Learning 2012-07-24 v1 Statistics Theory Statistics Theory

Abstract

The constraints arising from DAG models with latent variables can be naturally represented by means of acyclic directed mixed graphs (ADMGs). Such graphs contain directed and bidirected arrows, and contain no directed cycles. DAGs with latent variables imply independence constraints in the distribution resulting from a 'fixing' operation, in which a joint distribution is divided by a conditional. This operation generalizes marginalizing and conditioning. Some of these constraints correspond to identifiable 'dormant' independence constraints, with the well known 'Verma constraint' as one example. Recently, models defined by a set of the constraints arising after fixing from a DAG with latents, were characterized via a recursive factorization and a nested Markov property. In addition, a parameterization was given in the discrete case. In this paper we use this parameterization to describe a parameter fitting algorithm, and a search and score structure learning algorithm for these nested Markov models. We apply our algorithms to a variety of datasets.

Keywords

Cite

@article{arxiv.1207.5058,
  title  = {Parameter and Structure Learning in Nested Markov Models},
  author = {Ilya Shpitser and Thomas S. Richardson and James M. Robins and Robin Evans},
  journal= {arXiv preprint arXiv:1207.5058},
  year   = {2012}
}

Comments

To be presented at the UAI Workshop on Causal Structure Learning 2012

R2 v1 2026-06-21T21:39:17.732Z