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A Robust Independence Test for Constraint-Based Learning of Causal Structure

Artificial Intelligence 2012-12-12 v1 Machine Learning Machine Learning

Abstract

Constraint-based (CB) learning is a formalism for learning a causal network with a database D by performing a series of conditional-independence tests to infer structural information. This paper considers a new test of independence that combines ideas from Bayesian learning, Bayesian network inference, and classical hypothesis testing to produce a more reliable and robust test. The new test can be calculated in the same asymptotic time and space required for the standard tests such as the chi-squared test, but it allows the specification of a prior distribution over parameters and can be used when the database is incomplete. We prove that the test is correct, and we demonstrate empirically that, when used with a CB causal discovery algorithm with noninformative priors, it recovers structural features more reliably and it produces networks with smaller KL-Divergence, especially as the number of nodes increases or the number of records decreases. Another benefit is the dramatic reduction in the probability that a CB algorithm will stall during the search, providing a remedy for an annoying problem plaguing CB learning when the database is small.

Keywords

Cite

@article{arxiv.1212.2464,
  title  = {A Robust Independence Test for Constraint-Based Learning of Causal Structure},
  author = {Denver Dash and Marek J. Druzdzel},
  journal= {arXiv preprint arXiv:1212.2464},
  year   = {2012}
}

Comments

Appears in Proceedings of the Nineteenth Conference on Uncertainty in Artificial Intelligence (UAI2003)

R2 v1 2026-06-21T22:52:26.417Z