Efficient inference of interventional distributions
Arnab Bhattacharyya, Sutanu Gayen, Saravanan Kandasamy, Vedant Raval,, N. V. Vinodchandran

TL;DR
This paper presents a polynomial-time algorithm for efficiently inferring interventional distributions in causal Bayesian networks, advancing the computational methods for causal inference under certain assumptions.
Contribution
It provides the first efficient version of the Shpitser-Pearl algorithm for causal inference, with polynomial-time performance under natural assumptions.
Findings
Algorithm outputs a distribution close to the true interventional distribution if identifiable.
Efficient inference is possible for bounded-size variable sets under natural assumptions.
Intractability results for arbitrary variable sets unless major complexity class collapses occur.
Abstract
We consider the problem of efficiently inferring interventional distributions in a causal Bayesian network from a finite number of observations. Let be a causal model on a set of observable variables on a given causal graph . For sets , and setting to , let denote the interventional distribution on with respect to an intervention to variables . Shpitser and Pearl (AAAI 2006), building on the work of Tian and Pearl (AAAI 2001), gave an exact characterization of the class of causal graphs for which the interventional distribution can be uniquely determined. We give the first efficient version of the Shpitser-Pearl algorithm. In particular, under natural assumptions, we give a polynomial-time algorithm that on input…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Machine Learning and Algorithms · Advanced Graph Neural Networks
