Adjacency-Faithfulness and Conservative Causal Inference
Joseph Ramsey, Jiji Zhang, Peter L. Spirtes

TL;DR
This paper introduces the Conservative PC (CPC) algorithm, which weakens the standard Faithfulness assumption in causal inference, leading to fewer false causal conclusions while maintaining asymptotic correctness.
Contribution
It proposes the CPC algorithm that operates under the weaker Adjacency-Faithfulness assumption, improving causal inference accuracy and efficiency.
Findings
CPC is nearly as fast as PC algorithm.
CPC produces fewer false causal arrowheads.
CPC is asymptotically correct under Adjacency-Faithfulness.
Abstract
Most causal inference algorithms in the literature (e.g., Pearl (2000), Spirtes et al. (2000), Heckerman et al. (1999)) exploit an assumption usually referred to as the causal Faithfulness or Stability condition. In this paper, we highlight two components of the condition used in constraint-based algorithms, which we call "Adjacency-Faithfulness" and "Orientation-Faithfulness". We point out that assuming Adjacency-Faithfulness is true, it is in principle possible to test the validity of Orientation-Faithfulness. Based on this observation, we explore the consequence of making only the Adjacency-Faithfulness assumption. We show that the familiar PC algorithm has to be modified to be (asymptotically) correct under the weaker, Adjacency-Faithfulness assumption. Roughly the modified algorithm, called Conservative PC (CPC), checks whether Orientation-Faithfulness holds in the orientation…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Advanced Causal Inference Techniques · Statistical Methods and Inference
