Geometry of the Faithfulness Assumption in Causal Inference

Abstract

Many algorithms for inferring causality rely heavily on the faithfulness assumption. The main justification for imposing this assumption is that the set of unfaithful distributions has Lebesgue measure zero, since it can be seen as a collection of hypersurfaces in a hypercube. However, due to sampling error the faithfulness condition alone is not sufficient for statistical estimation, and strong-faithfulness has been proposed and assumed to achieve uniform or high-dimensional consistency. In contrast to the plain faithfulness assumption, the set of distributions that is not strong-faithful has nonzero Lebesgue measure and in fact, can be surprisingly large as we show in this paper. We study the strong-faithfulness condition from a geometric and combinatorial point of view and give upper and lower bounds on the Lebesgue measure of strong-faithful distributions for various classes of directed acyclic graphs. Our results imply fundamental limitations for the PC-algorithm and potentially also for other algorithms based on partial correlation testing in the Gaussian case.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 2014
Accession Number
AD1006863

Entities

People

  • Bin Yu
  • Caroline Uhler
  • Garvesh Raskutti
  • Peter Buhlmann

Organizations

  • University of California, Berkeley

Tags

Communities of Interest

  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Algebraic Geometry
  • Algorithms
  • Analytic Functions
  • Artificial Intelligence
  • Computations
  • Consistency
  • Covariance
  • Electronic Mail
  • Equations
  • Gaussian Distributions
  • Geometry
  • Power Series
  • Random Variables
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  • Statistical Estimation
  • Statistics
  • Triangles

Fields of Study

  • Computer science

Readers

  • Applied Combinatorial Optimization and Logic Circuit Design.
  • Graph Algorithms and Convex Optimization.
  • Regression Analysis.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Machine Learning Algorithms