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A generalized tetrad constraint for testing conditional independence given a latent variable

Naiwen Ying, Ping Zhang, Shanshan Luo, Wang Miao

Abstract

The tetrad constraint is widely used to test whether four observed variables are conditionally independent given a latent variable, based on the fact that if four observed variables following a linear model are mutually independent after conditioning on an unobserved variable, then products of covariances of any two different pairs of these four variables are equal. It is an important tool for discovering a latent common cause or distinguishing between alternative linear causal structures. However, the classical tetrad constraint fails in nonlinear models because the covariance of observed variables cannot capture nonlinear association. In this paper, we propose a generalized tetrad constraint, which establishes a testable implication for conditional independence given a latent variable in nonlinear and nonparametric models. In linear models, this constraint implies the classical tetrad constraint; in nonlinear models, it remains a necessary condition for conditional independence but the classical tetrad constraint no longer is. Based on this constraint, we further propose a formal test, which can control type I error and has power approaching unity under certain conditions. We illustrate the proposed approach via simulations and two real data applications on mental ability tests and on moral attitudes towards dishonesty.

A generalized tetrad constraint for testing conditional independence given a latent variable

Abstract

The tetrad constraint is widely used to test whether four observed variables are conditionally independent given a latent variable, based on the fact that if four observed variables following a linear model are mutually independent after conditioning on an unobserved variable, then products of covariances of any two different pairs of these four variables are equal. It is an important tool for discovering a latent common cause or distinguishing between alternative linear causal structures. However, the classical tetrad constraint fails in nonlinear models because the covariance of observed variables cannot capture nonlinear association. In this paper, we propose a generalized tetrad constraint, which establishes a testable implication for conditional independence given a latent variable in nonlinear and nonparametric models. In linear models, this constraint implies the classical tetrad constraint; in nonlinear models, it remains a necessary condition for conditional independence but the classical tetrad constraint no longer is. Based on this constraint, we further propose a formal test, which can control type I error and has power approaching unity under certain conditions. We illustrate the proposed approach via simulations and two real data applications on mental ability tests and on moral attitudes towards dishonesty.

Paper Structure

This paper contains 27 sections, 7 theorems, 56 equations, 1 figure, 8 tables.

Key Result

Theorem 1

Under Assumptions assum:1 and assum:2, there exist unique square-integrable functions $h_0$ and $g_0$ satisfying the following equations almost surely: Moreover, these functions are equal to the confounding bridge functions defined in Equations eq:3 and eq:4, which are therefore identifiable from the observed data. If in addition ${\mathbb H}_0$ is correct, then $h_0$ and $g_0$ also satisfy the f

Figures (1)

  • Figure 1: Causal diagram for ${\mathbb H}_0$.

Theorems & Definitions (18)

  • Example 1
  • Theorem 1
  • Example 2: Continuum of Example \ref{['ex:1']}
  • Proposition 1
  • Proposition 2
  • Example 3
  • Proposition 3
  • Theorem 2
  • Proposition 4
  • proof
  • ...and 8 more