Causal network learning with non-invertible functional relationships

04/20/2020
by   Bingling Wang, et al.
0

Discovery of causal relationships from observational data is an important problem in many areas. Several recent results have established the identifiability of causal DAGs with non-Gaussian and/or nonlinear structural equation models (SEMs). In this paper, we focus on nonlinear SEMs defined by non-invertible functions, which exist in many data domains, and propose a novel test for non-invertible bivariate causal models. We further develop a method to incorporate this test in structure learning of DAGs that contain both linear and nonlinear causal relations. By extensive numerical comparisons, we show that our algorithms outperform existing DAG learning methods in identifying causal graphical structures. We illustrate the practical application of our method in learning causal networks for combinatorial binding of transcription factors from ChIP-Seq data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/12/2021

Unsuitability of NOTEARS for Causal Graph Discovery

Causal Discovery methods aim to identify a DAG structure that represents...
research
02/23/2023

Rank-Based Causal Discovery for Post-Nonlinear Models

Learning causal relationships from empirical observations is a central t...
research
10/30/2022

Nonlinear Causal Discovery via Kernel Anchor Regression

Learning causal relationships is a fundamental problem in science. Ancho...
research
03/27/2023

Identifiability of causal graphs under nonadditive conditionally parametric causal models

Causal discovery from observational data is a very challenging, often im...
research
05/18/2022

Ancestor regression in linear structural equation models

We present a new method for causal discovery in linear structural equati...
research
07/06/2020

Causal Feature Selection via Orthogonal Search

The problem of inferring the direct causal parents of a response variabl...
research
01/28/2022

Causal Discovery with Heterogeneous Observational Data

We consider the problem of causal discovery (structure learning) from he...

Please sign up or login with your details

Forgot password? Click here to reset