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Higher-order least squares: assessing partial goodness of fit of linear causal models

Authors :
Schultheiss, Christoph
Bühlmann, Peter
Yuan, Ming
Source :
arXiv
Publication Year :
2022
Publisher :
Cornell University, 2022.

Abstract

We introduce a simple diagnostic test for assessing the overall or partial goodness of fit of a linear causal model with errors being independent of the covariates. In particular, we consider situations where hidden confounding is potentially present. We develop a method and discuss its capability to distinguish between covariates that are confounded with the response by latent variables and those that are not. Thus, we provide a test and methodology for partial goodness of fit. The test is based on comparing a novel higher-order least squares principle with ordinary least squares. In spite of its simplicity, the proposed method is extremely general and is also proven to be valid for high-dimensional settings.

Details

Language :
English
Database :
OpenAIRE
Journal :
arXiv
Accession number :
edsair.od.......150..ac7931e4d966346f5af7d2c840d40fd0