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Three-quarter Sibling Regression for Denoising Observational Data

Authors :
Shankar, Shiv
Sheldon, Daniel
Sun, Tao
Pickering, John
Dietterich, Thomas G.
Source :
IJCAI 2019
Publication Year :
2020

Abstract

Many ecological studies and conservation policies are based on field observations of species, which can be affected by systematic variability introduced by the observation process. A recently introduced causal modeling technique called 'half-sibling regression' can detect and correct for systematic errors in measurements of multiple independent random variables. However, it will remove intrinsic variability if the variables are dependent, and therefore does not apply to many situations, including modeling of species counts that are controlled by common causes. We present a technique called 'three-quarter sibling regression' to partially overcome this limitation. It can filter the effect of systematic noise when the latent variables have observed common causes. We provide theoretical justification of this approach, demonstrate its effectiveness on synthetic data, and show that it reduces systematic detection variability due to moon brightness in moth surveys.

Details

Database :
arXiv
Journal :
IJCAI 2019
Publication Type :
Report
Accession number :
edsarx.2101.00074
Document Type :
Working Paper