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DecoR: Deconfounding Time Series with Robust Regression

DecoR: Deconfounding Time Series with Robust Regression

来源:Arxiv_logoArxiv
英文摘要

Causal inference on time series data is a challenging problem, especially in the presence of unobserved confounders. This work focuses on estimating the causal effect between two time series that are confounded by a third, unobserved time series. Assuming spectral sparsity of the confounder, we show how in the frequency domain this problem can be framed as an adversarial outlier problem. We introduce Deconfounding by Robust regression (DecoR), a novel approach that estimates the causal effect using robust linear regression in the frequency domain. Considering two different robust regression techniques, we first improve existing bounds on the estimation error for such techniques. Crucially, our results do not require distributional assumptions on the covariates. We can therefore use them in time series settings. Applying these results to DecoR, we prove, under suitable assumptions, upper bounds for the estimation error of DecoR that imply consistency. We demonstrate DecoR's effectiveness through experiments on both synthetic and real-world data from Earth system science. The simulation experiments furthermore suggest that DecoR is robust with respect to model misspecification.

Jonas Peters、Felix Schur

数学物理学

Jonas Peters,Felix Schur.DecoR: Deconfounding Time Series with Robust Regression[EB/OL].(2024-06-11)[2025-06-30].https://arxiv.org/abs/2406.07005.点此复制

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