MLAILGAO-PHAug 22, 2024

Deconfounding Multi-Cause Latent Confounders: A Factor-Model Approach to Climate Model Bias Correction

arXiv:2408.12063v25 citationsh-index: 30
Originality Incremental advance
AI Analysis

This provides a robust solution for climate scientists to correct biases in climate predictions, though it is incremental as it builds on existing causality-based time series methods.

The paper tackles systematic biases in Global Climate Model outputs by proposing a factor-model approach that captures multi-cause latent confounders, resulting in significant improvements in precipitation accuracy.

Global Climate Models (GCMs) are crucial for predicting future climate changes by simulating the Earth systems. However, the GCM Outputs exhibit systematic biases due to model uncertainties, parameterization simplifications, and inadequate representation of complex climate phenomena. Traditional bias correction methods, which rely on historical observation data and statistical techniques, often neglect unobserved confounders, leading to biased results. This paper proposes a novel bias correction approach to utilize both GCM and observational data to learn a factor model that captures multi-cause latent confounders. Inspired by recent advances in causality based time series deconfounding, our method first constructs a factor model to learn latent confounders from historical data and then applies them to enhance the bias correction process using advanced time series forecasting models. The experimental results demonstrate significant improvements in the accuracy of precipitation outputs. By addressing unobserved confounders, our approach offers a robust and theoretically grounded solution for climate model bias correction.

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