Robust Time Series Causal Discovery for Agent-Based Model Validation
Gene Yu, Ce Guo, Wayne Luk

TL;DR
This paper introduces a robust causal discovery framework for agent-based model validation, improving accuracy and reliability in noisy, high-dimensional time series data through novel extensions of existing algorithms.
Contribution
It proposes RCV-VarLiNGAM and RCV-PCMCI, novel extensions that enhance causal discovery robustness in complex, noisy time series for ABM validation.
Findings
Enhanced causal structure identification accuracy
Greater robustness to noise and high-dimensional data
Consistent performance across diverse datasets
Abstract
Agent-Based Model (ABM) validation is crucial as it helps ensuring the reliability of simulations, and causal discovery has become a powerful tool in this context. However, current causal discovery methods often face accuracy and robustness challenges when applied to complex and noisy time series data, which is typical in ABM scenarios. This study addresses these issues by proposing a Robust Cross-Validation (RCV) approach to enhance causal structure learning for ABM validation. We develop RCV-VarLiNGAM and RCV-PCMCI, novel extensions of two prominent causal discovery algorithms. These aim to reduce the impact of noise better and give more reliable causal relation results, even with high-dimensional, time-dependent data. The proposed approach is then integrated into an enhanced ABM validation framework, which is designed to handle diverse data and model structures. The approach is…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Bayesian Modeling and Causal Inference · Fault Detection and Control Systems
