TCD-Arena: Assessing Robustness of Time Series Causal Discovery Methods Against Assumption Violations
arXiv cs.LG / 5/6/2026
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Key Points
- The paper introduces TCD-Arena, a modular and customizable testing kit designed to evaluate how time-series causal discovery (CD) methods remain robust when key assumptions are violated.
- The kit supports “stepwise” increases in the severity of assumption violations, addressing the gap left by CD methods’ reliance on strong, often unverifiable assumptions.
- An extensive empirical study is reported, totaling around 30 million individual CD attempts, resulting in detailed robustness profiles across 33 different types of assumption violations.
- The authors also examine CD ensembles and find they can improve general robustness, suggesting a practical path toward more reliable CD for real-world use.
- The overall goal is to enable more reliable development and benchmarking of CD algorithms across a wider variety of synthetic (and potentially real-world) data conditions.
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