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.

Abstract

Causal Discovery (CD) is a powerful framework for scientific inquiry. Yet, its practical adoption is hindered by a reliance on strong, often unverifiable assumptions and a lack of robust performance assessment. To address these limitations and advance empirical CD evaluation, we present TCD-Arena, a modularized, highly customizable, and extendable testing kit to assess the robustness of time series CD algorithms against stepwise more severe assumption violations. For demonstration, we conduct an extensive empirical study comprising around 30 million individual CD attempts and reveal nuanced robustness profiles for 33 distinct assumption violations. Further, we investigate CD ensembles and find that they have the potential to improve general robustness, which has implications for real-world applications. With this, we strive to ultimately facilitate the development of CD methods that are reliable for a diverse range of synthetic and potentially real-world data conditions.

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