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Causal-discovery-based root-cause analysis and its application in time-series prediction error diagnosis

Abstract

Recent rapid advancements of machine learning have greatly enhanced the accuracy of prediction models, but most models remain "black boxes", making prediction error diagnosis challenging, especially with outliers. This lack of transparency hinders trust and reliability in industrial applications. Heuristic attribution methods, while helpful, often fail to capture true causal relationships, leading to inaccurate error attributions. Various root-cause analysis methods have been developed using Shapley values, yet they typically require predefined causal graphs, limiting their applicability for prediction errors in machine learning models. To address these limitations, we introduce the Causal-Discovery-based Root-Cause Analysis (CD-RCA) method that estimates causal relationships between the prediction error and the explanatory variables, without needing a pre-defined causal graph. By simulating synthetic error data, CD-RCA can identify variable contributions to outliers in prediction errors by Shapley values. Extensive experiments show CD-RCA outperforms current heuristic attribution methods.

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@article{yokoyama2025_2411.06990,
  title={ Causal-discovery-based root-cause analysis and its application in time-series prediction error diagnosis },
  author={ Hiroshi Yokoyama and Ryusei Shingaki and Kaneharu Nishino and Shohei Shimizu and Thong Pham },
  journal={arXiv preprint arXiv:2411.06990},
  year={ 2025 }
}
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