Chevalley, M., Mehrjou, A., & Schwab, P. (2024). Efficient Differentiable Discovery of Causal Order. arXiv preprint arXiv:2410.08787.
This research paper aims to address the limitations of the Intersort algorithm, specifically its computational cost and lack of differentiability, which hinder its application to large-scale datasets and integration into modern machine learning pipelines.
The authors propose DiffIntersort, a differentiable reformulation of the Intersort score, achieved by leveraging differentiable sorting and ranking techniques, including the Sinkhorn operator. This reformulation enables the use of gradient-based optimization methods to efficiently find causal orderings. They then integrate the DiffIntersort score as a regularizer within a causal discovery algorithm, promoting causal structures consistent with interventional data. The authors evaluate their method on synthetic datasets generated from various models, including linear, random Fourier features, gene regulatory networks, and neural networks. They compare DiffIntersort's performance against existing causal discovery algorithms using metrics like Structural Hamming Distance (SHD) and Structural Intervention Distance (SID).
DiffIntersort provides a practical and effective solution for discovering causal orderings from interventional data, particularly in high-dimensional settings. Its differentiability allows seamless integration into gradient-based learning frameworks, opening new possibilities for incorporating interventional faithfulness into modern causal machine learning pipelines.
This research significantly advances the field of causal discovery by providing a scalable and differentiable method for leveraging interventional data. This has important implications for various domains, including genomics, healthcare, and social sciences, where understanding causal relationships is crucial for decision-making and knowledge discovery.
While the proposed method demonstrates promising results, future research could explore its integration into more complex models, such as deep neural networks, to handle highly non-linear relationships. Additionally, applying DiffIntersort to real-world datasets in various domains would further validate its practical utility and potential impact.
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by Mathieu Chev... في arxiv.org 10-14-2024
https://arxiv.org/pdf/2410.08787.pdfاستفسارات أعمق