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English(EN) NoisyCausal: A Benchmark for Evaluating Causal Reasoning Under Structured Noise

新AI方法推动复杂、嘈杂和大规模数据的因果发现

几篇最新的arXiv论文介绍了因果发现领域的新方法和基准,该领域专注于从数据中识别因果关系。这些进展包括处理嘈杂或不完整数据、整合专家知识以及提高大规模数据集可扩展性的技术。新的基准和测试框架也正在开发中,以严格评估现有因果发现算法在各种假设违反情况下的鲁棒性,特别是在时间序列数据和自然语言推理方面。 AI

影响 因果发现方法的进步可能带来更可靠的AI系统,使其能够理解和推理因果关系,尤其是在复杂或嘈杂的环境中。

排序理由 2026年5月7日发表的多篇arXiv论文,详细介绍了因果发现的新方法和基准。

在 arXiv cs.CL 阅读 →

AI 生成摘要 · Google Gemini · 来自 37 个来源。 我们如何撰写摘要 →

新AI方法推动复杂、嘈杂和大规模数据的因果发现

报道来源 [37]

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    具有连续处理的因果基础模型

    Causal inference, estimating causal effects from observational data, is a fundamental tool in many disciplines. Of particular importance across a variety of domains is the continuous treatment setting, where the variable of intervention has a continuous range. This setting is far…

  2. arXiv cs.LG TIER_1 English(EN) · Francesco Locatello ·

    因果学习与不变性原理

    Causal discovery, the problem of inferring the direction of causality, is generally ill-posed. We use the language of structural causal models (SCM) to show that assuming that the causal relations are acyclic and invariant across multiple environments (e.g., the way minimum wage …

  3. Hugging Face Daily Papers TIER_1 English(EN) ·

    因果学习与不变性原理

    Causal discovery, the problem of inferring the direction of causality, is generally ill-posed. We use the language of structural causal models (SCM) to show that assuming that the causal relations are acyclic and invariant across multiple environments (e.g., the way minimum wage …

  4. arXiv cs.AI TIER_1 English(EN) · Francesco Locatello ·

    迈向对因果效应识别中的选择偏差的整体理解

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  5. Hugging Face Daily Papers TIER_1 English(EN) ·

    IV-ICL:通过上下文学习使用工具变量界定因果效应

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  6. Hugging Face Daily Papers TIER_1 English(EN) ·

    潜变量存在时因果结构学习的递归分解框架

    Constraint-based causal discovery is widely used for learning causal structures, but heavy reliance on conditional independence (CI) testing makes it computationally expensive in high-dimensional settings. To mitigate this limitation, many divide-and-conquer frameworks have been …

  7. Hugging Face Daily Papers TIER_1 English(EN) ·

    ConfoundingSHAP:量化因果推断中的混淆强度

    In causal inference, confounders are variables that influence both treatment decisions and outcomes. However, unlike as in randomized clinical trials, the treatment assignment mechanism in observational studies is not known, and it is thus unclear which covariates act as confound…

  8. arXiv cs.AI TIER_1 English(EN) · Alex Markham ·

    具有循环的粗粒度线性非高斯因果模型

    Recent work on causal abstraction, in particular graphical approaches focusing on causal structure between clusters of variables, aims to summarize a high-dimensional causal structure in terms of a low-dimensional one. Existing methods for learning such summaries from data assume…

  9. arXiv cs.LG TIER_1 English(EN) · Chris J. Maddison ·

    基于证据先验的因果推断估计量的贝叶斯敏感性

    Causal inference, especially in observational studies, relies on untestable assumptions about the true data-generating process. Sensitivity analysis helps us determine how robust our conclusions are when we alter these underlying assumptions. Existing frameworks for sensitivity a…

  10. arXiv cs.LG TIER_1 English(EN) · Marvin Sextro, Weronika K{\l}os, Gabriel Dernbach ·

    MapPFN:在上下文中学习因果扰动图

    arXiv:2601.21092v3 Announce Type: replace Abstract: Planning effective interventions in biological systems requires treatment-effect models that adapt to unseen biological contexts by identifying their specific underlying mechanisms. Yet single-cell perturbation datasets span onl…

  11. arXiv cs.LG TIER_1 English(EN) · Shicheng Fan, Nour Elhendawy, Jianle Sun, Ke Fang, Kun Zhang, Yihang Wang, Lu Cheng ·

    MOSAIC:通过稀疏可加可识别因果学习在科学时间序列中进行模块发现

    arXiv:2605.05524v1 Announce Type: new Abstract: Causal representation learning (CRL) seeks to recover latent variables with identifiability guarantees, typically up to permutation and component-wise reparameterization under appropriate assumptions. However, identifiability does n…

  12. arXiv cs.LG TIER_1 English(EN) · Sunmin Oh, Sang-Yun Oh, Gunwoong Park ·

    用于大规模因果发现的宽松最稀疏排列公式

    arXiv:2605.05568v1 Announce Type: cross Abstract: Despite the growing availability of large datasets, causal structure learning remains computationally prohibitive at scale. We revisit sparsest-permutation learning for linear structural equation models and show that exact Cholesk…

  13. arXiv cs.LG TIER_1 English(EN) · Joseph D. Ramsey ·

    非线性因果发现的傅里叶特征方法:混合数据中的FFML评分和FFCI检验

    arXiv:2605.05743v1 Announce Type: cross Abstract: Gaussian process marginal likelihood scores and kernel conditional independence tests are theoretically appealing for nonlinear causal discovery but computationally prohibitive at scale. We present two complementary RFF-based meth…

  14. arXiv cs.LG TIER_1 English(EN) · Adrick Tench, Thomas Demeester ·

    用于因果发现的动态专家指导模型平均

    arXiv:2601.16715v2 Announce Type: replace Abstract: Would-be practitioners of causal discovery face a dizzying array of algorithms without a clear best choice. This abundance of competitive methods makes ensembling a natural strategy for practical applications. At the same time, …

  15. arXiv cs.CL TIER_1 English(EN) · Zhi Xu, Yun Fu ·

    NoisyCausal:一个用于评估结构化噪声下因果推理的基准

    arXiv:2605.04313v1 Announce Type: new Abstract: Causal reasoning in natural language requires identifying relevant variables, understanding their interactions, and reasoning about effects and interventions, often under noisy or ambiguous conditions. While large language models (L…

  16. arXiv cs.LG TIER_1 English(EN) · Bruno Petrungaro, Anthony C. Constantinou ·

    具有可变滞后时间序列因果发现

    arXiv:2605.04081v1 Announce Type: new Abstract: Causal Bayesian Networks (CBNs) are a powerful tool for reasoning under uncertainty about complex real-world problems. Such problems evolve over time, responding to external shocks as they occur. To support decision-making, CBNs req…

  17. arXiv cs.LG TIER_1 English(EN) · Geert Mesters, Alvaro Ribot, Anna Seigal, Piotr Zwiernik ·

    均值独立和线性下的因果发现

    arXiv:2605.04381v1 Announce Type: cross Abstract: Causal discovery methods such as LiNGAM identify causal structure from observational data by assuming mutually independent disturbances. This assumption is fragile: shared volatility, common scale effects, or other forms of depend…

  18. arXiv cs.LG TIER_1 English(EN) · Thomas S. Robinson, Ranjit Lall ·

    PAIR-CI:用于不完整数据因果发现的校准条件独立性检验

    arXiv:2605.04838v1 Announce Type: cross Abstract: The standard constraint-based paradigm for causal discovery with incomplete data -- impute first, test second -- is frequently miscalibrated: any consistent conditional independence (CI) test rejects a true null with probability a…

  19. arXiv cs.LG TIER_1 English(EN) · Gideon Stein, Niklas Penzel, Tristan Piater, Joachim Denzler ·

    TCD-Arena:评估时间序列因果发现方法在违反假设时的鲁棒性

    arXiv:2605.03045v1 Announce Type: new 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 limi…

  20. Hugging Face Daily Papers TIER_1 English(EN) ·

    均值独立和线性下的因果发现

    Causal discovery methods such as LiNGAM identify causal structure from observational data by assuming mutually independent disturbances. This assumption is fragile: shared volatility, common scale effects, or other forms of dependence can cause the methods to recover the wrong ca…

  21. arXiv cs.CL TIER_1 English(EN) · Yun Fu ·

    NoisyCausal:一个用于评估结构化噪声下因果推理的基准

    Causal reasoning in natural language requires identifying relevant variables, understanding their interactions, and reasoning about effects and interventions, often under noisy or ambiguous conditions. While large language models (LLMs) exhibit strong general reasoning abilities,…

  22. arXiv stat.ML TIER_1 English(EN) · Francesco Montagna, Francesco Locatello ·

    因果学习与不变性原理

    arXiv:2605.13589v1 Announce Type: new Abstract: Causal discovery, the problem of inferring the direction of causality, is generally ill-posed. We use the language of structural causal models (SCM) to show that assuming that the causal relations are acyclic and invariant across mu…

  23. arXiv stat.ML TIER_1 English(EN) · Oliver J. Hines, Caleb H. Miles ·

    使用 Bregman-Riesz 回归学习因果推断中的密度比

    arXiv:2510.16127v2 Announce Type: replace Abstract: The ratio of two probability density functions is a fundamental quantity that appears in many areas of statistics and machine learning, including causal inference, reinforcement learning, covariate shift, outlier detection, inde…

  24. arXiv stat.ML TIER_1 English(EN) · Jin Du, Li Chen, Xun Xian, An Luo, Fangqiao Tian, Ganghua Wang, Charles Doss, Xiaotong Shen, Jie Ding ·

    冰淇淋不会导致溺水:在因果推断的统计陷阱中对大型语言模型进行基准测试

    arXiv:2505.13770v3 Announce Type: replace-cross Abstract: Reliable causal inference is essential for making decisions in high-stakes areas like medicine, economics, and public policy. However, it remains unclear whether large language models (LLMs) can handle rigorous and trustwo…

  25. arXiv stat.ML TIER_1 English(EN) · Hao Zhang ·

    潜变量存在时因果结构学习的递归分解框架

    Constraint-based causal discovery is widely used for learning causal structures, but heavy reliance on conditional independence (CI) testing makes it computationally expensive in high-dimensional settings. To mitigate this limitation, many divide-and-conquer frameworks have been …

  26. arXiv stat.ML TIER_1 English(EN) · Stefan Feuerriegel ·

    通过先验数据拟合网络实现因果敏感性分析的摊销

    Causal sensitivity analysis aims to provide bounds for causal effect estimates in the presence of unobserved confounding. However, existing methods for causal sensitivity analysis are per-instance procedures, meaning that changes to the dataset, causal query, sensitivity level, o…

  27. arXiv stat.ML TIER_1 (CA) · Tobias Maringgele, Jalal Etesami ·

    Optimal Experiments for Partial Causal Effect Identification

    arXiv:2605.06993v1 Announce Type: cross Abstract: Causal queries are often only partially identifiable from observational data, and experiments that could tighten the resulting bounds are typically costly. We study the problem of selecting, prior to observing experimental outcome…

  28. arXiv stat.ML TIER_1 English(EN) · Shakeel Gavioli-Akilagun, Kieran Wood, Francesco Quinzan ·

    使用核方法和 copulas 检测因果依赖关系的变化

    arXiv:2605.05809v1 Announce Type: cross Abstract: We propose a framework for determining whether the causal dependence of an outcome $Y$ on a covariate $X$ changes at a given time point, given confounders $\boldsymbol{Z}$. For instance, in financial markets, the effect of a marke…

  29. arXiv stat.ML TIER_1 (CA) · Jalal Etesami ·

    部分因果效应识别的最优实验

    Causal queries are often only partially identifiable from observational data, and experiments that could tighten the resulting bounds are typically costly. We study the problem of selecting, prior to observing experimental outcomes, a cost-constrained subset of experiments that m…

  30. arXiv stat.ML TIER_1 English(EN) · Francesco Quinzan ·

    使用核方法和 copula 检测因果依赖性变化

    We propose a framework for determining whether the causal dependence of an outcome $Y$ on a covariate $X$ changes at a given time point, given confounders $\boldsymbol{Z}$. For instance, in financial markets, the effect of a market indicator on asset returns may causally change o…

  31. arXiv stat.ML TIER_1 English(EN) · Joseph D. Ramsey ·

    非线性因果发现的傅里叶特征方法:混合数据中的FFML评分和FFCI检验

    Gaussian process marginal likelihood scores and kernel conditional independence tests are theoretically appealing for nonlinear causal discovery but computationally prohibitive at scale. We present two complementary RFF-based methods forming a practical toolkit for score-based, c…

  32. arXiv stat.ML TIER_1 English(EN) · Gunwoong Park ·

    用于大规模因果发现的宽松最稀疏排列公式

    Despite the growing availability of large datasets, causal structure learning remains computationally prohibitive at scale. We revisit sparsest-permutation learning for linear structural equation models and show that exact Cholesky factorization is unnecessary for structure recov…

  33. arXiv stat.ML TIER_1 English(EN) · Ranjit Lall ·

    PAIR-CI:用于不完整数据因果发现的校准条件独立性检验

    The standard constraint-based paradigm for causal discovery with incomplete data -- impute first, test second -- is frequently miscalibrated: any consistent conditional independence (CI) test rejects a true null with probability approaching 1 when imputation error induces spuriou…

  34. arXiv stat.ML TIER_1 English(EN) · Piotr Zwiernik ·

    均值独立和线性下的因果发现

    Causal discovery methods such as LiNGAM identify causal structure from observational data by assuming mutually independent disturbances. This assumption is fragile: shared volatility, common scale effects, or other forms of dependence can cause the methods to recover the wrong ca…

  35. arXiv stat.ML TIER_1 English(EN) · Xihang Shan, Da Zhou ·

    PRCD-MAP:学习如何信任因果发现中不完美的先验知识

    arXiv:2605.01669v1 Announce Type: new Abstract: External priors of unknown reliability create a brittle trade-off in causal discovery: blind trust amplifies errors, blind rejection wastes signal. Real priors are also \emph{heterogeneously} reliable -- physical laws are trustworth…

  36. arXiv stat.ML TIER_1 English(EN) · Da Zhou ·

    PRCD-MAP:学习如何信任因果发现中不完美的先验知识

    External priors of unknown reliability create a brittle trade-off in causal discovery: blind trust amplifies errors, blind rejection wastes signal. Real priors are also \emph{heterogeneously} reliable -- physical laws are trustworthy, LLM-suggested edges are speculative -- yet ex…

  37. Towards AI TIER_1 English(EN) · Ruiz Rivera ·

    重新思考预测因子:为何因果推理在数据科学中至关重要(第一部分)

    <figure><img alt="" src="https://cdn-images-1.medium.com/max/1024/1*nNbj5vzm6X-yFgapvo2g5g.jpeg" /><figcaption>Photo by <a href="https://unsplash.com/@theshubhamdhage?utm_source=unsplash&amp;utm_medium=referral&amp;utm_content=creditCopyText">Shubham Dhage</a> on <a href="https:/…