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English(EN) FoundCause: Causal Discovery with Latent Confounders from Observational Data

新的因果发现方法应对隐藏混淆和偏差 · 跟踪 4 个来源

研究人员开发了从观测数据中发现因果关系的新方法,解决了隐藏混淆和结构偏差等挑战。一篇论文介绍了 StruBI,一种通过分析因果机制转移来识别结构偏差的算法,在合成数据和真实世界数据上的表现优于现有方法。另一种方法 FoundCause 是一个在合成数据上训练的摊销因果发现模型,可以单次传递将数据集映射到因果图,明确地对潜在混淆进行建模,并在各种数据集上取得了优异的结果。此外,一个名为 Balanced Twins 的框架解决了隐藏混淆的时间序列因果推断问题,能够对分阶段干预进行个体处理效应估计。 AI

影响 推动因果推断技术的发展,可能提高 AI 在复杂系统中理解和预测结果的能力。

排序理由 arXiv 上发表了多篇学术论文,详细介绍了因果发现和推断的新方法。

在 arXiv stat.ML 阅读 →

AI 生成摘要 · Google Gemini · 来自 7 个来源。 我们如何撰写摘要 →

新的因果发现方法应对隐藏混淆和偏差 · 跟踪 4 个来源

报道来源 [7]

  1. arXiv cs.AI TIER_1 English(EN) · Sridhar Mahadevan ·

    基于李括号几何的潜在混淆因果发现

    arXiv:2606.19610v1 Announce Type: cross Abstract: Recent work on Kan-Do-Calculus (KDC) has established that the boundary between passive observation and active intervention in causal inference is a category-theoretic bi-adjunction, with interventions modeled by left Kan extension…

  2. arXiv cs.LG TIER_1 English(EN) · Th\'eo Saulus, Simon Lacoste-Julien, Dhanya Sridhar ·

    无监督因果抽象发现

    arXiv:2606.19594v1 Announce Type: new Abstract: Causal abstractions formalize when a high-level structural causal model (SCM) captures the interventional behavior of a lower-level SCM. Existing applications of this notion largely follow a hypothesis-testing paradigm: an expert pr…

  3. arXiv cs.LG TIER_1 English(EN) · Praharsh Nanavati, Jilles Vreeken, David Kaltenpoth ·

    从因果机制转变中识别结构性偏差

    arXiv:2606.18834v1 Announce Type: new Abstract: Causal discovery methods commonly assume that all data is independently and identically distributed (i.i.d.) and that there are no unmeasured variables affecting the system. In practice, these assumptions are often violated, leading…

  4. arXiv stat.ML TIER_1 English(EN) · Ouali Maha, Ghattas Badih, Flachaire Emmanuel, Charpentier Philippe, Bozzi Laurent ·

    平衡双生子:具有隐藏混淆因素的时间序列因果推断

    arXiv:2606.18969v1 Announce Type: cross Abstract: Accurately estimating treatment effects in time series is essential for evaluating interventions in real-world applications, especially when treatment assignment is biased by unobserved factors. In many practical settings, interve…

  5. arXiv stat.ML TIER_1 English(EN) · Bozzi Laurent ·

    平衡双生子:具有隐藏混淆因素的时间序列因果推断

    Accurately estimating treatment effects in time series is essential for evaluating interventions in real-world applications, especially when treatment assignment is biased by unobserved factors. In many practical settings, interventions are adopted at different times across indiv…

  6. arXiv stat.ML TIER_1 English(EN) · Patrick Bl\"obaum, Krishnakumar Balasubramanian, Shiva Prasad Kasiviswanathan ·

    FoundCause:从观测数据中发现潜在混淆因素的因果发现

    arXiv:2606.17516v1 Announce Type: cross Abstract: Causal discovery from observational data remains challenging due to the need to recover directed structure and latent confounding without interventions. We propose FoundCause, an amortized causal discovery model trained entirely o…

  7. arXiv stat.ML TIER_1 English(EN) · Shiva Prasad Kasiviswanathan ·

    FoundCause:从观测数据中发现潜在混淆因素的因果发现

    Causal discovery from observational data remains challenging due to the need to recover directed structure and latent confounding without interventions. We propose FoundCause, an amortized causal discovery model trained entirely on synthetic data that maps datasets directly to ca…