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A Core-Guided Approach to Learning Optimal Causal Graphs

机译:一种学习最佳因果图的核心引导方法

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Discovery of causal relations is an important part of data analysis. Recent exact Boolean optimization approaches enable tackling very general search spaces of causal graphs with feedback cycles and latent confounders, simultaneously obtaining high accuracy by optimally combining conflicting in-dependence information in sample data. We propose several domain-specific techniques and integrate them into a core-guided maximum satisfiability solver, thereby speeding up current state of the art in exact search for causal graphs with cycles and latent confounders on simulated and real-world data.
机译:发现因果关系是数据分析的重要组成部分。最近的精确布尔优化方法使得能够使用反馈周期和潜在混杂器来解决原因图的非常一般的搜索空间,同时通过最佳地组合示例数据中的冲突依赖信息来获得高精度。我们提出了多种域特定的技术并将它们集成到核心引导的最大可满足性求解器中,从而加速了本领域的当前状态,以精确地搜索模拟和实际数据上的循环和潜在混淆的因果图。

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