Specific and Shared Causal Relation Modeling and Mechanism-Based Clustering
Huang, Biwei, Zhang, Kun, Xie, Pengtao, Gong, Mingming, Xing, Eric P., Glymour, Clark
–Neural Information Processing Systems
State-of-the-art approaches to causal discovery usually assume a fixed underlying causal model. However, it is often the case that causal models vary across domains or subjects, due to possibly omitted factors that affect the quantitative causal effects. As a typical example, causal connectivity in the brain network has been reported to vary across individuals, with significant differences across groups of people, such as autistics and typical controls. In this paper, we develop a unified framework for causal discovery and mechanism-based group identification. In particular, we propose a specific and shared causal model (SSCM), which takes into account the variabilities of causal relations across individuals/groups and leverages their commonalities to achieve statistically reliable estimation.
Neural Information Processing Systems
Mar-19-2020, 02:15:43 GMT
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