Reconstruction of a directed acyclic graph with intervention
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Identification of causal relations among variables is central to many scientific investigations, as in regulatory network analysis of
gene interactions and brain network analysis of effective connectivity
of casual relations between regions of interest. Statistically,
causal relations are often modeled by a directed acyclic graph (DAG),
and hence that reconstruction of a DAG's structure leads to the discovery of
causal relations. Yet, reconstruction of a DAG's structure from observational
data is impossible because a DAG Gaussian model is usually not identifiable
with unequal error variances. In this thesis, we reconstruct a DAG's
structure with the help of interventional data. Particularly, we
construct a constrained likelihood to regularize intervention
in addition to adjacency matrices to identify a DAG's structure, subject to an
error variance constraint to further reinforce the model identifiability.
Theoretically, we show that the proposed constrained likelihood leads to
identifiable models, thus correct reconstruction of a DAG's structure through
parameter estimation even with unequal error variances. Computationally, we
design efficient algorithms for the proposed method. In simulations, we show
that the proposed method enables to produce a higher accuracy of
reconstruction with the help of interventional observations.
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University of Minnesota Ph.D. dissertation. 2021. Major: Statistics. Advisor: Xiaotong Shen. 1 computer file (PDF); 78 pages.
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Peng, Si. (2021). Reconstruction of a directed acyclic graph with intervention. Retrieved from the University Digital Conservancy, https://hdl.handle.net/11299/226375.
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