Clark Glymour

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"Clark Glymour"

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Michael Friedman grad student Princeton (Philosophy Tree)
Peter Spirtes grad student 1981 University of Pittsburgh (MathTree)
Richard Scheines grad student 1987 University of Pittsburgh (Computer Science Tree)
Thomas S. Richardson grad student 1996 Carnegie Mellon (MathTree)
Maralee Harrell grad student 2000 UCSD
David Danks grad student 2001 UCSD
Joseph Ramsey grad student 2001 UCSD
Dirk Schlimm grad student 2005 Carnegie Mellon
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Publications

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Glymour C, Zhang K, Spirtes P. (2019) Review of Causal Discovery Methods Based on Graphical Models. Frontiers in Genetics. 10: 524
Runge J, Bathiany S, Bollt E, et al. (2019) Inferring causation from time series in Earth system sciences. Nature Communications. 10: 2553
Sanchez-Romero R, Ramsey JD, Zhang K, et al. (2019) Estimating feedforward and feedback effective connections from fMRI time series: Assessments of statistical methods. Network Neuroscience (Cambridge, Mass.). 3: 274-306
Glymour C, Ramsey JD, Zhang K. (2019) The Evaluation of Discovery: Models, Simulation and Search through “Big Data” Open Philosophy. 2: 39-48
Sedgewick AJ, Buschur K, Shi I, et al. (2018) Mixed Graphical Models for Integrative Causal Analysis with Application to Chronic Lung Disease Diagnosis and Prognosis. Bioinformatics (Oxford, England)
Raghu VK, Ramsey JD, Morris A, et al. (2018) Comparison of strategies for scalable causal discovery of latent variable models from mixed data. International Journal of Data Science and Analytics. 6: 33-45
Zhang K, Schölkopf B, Spirtes P, et al. (2018) Learning causality and causality-related learning: some recent progress. National Science Review. 5: 26-29
Ramsey J, Glymour M, Sanchez-Romero R, et al. (2017) A million variables and more: the Fast Greedy Equivalence Search algorithm for learning high-dimensional graphical causal models, with an application to functional magnetic resonance images. International Journal of Data Science and Analytics. 3: 121-129
Murray-Watters A, Glymour C. (2015) What Is Going on Inside the Arrows? Discovering the Hidden Springs in Causal Models. Philosophy of Science. 82: 556-586
Cooper GF, Bahar I, Becich MJ, et al. (2015) The Center for causal discovery of biomedical knowledge from Big Data. Journal of the American Medical Informatics Association : Jamia
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