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Zeitschriftenartikel:

R. Pfeiffer, E. Bura, D. Kapla:
"Least squares and maximum likelihood estimation of sufficient reductions in regressions with matrix-valued predictors";
International Journal of Data Science and Analytics, 10 (2020), 4; S. 1 - 16.



Kurzfassung englisch:
We propose methods to estimate sufficient reductions in matrix-valued predictors for regression or classification. We assume that the first moment of the predictor matrix given the response can be decomposed into a row and column component via a Kronecker product structure. We obtain least squares and maximum likelihood estimates of the sufficient reductions in the matrix predictors, derive statistical properties of the resulting estimates and present fast computational algorithms with assured convergence. The performance of the proposed approaches in regression and classification is compared in simulations.We illustrate the methods on two examples, using longitudinally measured serum biomarker and neuroimaging data.

Schlagworte:
dimension reduction regression classification


"Offizielle" elektronische Version der Publikation (entsprechend ihrem Digital Object Identifier - DOI)
http://dx.doi.org/10.1007/s41060-020-00228-y

Elektronische Version der Publikation:
https://publik.tuwien.ac.at/files/publik_293095.pdf


Erstellt aus der Publikationsdatenbank der Technischen Universität Wien.