Lifting the curse from high-dimensional data: automated projection pursuit clustering for a variety of biological data modalities
Claire Simpson(Cell Signaling Technology (United States)), Darya Orlova(Cell Signaling Technology (United States)), Guenther Walther(Stanford University), C. Schiller(Heidelberg University), Evgeniy Tabatsky(Komsomolsk-on-Amur State Technical University), Florian Georgescauld(Cell Signaling Technology (United States)), Devon J. Eddins(Emory University), Tyler Levy(Cell Signaling Technology (United States)), Denis Schapiro(Heidelberg University), Sasha Tkachev(Cell Signaling Technology (United States)), Kresimir Bestak(Heidelberg University), Derek Papalegis(Cell Signaling Technology (United States)), Zainab Rahil, Andrei V. Chernyshev(Novosibirsk State University), Martin Culka(Columbia University), Eliver Ghosn(Emory University), Ivan V. Gregoretti(Cell Signaling Technology (United States)), Connor Meehan
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