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Dokumenttyp:
Konferenzbeitrag
Autor(en):
Felix Dietrich
Titel:
Efficient Manifold Learning with Diffusion Maps
Abstract:
Kernel-based approximations of the Laplace-Beltrami operator, such as Diffusion Maps, can be employed to construct meaningful, low-dimensional representations of data sets by embedding them into the first few eigenfunctions of the operator. In this approach, it is common to use the entire data set simultaneously to form the kernel matrix. This is demanding with respect to computer memory and computation time if the number of data points is very large and the ambient space dimension is very high-...     »
Kongress- / Buchtitel:
Joint Mathematics Meeting 2021
Band / Teilband / Volume:
SIAM Minisymposium on Advances in Manifold Learning and Applications
Publikationsdatum:
09.01.2021
Jahr:
2021
Quartal:
1. Quartal
Jahr / Monat:
2021-01
Monat:
Jan
Reviewed:
nein
Sprache:
en
WWW:
https://meetings.ams.org/math/jmm2021/meetingapp.cgi/Paper/3567
Hinweise:
invited non-plenary
TUM Einrichtung:
Department of Informatics
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