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Document type:
Bachelorarbeit
Author(s):
Veselina Vazova
Title:
Scalable Manifold Learning through Landmark Diffusion
Translated title:
Skalierbares Lernen von Mannigfaltigkeiten durch Diffusion auf Untermengen
Abstract:
Manifold learning by spectral embedding is a technique that can be used for non-linear dimensionality reduction and clustering. By extracting the spectral properties of high dimensional data, the intrinsic manifold where data is presumably located on, can be embedded into a lower dimension. A newly proposed algorithm in the field of spectral embedding that has the goal of providing a scalable and robust approach to dimensionality reduction is Roseland by Chao Shen and Hau-Tieng Wu. The algorithm...     »
Supervisor:
Christian B. Mendl
Advisor:
Felix Dietrich
Year:
2021
Quarter:
4. Quartal
Year / month:
2021-10
Month:
Oct
Language:
en
University:
Technical University of Munich
Faculty:
Fakultät für Informatik
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