Preprint FZJ-2023-00760

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Nonlinear Isometric Manifold Learning for Injective Normalizing Flows

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2022
arXiv

arXiv () [10.48550/ARXIV.2203.03934]

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Abstract: To model manifold data using normalizing flows, we propose to employ the isometric autoencoder to design nonlinear encodings with explicit inverses. The isometry allows us to separate manifold learning and density estimation and train both parts to high accuracy. Applied to the MNIST data set, the combined approach generates high-quality images.

Keyword(s): Machine Learning (cs.LG) ; FOS: Computer and information sciences


Contributing Institute(s):
  1. Modellierung von Energiesystemen (IEK-10)
Research Program(s):
  1. 1121 - Digitalization and Systems Technology for Flexibility Solutions (POF4-112) (POF4-112)
  2. HDS LEE - Helmholtz School for Data Science in Life, Earth and Energy (HDS LEE) (HDS-LEE-20190612) (HDS-LEE-20190612)

Appears in the scientific report 2022
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 Record created 2023-01-17, last modified 2024-07-12


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