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Conference paper · Book chapter

Maximum Likelihood Estimation of Riemannian Metrics from Euclidean Data

From

Department of Applied Mathematics and Computer Science, Technical University of Denmark1

Cognitive Systems, Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Euclidean data often exhibit a nonlinear behavior, which may be modeled by assuming the data is distributed near a nonlinear submanifold in the data space. One approach to find such a manifold is to estimate a Riemannian metric that locally models the given data. Data distributions with respect to this metric will then tend to follow the nonlinear structure of the data.

In practice, the learned metric rely on parameters that are hand-tuned for a given task. We propose to estimate such parameters by maximizing the data likelihood under the assumed distribution. This is complicated by two issues: (1) a change of parameters imply a change of measure such that different likelihoods are incomparable; (2) some choice of parameters renders the numerical calculation of distances and geodesics unstable such that likelihoods cannot be evaluated.

As a practical solution, we propose to (1) re-normalize likelihoods with respect to the usual Lebesgue measure of the data space, and (2) to bound the likelihood when its exact value is unattainable. We provide practical algorithms for these ideas and illustrate their use on synthetic data, images of digits and faces, as well as signals extracted from EEG scalp measurements.

Language: English
Publisher: Springer International Publishing
Year: 2017
Pages: 38-46
Proceedings: 3<sup>rd</sup> International Conference on Geometric Science of Information
Series: Lecture Notes in Computer Science
Journal subtitle: Third International Conference, Gsi 2017, Paris, France, November 7-9, 2017, Proceedings
ISBN: 3319684442 , 3319684450 , 9783319684444 and 9783319684451
ISSN: 16113349 and 03029743
Types: Conference paper and Book chapter
DOI: 10.1007/978-3-319-68445-1_5
ORCIDs: Hansen, Lars Kai , Hauberg, Søren and 0000-0001-5728-0726

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