Metrics for Probabilistic Geometries

11/27/2014
by   Alessandra Tosi, et al.
0

We investigate the geometrical structure of probabilistic generative dimensionality reduction models using the tools of Riemannian geometry. We explicitly define a distribution over the natural metric given by the models. We provide the necessary algorithms to compute expected metric tensors where the distribution over mappings is given by a Gaussian process. We treat the corresponding latent variable model as a Riemannian manifold and we use the expectation of the metric under the Gaussian process prior to define interpolating paths and measure distance between latent points. We show how distances that respect the expected metric lead to more appropriate generation of new data.

READ FULL TEXT

page 5

page 6

research
05/23/2018

Probabilistic Riemannian submanifold learning with wrapped Gaussian process latent variable models

Latent variable models learn a stochastic embedding from a low-dimension...
research
08/08/2023

Generative Models for Anomaly Detection and Design-Space Dimensionality Reduction in Shape Optimization

Our work presents a novel approach to shape optimization, that has the t...
research
06/21/2020

Isometric Gaussian Process Latent Variable Model for Dissimilarity Data

We propose a fully generative model where the latent variable respects b...
research
03/09/2021

Structural Connectome Atlas Construction in the Space of Riemannian Metrics

The structural connectome is often represented by fiber bundles generate...
research
07/20/2020

Approximating the Riemannian Metric from Point Clouds via Manifold Moving Least Squares

The approximation of both geodesic distances and shortest paths on point...
research
06/11/2015

Probabilistic Curve Learning: Coulomb Repulsion and the Electrostatic Gaussian Process

Learning of low dimensional structure in multidimensional data is a cano...
research
08/04/2017

A Latent Variable Model for Two-Dimensional Canonical Correlation Analysis and its Variational Inference

Describing the dimension reduction (DR) techniques by means of probabili...

Please sign up or login with your details

Forgot password? Click here to reset