Efficient Convex PCA with applications to Wasserstein geodesic PCA and ranked data

11/05/2022
by   Steven Campbell, et al.
0

Convex PCA, which was introduced by Bigot et al., is a dimension reduction methodology for data with values in a convex subset of a Hilbert space. This setting arises naturally in many applications, including distributional data in the Wasserstein space of an interval, and ranked compositional data under the Aitchison geometry. Our contribution in this paper is threefold. First, we present several new theoretical results including consistency as well as continuity and differentiability of the objective function in the finite dimensional case. Second, we develop a numerical implementation of finite dimensional convex PCA when the convex set is polyhedral, and show that this provides a natural approximation of Wasserstein geodesic PCA. Third, we illustrate our results with two financial applications, namely distributions of stock returns ranked by size and the capital distribution curve, both of which are of independent interest in stochastic portfolio theory.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/21/2022

Toroidal PCA via density ridges

Principal Component Analysis (PCA) is a well-known linear dimension-redu...
research
11/25/2019

Matrix Normal PCA for Interpretable Dimension Reduction and Graphical Noise Modeling

Principal component analysis (PCA) is one of the most widely used dimens...
research
01/22/2021

Projected Statistical Methods for Distributional Data on the Real Line with the Wasserstein Metric

We present a novel class of projected methods, to perform statistical an...
research
08/26/2022

Tangent phylogenetic PCA

Phylogenetic PCA (p-PCA) is a version of PCA for observations that are l...
research
07/03/2023

Wasserstein-1 distance and nonuniform Berry-Esseen bound for a supercritical branching process in a random environment

Let (Z_n)_n≥ 0 be a supercritical branching process in an independent an...
research
06/09/2022

Exploring Predictive States via Cantor Embeddings and Wasserstein Distance

Predictive states for stochastic processes are a nonparametric and inter...
research
06/26/2019

Sampling of multiple variables based on partial order set theory

This paper is going to introduce a new method for ranked set sampling wi...

Please sign up or login with your details

Forgot password? Click here to reset