Classification and Reconstruction of High-Dimensional Signals from Low-Dimensional Features in the Presence of Side Information

12/01/2014
by   Francesco Renna, et al.
0

This paper offers a characterization of fundamental limits on the classification and reconstruction of high-dimensional signals from low-dimensional features, in the presence of side information. We consider a scenario where a decoder has access both to linear features of the signal of interest and to linear features of the side information signal; while the side information may be in a compressed form, the objective is recovery or classification of the primary signal, not the side information. The signal of interest and the side information are each assumed to have (distinct) latent discrete labels; conditioned on these two labels, the signal of interest and side information are drawn from a multivariate Gaussian distribution. With joint probabilities on the latent labels, the overall signal-(side information) representation is defined by a Gaussian mixture model. We then provide sharp sufficient and/or necessary conditions for these quantities to approach zero when the covariance matrices of the Gaussians are nearly low-rank. These conditions, which are reminiscent of the well-known Slepian-Wolf and Wyner-Ziv conditions, are a function of the number of linear features extracted from the signal of interest, the number of linear features extracted from the side information signal, and the geometry of these signals and their interplay. Moreover, on assuming that the signal of interest and the side information obey such an approximately low-rank model, we derive expansions of the reconstruction error as a function of the deviation from an exactly low-rank model; such expansions also allow identification of operational regimes where the impact of side information on signal reconstruction is most relevant. Our framework, which offers a principled mechanism to integrate side information in high-dimensional data problems, is also tested in the context of imaging applications.

READ FULL TEXT

page 33

page 34

research
05/03/2023

Multi-dimensional Signal Recovery using Low-rank Deconvolution

In this work we present Low-rank Deconvolution, a powerful framework for...
research
08/07/2015

Mismatch in the Classification of Linear Subspaces: Sufficient Conditions for Reliable Classification

This paper considers the classification of linear subspaces with mismatc...
research
09/18/2020

The basins of attraction of the global minimizers of non-convex inverse problems with low-dimensional models in infinite dimension

Non-convex methods for linear inverse problems with low-dimensional mode...
research
09/26/2016

Simultaneous Low-rank Component and Graph Estimation for High-dimensional Graph Signals: Application to Brain Imaging

We propose an algorithm to uncover the intrinsic low-rank component of a...
research
03/10/2015

Robust recovery of complex exponential signals from random Gaussian projections via low rank Hankel matrix reconstruction

This paper explores robust recovery of a superposition of R distinct com...
research
07/30/2021

A Scalable Approach to Estimating the Rank of High-Dimensional Data

A key challenge to performing effective analyses of high-dimensional dat...
research
02/17/2023

Are Gaussian data all you need? Extents and limits of universality in high-dimensional generalized linear estimation

In this manuscript we consider the problem of generalized linear estimat...

Please sign up or login with your details

Forgot password? Click here to reset