Classification and Reconstruction of High-Dimensional Signals from Low-Dimensional Features in the Presence of Side Information
Francesco Renna, Liming Wang, Xin Yuan, Jianbo Yang, Galen Reeves,, Robert Calderbank, Lawrence Carin, Miguel R. D. Rodrigues

TL;DR
This paper characterizes the fundamental limits of classifying and reconstructing high-dimensional signals from low-dimensional features with side information, providing conditions for successful recovery and analyzing the impact of side information.
Contribution
It introduces a Gaussian mixture model framework for signals with side information, deriving sharp conditions for classification and reconstruction success in low-rank settings.
Findings
Conditions for near-zero error in classification and reconstruction
Impact of side information on high-dimensional signal recovery
Operational regimes where side information significantly improves performance
Abstract
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…
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