Published May 3, 2022 | Version v1

CLUSTERING COMPLEX SUBSPACES IN LARGE DIMENSIONS

  • 1. Centro Tecnológico de Telecomunicaciones de Cataluña (CTTC)
  • 2. Software Radio Systems

Description

A methodology to cluster multiple sets of Gaussian multivariate complex observations based on the alignment of their column spaces is presented. These subspaces are identified with points in the Grassmann manifold and compared according to a similarity measure drawn from a chosen manifold distance, which is proportional to the squared projection-Frobenius norm. In order to guarantee that distances between subspaces of different dimensions are comparable, we proposed to normalise the corresponding decision statistics with respect to their asymptotic mean and variance, assuming that (i) the dimensions of both the observation and the involved subspaces are large but comparable in magnitude and (ii) both subspaces are generated by the same statistical law. A procedure is derived to estimate these normalisation parameters, leading to a new statistic that can be built exclusively from the observations. The method is applied to a MIMO wireless channel clustering problem, where is shown to outperform conventional similarity measures in terms of classification performance. © 2022 IEEE

Notes

This work has been partially funded by the European Commission under the Windmill project (contract 813999) and the Spanish government under the Aristides project (RTI2018-099722-B-I00). © 2022, IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other work.

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Additional details

Funding

European Commission
WINDMILL - Integrating wireless communication engineering and machine learning 813999