The present research work proposes a new fast fixed-point average-value learning algorithm on the compact Stiefel manifold based on a mixed retraction/lifting pair. Numerical comparisons between fixed-point algorithms based on the proposed non-associated retraction/lifting map pair and two associated retraction/lifting pairs confirm that the averaging algorithm based on a combination of mixed maps is remarkably less computationally demanding than the same averaging algorithm based on any of the constituent associated retraction/lifting pairs.

Mixed maps for learning a Kolmogoroff-Nagumo-type average element on the compact Stiefel manifold / Fiori, Simone; T., Kaneko; T., Tanaka. - ELETTRONICO. - (2014), pp. 4518-4522. [10.1109/ICASSP.2014.6854457]

Mixed maps for learning a Kolmogoroff-Nagumo-type average element on the compact Stiefel manifold

FIORI, Simone;
2014-01-01

Abstract

The present research work proposes a new fast fixed-point average-value learning algorithm on the compact Stiefel manifold based on a mixed retraction/lifting pair. Numerical comparisons between fixed-point algorithms based on the proposed non-associated retraction/lifting map pair and two associated retraction/lifting pairs confirm that the averaging algorithm based on a combination of mixed maps is remarkably less computationally demanding than the same averaging algorithm based on any of the constituent associated retraction/lifting pairs.
2014
9781479928934
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/204116
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