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Fitting Spectral Decay with the kkk-Support Norm

4 January 2016
Andrew M. McDonald
Massimiliano Pontil
Dimitris Stamos
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Abstract

The spectral kkk-support norm enjoys good estimation properties in low rank matrix learning problems, empirically outperforming the trace norm. Its unit ball is the convex hull of rank kkk matrices with unit Frobenius norm. In this paper we generalize the norm to the spectral (k,p)(k,p)(k,p)-support norm, whose additional parameter ppp can be used to tailor the norm to the decay of the spectrum of the underlying model. We characterize the unit ball and we explicitly compute the norm. We further provide a conditional gradient method to solve regularization problems with the norm, and we derive an efficient algorithm to compute the Euclidean projection on the unit ball in the case p=∞p=\inftyp=∞. In numerical experiments, we show that allowing ppp to vary significantly improves performance over the spectral kkk-support norm on various matrix completion benchmarks, and better captures the spectral decay of the underlying model.

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