A Sharp Nonasymptotic Bound and Phase Diagram of L1/2 Regularization

We derive a sharp nonasymptotic bound of parameter estimation of the L1/2 regularization. The bound shows that the solutions of the L1/2 regularization can achieve a loss within logarithmic factor of an ideal mean squared error and therefore underlies the feasibility and effectiveness of the L1/2 re...

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Veröffentlicht in:Acta mathematica Sinica. English series 2014, Vol.30 (7), p.1242-1258
Hauptverfasser: Zhang, Hai, Xu, Zong Ben, Wang, Yao, Chang, Xiang Yu, Liang, Yong
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Sprache:eng
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Zusammenfassung:We derive a sharp nonasymptotic bound of parameter estimation of the L1/2 regularization. The bound shows that the solutions of the L1/2 regularization can achieve a loss within logarithmic factor of an ideal mean squared error and therefore underlies the feasibility and effectiveness of the L1/2 regularization. Interestingly, when applied to compressive sensing, the L1/2 regularization scheme has exhibited a very promising capability of completed recovery from a much less sampling information. As compared with the Lp (0 〈 p 〈 1) penalty, it is appeared that the L1/2 penalty can always yield the most sparse solution among all the Lv penalty when 1/2 〈 p 〈 1, and when 0 〈 p 〈 1/2, the Lp penalty exhibits the similar properties as the L1/2 penalty. This suggests that the L1/2 regularization scheme can be accepted as the best and therefore the representative of all the Lp (0 〈 p 〈 1) regularization schemes.
ISSN:1439-8516
1439-7617
DOI:10.1007/s10114-014-0466-y