\newcommand{\ao}{{\em Appl. Optics\ }}
\newcommand{\bc}{{\em Biol. Cybern.\ }}
\newcommand{\el}{{\em Europhys. Lett.\ }}
\newcommand{\ieee}{{\em IEEE First Annual Int. Conf. on Neural Networks\ }}
\newcommand{\iec}{{\em IEEE Trans. Electr. Comp.\ }}
\newcommand{\ijns}{{\em Int. Journ. of Neural Syst.\ }}
\newcommand{\jetp}{{\em Sov. Phys. JETP\ }}
\newcommand{\jp}{{\em J. Phys.\ }}
\newcommand{\jpf}{{\em J. Phys. France\ }}
\newcommand{\jsp}{{\em Journ. Stat. Phys.\ }}
\newcommand{\nn}{{\em Neural Networks \ }}
\newcommand{\pl}{{\em Phys. Lett.\ }}
\newcommand{\pna}{{\em Proc. Natl. Acad. Sci. USA\ }}
\newcommand{\pr}{{\em Phys. Rev.\ }}
\newcommand{\prl}{{\em Phys. Rev. Lett.\ }}
\newcommand{\ps}{{\em Physica Scripta.\ }}
\newcommand{\ptp}{{\em Prog. Theor. Phys.\ }}
\newcommand{\rmp}{{\em Rev. Mod. Phys.\ }}
\newcommand{\smc}{{\em IEEE Trans. Syst. Man Cybern.\ }}
\newcommand{\tit}{{\em IEEE Trans. Inform. Theory\ }}
\newcommand{\zp}{{\em Z. Physik\ }}
 
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