TY - JOUR
T1 - Eigenvalues of covariance matrices
T2 - Application to neural-network learning
AU - Cun, Yann Le
AU - Kanter, Ido
AU - Solla, Sara A.
PY - 1991
Y1 - 1991
N2 - The learing time of a simple neural-network model is obtained through an analytic computation of the eigenvalue spectrum for the Hessian matrix, which describes the second-order properties of the objective function in the space of coupling coefficients. The results are generic for symmetric matrices obtained by summing outer products of random vectors. The form of the eigenvalue distribution suggests new techniques for accelerating the learning process, and provides a theoretical justification for the choice of centered versus biased state variables.
AB - The learing time of a simple neural-network model is obtained through an analytic computation of the eigenvalue spectrum for the Hessian matrix, which describes the second-order properties of the objective function in the space of coupling coefficients. The results are generic for symmetric matrices obtained by summing outer products of random vectors. The form of the eigenvalue distribution suggests new techniques for accelerating the learning process, and provides a theoretical justification for the choice of centered versus biased state variables.
UR - http://www.scopus.com/inward/record.url?scp=0000044667&partnerID=8YFLogxK
U2 - 10.1103/physrevlett.66.2396
DO - 10.1103/physrevlett.66.2396
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AN - SCOPUS:0000044667
SN - 0031-9007
VL - 66
SP - 2396
EP - 2399
JO - Physical Review Letters
JF - Physical Review Letters
IS - 18
ER -