The Effect of Singularities in a Learning Machine when the True Parameters Do Not Lie on such Singularities
Watanabe, Sumio, Amari, Shun-ichi
–Neural Information Processing Systems
A lot of learning machines with hidden variables used in information science have singularities in their parameter spaces. At singularities, the Fisher information matrix becomes degenerate, resulting that the learning theory of regular statistical models does not hold. Recently, it was proven that, if the true parameter is contained in singularities, then the coefficient of the Bayes generalization error is equal to the pole of the zeta function of the Kullback information.
Neural Information Processing Systems
Dec-31-2003
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