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authorJaron Kent-Dobias <jaron@kent-dobias.com>2020-12-08 19:59:22 +0100
committerJaron Kent-Dobias <jaron@kent-dobias.com>2020-12-08 19:59:22 +0100
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@@ -131,15 +131,16 @@ singular values of $\partial\partial H$, while both are the same as the
distribution of square-rooted eigenvalues of $(\partial\partial
H)^\dagger\partial\partial H$.
-{\color{red} {\bf perhaps not here} This expression \eqref{eq:complex.kac-rice} is to be averaged over the $J$'s as
-$N \Sigma=
-\overline{\ln \mathcal N_J} = \int dJ \; \ln N_J$, a calculation that involves the replica trick. In most, but not all, of the parameter-space that we shall study here, the {\em annealed approximation} $N \Sigma \sim
-\ln \overline{ \mathcal N_J} = \ln \int dJ \; N_J$ is exact.
-
-A useful property of the Gaussian distributions is that gradient and Hessian may be seen to be independent \cite{Bray_2007_Statistics, Fyodorov_2004_Complexity},
-so that we may treat the delta-functions and the Hessians as independent.
-
-}
+The expression \eqref{eq:complex.kac-rice} is to be averaged over the $J$'s as
+$N \Sigma= \overline{\ln \mathcal N_J} = \int dJ \; \ln N_J$, a calculation
+that involves the replica trick. In most the parameter-space that we shall
+study here, the {\em annealed approximation} $N \Sigma \sim \ln \overline{
+\mathcal N_J} = \ln \int dJ \; N_J$ is exact.
+
+A useful property of the Gaussian distributions is that gradient and Hessian
+may be seen to be independent \cite{Bray_2007_Statistics,
+Fyodorov_2004_Complexity}, so that we may treat the $\delta$-functions and the
+Hessians as independent. We compute each by taking the saddle point.
The Hessian of \eqref{eq:constrained.hamiltonian} is $\partial\partial
H=\partial\partial H_0-p\epsilon I$, or the Hessian of