比利时vs摩洛哥足彩
,
university of california san diego
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mathematics 278 - computational and applied mathematics
j. benjamin rosen
ucsd comp. sci. eng.
global minimization by underestimating known local minima: application to protein-ligand docking
abstract:
the problem of approximating m data points $(x_i, y_i)$ in $r^n+1$, with a quadratic function $q(x,p)$ with s parameters $s<=m$, is considered. the parameter vector $p$ in $r^s$ is determined so as to satisfy three conditions: (1) $q(x,p)$ must underestimate all m data points, i.e. $q(x_i,p)<=y_i$, $i=1,....m$. (2) the error of approximation is to be minimized in the $l1$ norm. (3) the eigenvalues of $h$ are to satisfy specified lower and upper bounds, where $h$ is the hessian of $q(x,p)$ with respect to $x$. approximation of the data by a sum of negative gaussians is also considered.
host: james bunch
may 31, 2005
11:00 am
ap&m 7321
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