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\name{ssd_gradient}
\alias{ssd_gradient}
\docType{methods}
\title{Sum of Squared Differences Using Gaussian Mixture Distribution}
\description{
Gradient (derivative) function of ssd().
}
\usage{
ssd_gradient( x, y, p )
}
\arguments{
\item{x}{data vector}
\item{y}{response vector}
\item{p}{
parameter vector of 3*\emph{n} parameters, where \emph{n} is
number of mixture components. Structure of p vector is
p = c( A1, A2, ..., A\emph{n}, mu1, mu2, ..., mu\emph{n}, sigma1, sigma2, ..., sigma\emph{n} ),
where A\emph{i} is the proportion of \emph{i}-th component,
mu\emph{i} is the location of \emph{i}-th component,
sigma\emph{i} is the scale of \emph{i}-th component.
}
}
\value{Gradient values measured at \emph{x}.}
\author{Andrius Merkys}
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