For d=1, if h is missing, the default bandwidth is hpi.
For d>1, if H is missing, the default is Hpi.
For d=1, if positive=TRUE then x is transformed to
log(x+adj.positive) where the default adj.positive is
the minimum of x.
For d=1, 2, 3, 4, and if eval.points is not specified, then the
density estimate is computed over a grid
defined by gridsize (if binned=FALSE) or
by bgridsize (if binned=TRUE). This form is suitable for
visualisation in conjuction with the plot method.
--If eval.points is specified, as a vector (d=1) or
as a matrix (d=2, 3, 4), then the
density estimate is computed at eval.points. This form is
suitable for numerical summaries (e.g. maximum likelilood), and is
not compatible with the plot method.
--For d>4, computing the kernel
density estimate over a grid is not feasible, and so it is computed exactly
and eval.points (as a matrix) must be specified.
Binned kernel estimation is an approximation to the exact kernel
estimation and is available for d=1, 2, 3, 4. This makes
kernel estimators feasible for large samples.
The default bgridsize,gridsize are d=1: 401; d=2: rep(151, 2);
d=3: rep(51, 3); d=4: rep(21,4).
The effective support for a normal kernel is where
all values outside [-supp,supp]^d are zero.
The default xmin is min(x)-Hmax*supp and xmax
is max(x)+Hmax*supp where Hmax is the maximum of the
diagonal elements of H. The grid produced is the outer
product of c(xmin[1], xmax[1]), ..., c(xmin[d], xmax[d]).