trend.spatial: Builds the Trend Matrix
Description
Builds the trend matrix according to the specification
of the mean part of the model provided by the user.Usage
trend.spatial(trend, geodata)
Arguments
trend
specifies the mean part of the model.
See DETAILS
below.
geodata
an object of the class geodata
as described in
as.geodata
. Value
- An $n \times p$ trend matrix where $n$
is the number of spatial
locations and $p$ is the number of mean parameters in the model.
itemize
trend = "1st"
andtrend = ~ x1 + x2
trend = "2nd"
andtrend = ~ x1 + x2 + x1^2 +
x2^2 + x1*x2
bold
Search path for covariatescr
Typically, functions in the package geoR
which calls
trend.spatial
will have the arguments goedata
,
coords
and data
. When the trend is specifed as trend = ~ model
the terms included in the model will be searched for in the following
loactions (in this order):
- as elements of the list
geodata
- as columns in the data-frame
geodata$covariates
- as columns in the data-frame
geodata$data
Details
The implicty model assumes that there is an underlying process
with mean $\mu(x)$, where $x = (x_1, x_2)$ denotes the coordinates
of a spatial location.
The argument trend
defines the form of the mean with the
following options:
{the mean is assumed to be constant over the region,
in which case $\mu(x)= \mu$. This is the default
option. }
"1st"
{the mean is assumed to be a first degree polynomial
on the coordinates:
$$\mu(x)= \beta_0 + \beta_1 x_1 + \beta_2 x_2$$}
"2nd"
{the mean is assumed to be a second degree polynomial
on the coordinates:
$$\mu(x)= \beta_0 + \beta_1 x_1 + \beta_2 x_2 + \beta_1 (x_1)^2 +
\beta_2 (x_2)^2 + \beta_1 x_1 * \beta_2 x_2$$}
~ model
{a model specification. See
formula
for further details on how to specify
a model using formulas. Notice that the model term before
~
is not necessary. Tipically used to include covariates
(external trend) in the model.}References
Further information about geoR can be found at:
http://www.maths.lancs.ac.uk/~ribeiro/geoR.