# fitin.ppm

##### Extract the Interaction from a Fitted Point Process Model

Given a point process model that has been fitted to point pattern data, this function extracts the interpoint interaction part of the model as a separate object.

##### Usage

`fitin(object)`# S3 method for ppm
fitin(object)

# S3 method for profilepl
fitin(object)

##### Arguments

- object
A fitted point process model (object of class

`"ppm"`

or`"profilepl"`

).

##### Details

An object of class `"ppm"`

describes a fitted point process
model. It contains information about the original data to which the
model was fitted, the spatial trend that was fitted, the
interpoint interaction that was fitted, and other data.
See `ppm.object`

) for details of this class.

The function `fitin`

extracts from this model the information about the
fitted interpoint interaction only.
The information is organised as an object of class `"fii"`

(fitted interpoint interaction).
This object can be printed or plotted.

Users may find this a convenient way to plot the fitted interpoint interaction term, as shown in the Examples.

For a pairwise interaction, the plot of the fitted interaction shows the pair interaction function (the contribution to the probability density from a pair of points as a function of the distance between them). For a higher-order interaction, the plot shows the strongest interaction (the value most different from 1) that could ever arise at the given distance.

The fitted interaction coefficients can also be extracted
from this object using `coef`

.

##### Value

An object of class `"fii"`

representing the fitted
interpoint interaction. This object can be printed and plotted.

##### See Also

Methods for handling fitted interactions:
`methods.fii`

, `reach.fii`

,
`as.interact.fii`

.

Background:
`ppm`

,
`ppm.object`

.

##### Examples

```
# NOT RUN {
# unmarked
model <- ppm(swedishpines ~1, PairPiece(seq(3,19,by=4)))
f <- fitin(model)
f
plot(f)
# extract fitted interaction coefficients
coef(f)
# multitype
# fit the stationary multitype Strauss process to `amacrine'
r <- 0.02 * matrix(c(1,2,2,1), nrow=2,ncol=2)
model <- ppm(amacrine ~1, MultiStrauss(r))
f <- fitin(model)
f
plot(f)
# }
```

*Documentation reproduced from package spatstat, version 1.64-1, License: GPL (>= 2)*