interact.gbm {gbm} | R Documentation |
Estimate the strength of interaction effects
Description
Computes Friedman's H-statistic to assess the strength of variable interactions.
Usage
interact.gbm(x, data, i.var = 1, n.trees = x$n.trees)
Arguments
x |
A |
data |
The dataset used to construct |
i.var |
A vector of indices or the names of the variables for compute
the interaction effect. If using indices, the variables are indexed in the
same order that they appear in the initial |
n.trees |
The number of trees used to generate the plot. Only the first
|
Details
interact.gbm
computes Friedman's H-statistic to assess the relative
strength of interaction effects in non-linear models. H is on the scale of
[0-1] with higher values indicating larger interaction effects. To connect
to a more familiar measure, if x_1
and x_2
are uncorrelated
covariates with mean 0 and variance 1 and the model is of the form
y=\beta_0+\beta_1x_1+\beta_2x_2+\beta_3x_3
then
H=\frac{\beta_3}{\sqrt{\beta_1^2+\beta_2^2+\beta_3^2}}
Note that if the main effects are weak, the estimated H will be unstable. For example, if (in the case of a two-way interaction) neither main effect is in the selected model (relative influence is zero), the result will be 0/0. Also, with weak main effects, rounding errors can result in values of H > 1 which are not possible.
Value
Returns the value of H
.
Author(s)
Greg Ridgeway gregridgeway@gmail.com
References
J.H. Friedman and B.E. Popescu (2005). “Predictive Learning via Rule Ensembles.” Section 8.1