The object returned by the earth function.
This is an S3 model of class "earth".
It is a list with the components listed below.
Term refers to a term created during the
forward pass (each line of the output from format.earth
is a term).
Term number 1 is always the intercept.
rssResidual sum-of-squares (RSS) of the model (summed over all responses,
if y has multiple columns).
rsq1-rss/tss.
R-Squared of the model (calculated over all responses,
and calculated using the weights argument if it was supplied).
A measure of how well the model fits the training data.
Note that tss is the total sum-of-squares, sum((y - mean(y))^2).
gcvGeneralized Cross Validation (GCV) of the model (summed over all responses).
The GCV is calculated using the penalty argument.
For details of the GCV calculation, see
equation 30 in Friedman's MARS paper and earth:::get.gcv.
grsq1-gcv/gcv.null.
An estimate of the predictive power of the model (calculated over all responses,
and calculated using the weights argument if it was supplied).
gcv.null is the GCV of an intercept-only model.
See “Can GRSq be negative?” in the vignette.
bxMatrix of basis functions applied to x.
Each column corresponds to a selected term.
Each row corresponds to a row in in the input matrix x,
after taking subset.
See model.matrix.earth for an example of bx handling.
Example bx:
(Intercept) h(Girth-12.9) h(12.9-Girth) h(Girth-12.9)*h(... [1,] 1 0.0 4.6 0 [2,] 1 0.0 4.3 0 [3,] 1 0.0 4.1 0 ...
dirsMatrix with one row per MARS term, and with with ij-th element equal to
0 if predictor j is not in term i
-1 if an expression of the form h(const - xj) is in term i
1 if an expression of the form h(xj - const) is in term i
2 if predictor j should enter term i linearly
(either because specified by the linpreds argument or because earth
discovered that a knot was unnecessary).
This matrix includes all terms generated by the forward pass,
including those not in selected.terms.
Note that here the terms may not all be in pairs, because
although the forward pass add terms as hinged pairs (so both sides of
the hinge are available as building blocks for further terms), it also
deletes linearly dependent terms before handing control to the pruning pass.
Example dirs:
Girth Height (Intercept) 0 0 #intercept h(12.9-Girth) -1 0 #2nd term uses Girth h(Girth-12.9) 1 0 #3rd term uses Girth h(Girth-12.9)*h(Height-76) 1 1 #4th term uses Girth and Height ...
cutsMatrix with ij-th element equal to the cut point
for predictor j in term i.
This matrix includes all terms generated by the forward pass,
including those not in selected.terms.
Note for programmers: the precedent is to use dirs
for term names etc. and to only use cuts where cut information needed.
Example cuts:
Girth Height (Intercept) 0 0 #intercept, no cuts h(12.9-Girth) 12.9 0 #2nd term has cut at 12.9 h(Girth-12.9) 12.9 0 #3rd term has cut at 12.9 h(Girth-12.9)*h(Height-76) 12.9 76 #4th term has two cuts ...
prune.termsA matrix specifying which terms appear in which pruning pass subsets.
The row index of prune.terms is the model size.
(The model size is the number of terms in the model.
The intercept is counted as a term.)
Each row is a vector of term numbers for the best model of that size.
An element is 0 if the term is not in the model, thus prune.terms is a
lower triangular matrix, with dimensions nprune x nprune.
The model selected by the pruning pass is at row number length(selected.terms).
Example prune.terms:
[1,] 1 0 0 0 0 0 0 #intercept-only model [2,] 1 2 0 0 0 0 0 #best 2 term model uses terms 1,2 [3,] 1 2 4 0 0 0 0 #best 3 term model uses terms 1,2,4 [4,] 1 2 6 9 0 0 0 #and so on ...
selected.termsVector of term numbers in the selected model.
Can be used as a row index vector into cuts and dirs.
The first element selected.terms[1] is always 1, the intercept.
fitted.valuesFitted values.
A matrix with dimensions nrow(y) x ncol(y)
after factors in y have been expanded.
residualsResiduals.
A matrix with dimensions nrow(y) x ncol(y)
after factors in y have been expanded.
coefficientsRegression coefficients.
A matrix with dimensions length(selected.terms) x ncol(y)
after factors in y have been expanded.
Each column holds the least squares coefficients from regressing that
column of y on bx.
The first row holds the intercept coefficient(s).
rss.per.responseA vector of the RSS for each response.
Length is the number of responses, i.e., ncol(y) after factors in y have been expanded.
The rss component above is equal to sum(rss.per.response).
rsq.per.responseA vector of the R-Squared for each response
(where R-Squared is calculated using the weights argument if it was supplied).
Length is the number of responses.
gcv.per.responseA vector of the GCV for each response.
Length is the number of responses.
The gcv component above is equal to sum(gcv.per.response).
grsq.per.responseA vector of the GRSq for each response
(calculated using the weights argument if it was supplied).
Length is the number of responses.
rss.per.subsetA vector of the RSS
for each model subset generated by the pruning pass.
Length is nprune.
For multiple responses, the RSS is summed over all responses for each subset.
The rss above is
rss.per.subset[length(selected.terms)].
The RSS of an intercept only-model is rss.per.subset[1].
gcv.per.subsetA vector of the GCV for each model in prune.terms.
Length is nprune.
For multiple responses, the GCV is summed over all responses for each subset.
The gcv above is gcv.per.subset[length(selected.terms)].
The GCV of an intercept-only model is gcv.per.subset[1].
leveragesDiagonal of the hat matrix (from the linear regression of the response on bx).
penalty,nk,threshCopies of the corresponding arguments to earth.
pmethod,npruneCopies of the corresponding arguments to earth.
weights,wpCopies of the corresponding arguments to earth.
termcondReason the forward pass terminated (an integer).
callThe call used to invoke earth.
termsModel frame terms.
This component exists only if the model was built using earth.formula.
namesxColumn names of x, generated internally by earth when necessary
so each column of x has a name.
Used, for example, by predict.earth to name columns if necessary.
namesx.orgOriginal column names of x.
levelsLevels of y if y is a factor,
c(FALSE,TRUE) if y is logical,
Else NULL.
The following fields appear only if earth's argument keepxy is TRUE.
x,y,data,subsetCopies of the corresponding arguments to earth.
Only exist if keepxy=TRUE.
The following fields appear only if earth's glm argument is used.
glm.listList of GLM models. Each element is the value returned by earth's
internal call to glm for each response.
Thus if there is a single response (or a single binomial pair, see
“Binomial pairs” in the vignette)
this will be a one element list and you access the GLM model with
earth.mod$glm.list[[1]].
glm.coefficientsGLM regression coefficients.
Analogous to the coefficients field described above but for the GLM model(s).
A matrix with dimensions length(selected.terms) x ncol(y)
after factors in y have been expanded.
Each column holds the coefficients from the GLM regression of that
column of y on bx.
This duplicates, for convenience, information buried in glm.list.
glm.statsGLM summary statistics such as devratio, AIC, and iters.
glm.bpairsIs NULL unless there are paired binomial columns.
Else a logical vector c(TRUE, FALSE).
See “Binomial pairs” in the vignette.
Retained for backwards compatibility with old versions of earth.
The following fields appear only if the nfold argument is greater than 1.
cv.listList of earth models, one model for each fold (ncross * nfold models).
The fold models have two extra fields,
icross (an integer from 1 to ncross)
and ifold (an integer from 1 to nfold).
To save memory, lengthy fields
in the fold models are removed unless you use keepxy=TRUE.
The “lengthy fields” are $bx, $fitted.values, and $residuals.
cv.ntermsVector of length ncross * nfold + 1.
Number of MARS terms in the model generated at each cross-validation fold,
with the final element being the mean of these.
cv.nvarsVector of length ncross * nfold + 1.
Number of predictors in the model generated at each cross-validation fold,
with the final element being the mean of these.
cv.groupsSpecifies which cases went into which folds.
Matrix with two columns and number of rows equal to the the number of cases nrow(x)
Elements of the first column specify the cross-validation number, 1:ncross.
Elements of the second column specify the fold number, 1:nfold.
cv.rsq.tabMatrix with ncross * nfold + 1 rows and nresponse+1 columns,
where nresponse is the number of responses,
i.e., ncol(y) after factors in y have been expanded.
The first nresponse elements of a row are the cv.rsq's on
the out-of-fold data for each response of the model generated at that row's fold.
(A cv.rsq is calculated from predictions on the out-of-fold data
using the best model built from the in-fold data;
where “best” means the model was selected using the in-fold GCV.
The R-Squareds are calculated using the weights argument if it was supplied.
The final column holds the row mean (a weighted mean if wp if specified)).
The final row holds the column means.
The values in this final row is the mean cv.rsq
printed by summary.earth.
Example for a single response model (where the mean column
is redundant but included for uniformity with multiple response models):
y mean fold1 0.909 0.909 fold2 0.869 0.869 fold3 0.952 0.952 fold4 0.157 0.157 fold5 0.961 0.961 mean 0.769 0.769Example for a multiple response model:
y1 y2 y3 mean fold1 0.915 0.951 0.944 0.937 fold2 0.962 0.970 0.970 0.968 fold3 0.914 0.940 0.942 0.932 fold4 0.907 0.929 0.925 0.920 fold5 0.947 0.987 0.979 0.971 mean 0.929 0.955 0.952 0.946
cv.class.rate.tabLike cv.rsq.tab but is the classification rate at each fold
i.e. the fraction of classes correctly predicted.
Models with discrete response only.
Calculated with thresh=.5 for binary responses.
For responses with more than two
levels, the final row is the overall classification rate. The other
rows are the classification rates for each level (the level
versus not-the-level), which are usually higher than the overall
classification rate (predicting the level versus not-the-level is
easier than correctly predicting one of many levels).
The weights argument is ignored for all cross-validation stats except R-Squareds.
cv.maxerr.tabLike cv.rsq.tab but is the MaxErr at each fold.
This is the signed max absolute value at each fold.
Results are aggregated for the final column and final row
using the signed max absolute value.
The signed max absolute value is defined
as the maximum of the absolute difference
between the predicted and observed response values, multiplied
by -1 if the sign of that difference is negative.
cv.auc.tabLike cv.rsq.tab but is the AUC at each fold.
Binomial models only.
cv.cor.tabLike cv.rsq.tab but is the cor at each fold.
Poisson models only.
cv.deviance.tabLike cv.rsq.tab but is the MeanDev at each fold.
Binomial models only.
cv.calib.int.tabLike cv.rsq.tab but is the CalibInt at each fold.
Binomial models only.
cv.calib.slope.tabLike cv.rsq.tab but is the CalibSlope at each fold.
Binomial models only.
cv.oof.rsq.tabGenerated only if keepxy=TRUE or pmethod="cv".
A matrix with ncross * nfold + 1 rows and max.nterms columns,
Each element holds an out-of-fold RSq (oof.rsq),
calculated from predictions from the out-of-fold observations using
the model built with the in-fold data. The final row is the mean over
all folds.
The R-Squareds are calculated using the weights argument if it was supplied.
cv.infold.rsq.tabGenerated only if keepxy=TRUE.
Like cv.oof.rsq.tab but from predictions made on the in-fold observations.
cv.oof.fit.tabGenerated only if the varmod.method argument is used.
Predicted values on the out-of-fold data.
Dataframe with nrow(data) rows and ncross columns.
The following field appears only if the varmod.method is specified.
varmodAn object of class "varmod".
See the varmod help page for a description.
Only appears if the varmod.method argument is used.