Internal print and summary methods for derivative textmodel_affinity objects.
# S3 method for influence.predict.textmodel_affinity
print(x, n = 30, ...)# S3 method for influence.predict.textmodel_affinity
summary(object, ...)
# S3 method for summary.influence.predict.textmodel_affinity
print(x, n = 30, ...)
summary.influence.predict.textmodel_affinity()
returns a list
classes as summary.influence.predict.textmodel_affinity
that includes:
word
the feature name
count
the total counts of each feature for which influence was computed
mean
, median
, sd
, max
mean, median, standard deviation, and maximum
values of influence for each feature, computed across classes
direction
an integer vector of 1 or 2 indicating the class which the feature
is influencing
rate
a document by feature class sparse matrix of normalised influence
measures
count
a vector of counts of each non-zero feature in the input matrix
rate
the median of rate
from influence.predict.textmodel_affinity()
support
logical vector for each feature matching the same return from
predict.textmodel_affinity()
the mean, the standard deviation, the direction of the influence, the rate, and the support
how many coefficients to print before truncating