summary {banter} | R Documentation |
BANTER Classifier Model Summary
Description
Display summaries for event and detector models
Usage
summary(object, ...)
## S3 method for class 'banter_model'
summary(object, model = "event", n = 0.5, bins = 20, ...)
## S4 method for signature 'banter_model'
summary(object, model = "event", n = 0.5, bins = 20, ...)
Arguments
object |
a |
... |
ignored. |
model |
name of model to summarize. Default is |
n |
number of final iterations to summarize OOB error rate for. If between 0 and 1 is taken as a proportion of chain. |
bins |
number of bins in inbag histogram. |
Value
In the plot that is created, the upper panel shows the trace of the Random Forest model OOB rate across sequential trees in the forest. The lower plot shows a frequency histogram of the number of times each sample was inbag (used as training data in a tree in the forest). The vertical red lines indicate the expected inbag rate for samples of each species.
Author(s)
Eric Archer eric.archer@noaa.gov
References
Rankin, S. , Archer, F. , Keating, J. L., Oswald, J. N., Oswald, M. , Curtis, A. and Barlow, J. (2017), Acoustic classification of dolphins in the California Current using whistles, echolocation clicks, and burst pulses. Marine Mammal Science 33:520-540. doi:10.1111/mms.12381
Examples
data(train.data)
# initialize BANTER model with event data
bant.mdl <- initBanterModel(train.data$events)
# add all detector models
bant.mdl <- addBanterDetector(
bant.mdl, train.data$detectors,
ntree = 50, sampsize = 1, num.cores = 1
)
# run BANTER event model
bant.mdl <- runBanterModel(bant.mdl, ntree = 1000, sampsize = 1)
summary(bant.mdl)