weighted.hammingloss.factor.md
weighted.hammingloss.factor
R Documentation
Hamming Loss
Description
A generic S3 function to compute the hamming loss score for a
classification model. This function dispatches to S3 methods inhammingloss()
and performs no input validation. If you supply NA
values or vectors of unequal length (e.g. length(x) != length(y)
), the
underlying C++
code may trigger undefined behavior and crash your R
session.
Defensive measures
Because hammingloss()
operates on raw pointers, pointer-level faults
(e.g. from NA or mismatched length) occur before any R
-level error
handling. Wrapping calls in try()
or tryCatch()
will not preventR
-session crashes.
To guard against this, wrap hammingloss()
in a "safe" validator that
checks for NA values and matching length, for example:
Apply the same pattern to any custom metric functions to ensure input
sanity before calling the underlying C++
code.
Efficient multi-metric evaluation
For multiple performance evaluations of a classification model, first
compute the confusion matrix once via cmatrix()
. All other performance
metrics can then be derived from this one object via S3 dispatching:
The hammingloss.factor()
method calls cmatrix()
internally, so
explicitly invoking hammingloss.cmatrix()
yourself avoids duplicate
computation, yielding significant speed and memory effciency gains when
you need multiple evaluation metrics.
Usage
Arguments
actual
, predicted
A pair of <integer> or <factor> vectors of length n
, and k
levels.
w
A <double> vector of sample weights.
...
Arguments passed into other methods.
Value
A <double>-value
References
James, Gareth, et al. An introduction to statistical learning. Vol. 112. No. 1. New York: springer, 2013.
Hastie, Trevor. "The elements of statistical learning: data mining, inference, and prediction." (2009).
Pedregosa, Fabian, et al. "Scikit-learn: Machine learning in Python." the Journal of machine Learning research 12 (2011): 2825-2830.
Examples
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