AICc {Dark} | R Documentation |
Akaike information criterion
Description
The Akaike information criterion corrected for small sample size is a measure of the relative quality of a model. The AICc is calculated from a 'dark' object.
Usage
AICc(obj)
Arguments
obj |
A dark object This object must have at least the following elements:
|
Value
The value returned is an indication of the information lost by fitting a particular model to the data, and is only of merit when compared to the value from another model.
Author(s)
Jeremiah MF Kelly
Mumac Ltd, SK7 6NR, GB
References
See https://en.wikipedia.org/wiki/Akaike_information_criterion.
K. Burnham and D. Anderson. Model selection and multi-model inference: a practical information- theoretic approach. Springer, 2002.
Sakamoto, Y., Ishiguro, M., and Kitagawa G. (1986). Akaike Information Criterion Statistics. D. Reidel Publishing Company.
See Also
Examples
AICc(dark)