knn.cv {class} | R Documentation |
k-Nearest Neighbour Cross-Validatory Classification
Description
k-nearest neighbour cross-validatory classification from training set.
Usage
knn.cv(train, cl, k = 1, l = 0, prob = FALSE, use.all = TRUE)
Arguments
train |
matrix or data frame of training set cases. |
cl |
factor of true classifications of training set |
k |
number of neighbours considered. |
l |
minimum vote for definite decision, otherwise |
prob |
If this is true, the proportion of the votes for the winning class
are returned as attribute |
use.all |
controls handling of ties. If true, all distances equal to the |
Details
This uses leave-one-out cross validation.
For each row of the training set train
, the k
nearest
(in Euclidean distance) other
training set vectors are found, and the classification is decided by
majority vote, with ties broken at random. If there are ties for the
k
th nearest vector, all candidates are included in the vote.
Value
Factor of classifications of training set. doubt
will be returned as NA
.
References
Ripley, B. D. (1996) Pattern Recognition and Neural Networks. Cambridge.
Venables, W. N. and Ripley, B. D. (2002) Modern Applied Statistics with S. Fourth edition. Springer.
See Also
Examples
train <- rbind(iris3[,,1], iris3[,,2], iris3[,,3])
cl <- factor(c(rep("s",50), rep("c",50), rep("v",50)))
knn.cv(train, cl, k = 3, prob = TRUE)
attributes(.Last.value)