spnn - Scale Invariant Probabilistic Neural Networks
Scale invariant version of the original PNN proposed by
Specht (1990) <doi:10.1016/0893-6080(90)90049-q> with the added
functionality of allowing for smoothing along multiple
dimensions while accounting for covariances within the data
set. It is written in the R statistical programming language.
Given a data set with categorical variables, we use this
algorithm to estimate the probabilities of a new observation
vector belonging to a specific category. This type of neural
network provides the benefits of fast training time relative to
backpropagation and statistical generalization with only a
small set of known observations.