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Title: General regression neural network
Description: The program GRNN implements the algorithm proposed by Specht (1991).
URL: http://flow.chasset.net/r-grnn/
Version: 0.1.0
Author: Pierre-Olivier Chasset
Maintainer: Pierre-Olivier Chasset <pierre-olivier@chasset.net>
License: AGPL
Collate: 'create.R' 'grnn-package.r' 'guess.r' 'kernel.R' 'learn.R' 'smooth.R'
Packaged: 2013-05-16 14:16:40 UTC; petrus
NeedsCompilation: no
Repository: CRAN
Date/Publication: 2013-05-16 17:39:51

GRNN

Description

General regression neural network.

Details

The program GRNN implements the algorithm proposed by Specht (1991).

Author(s)

Pierre-Olivier Chasset

References

Specht D.F. (1991). A general regression neural network. IEEE Transactions on Neural Networks, 2(6):568-576.


Guess

Description

Infers the value of a new observation.

Usage

  guess(nn, X)

Arguments

nn

A trained and smoothed General regression neural network.

X

A vector describing a new observation.

See Also

grnn-package

Examples

n <- 100
set.seed(1)
x <- runif(n, -2, 2)
y0 <- x^3
epsilon <- rnorm(n, 0, .1)
y <- y0 + epsilon
grnn <- learn(data.frame(y,x))
grnn <- smooth(grnn, sigma=0.1)
guess(grnn, -2)
guess(grnn, -1)
guess(grnn, -0.2)
guess(grnn, -0.1)
guess(grnn, 0)
guess(grnn, 0.1)
guess(grnn, 0.2)
guess(grnn, 1)
guess(grnn, 2)

Learn

Description

Create or update a General regression neural network.

Usage

  learn(set, nn, variable.column = 1)

Arguments

set

Data frame representing the training set. The first column is used to define the category of each observation (set category.column if it is not the case).

nn

A General regression neural network with or without training.

variable.column

The field number of the variable (1 by default).

See Also

grnn-package


Smooth

Description

Smooth a General regression neural network.

Usage

  smooth(nn, sigma)

Arguments

nn

A trained General regression neural network.

sigma

A scalar.

See Also

grnn-package

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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