SBSS.P {DSAM}R Documentation

'DSAM' - SBSS.P algorithm

Description

SBSS.P algorithm is a stochastic algorithm. It obtains data subsets through uniform sampling in each neuron after clustering through SOM neural network, with details given in May et al. (2010).

Usage

SBSS.P(data, control)

Arguments

data

The dataset should be matrix or Data.frame. The format should be as follows: Column one is a subscript vector used to mark each data point (each row is considered as a data point); Columns from 2 to N-1 are the input data, and Column N are the output data.

control

User-defined parameter list, where each parameter definition refers to the par.default function.

Value

Return the training, test and validation subsets. If the original data are required to be split into two subsets, the training and test subsets can be combined into a single calibration subset.

References

May, R. J., Maier H. R., and Dandy G. C.(2010), Data splitting for artificial neural networks using SOM-based stratified sampling, Neural Netw, 23(2), 283-294.


[Package DSAM version 1.0.2 Index]