Function subsets sliding windows of data into input and output datasets to be
passed to machine-learning methods.
Usage
mlm_io(sw)
Value
A list with input and output datasets.
Arguments
sw
A numeric matrix with sliding windows of time series data
as returned by sw.
Author
Rebecca Pontes Salles
Details
When sw has k columns (sliding windows of size k),
the input dataset contains the first k-1 columns and the output dataset
contains the last column of data.
References
E. Ogasawara, L. C. Martinez, D. De Oliveira, G. Zimbrao, G. L. Pappa, and M. Mattoso, 2010,
Adaptive Normalization: A novel data normalization approach for non-stationary time series,
Proceedings of the International Joint Conference on Neural Networks.