Table 11.
Related work.
| Software | Author | Motivation | Advantage |
|---|---|---|---|
| RDRToolbox | Bartenhagen [35] | (i) To reduce high dimensionality microarray data (ii) To preserve most of the significant information and generate data with similar characteristics like the high-dimensional original |
(i) Combine information from all features (ii) Suited for low-dimensional representations of the whole data |
|
| |||
| Scikit-learn | Pedregosa et al. [36] | To calculate activity index parameters through clustering | (i) Easy-to-use interface (ii) Can easily be integrated into applications outside the traditional range of statistical data analysis |
|
| |||
| lle | Diedrich and Abel [34] | Currently available data dimension reduction methods are either supervised, where data need to be labeled, or computational complex | (i) Fast (ii) Purely unsupervised |