Multiway sparse distance weighted discrimination
- URL: http://arxiv.org/abs/2110.05377v1
- Date: Mon, 11 Oct 2021 16:11:04 GMT
- Title: Multiway sparse distance weighted discrimination
- Authors: Bin Guo, Lynn E. Eberly, Pierre-Gilles Henry, Christophe Lenglet, Eric
F. Lock
- Abstract summary: Distance weighted discrimination (DWD) is a popular high-dimensional classification method that has been extended to the multiway context.
We develop a general framework for multiway classification which is applicable to any number of dimensions and any degree of sparsity.
- Score: 3.574492630046327
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modern data often take the form of a multiway array. However, most
classification methods are designed for vectors, i.e., 1-way arrays. Distance
weighted discrimination (DWD) is a popular high-dimensional classification
method that has been extended to the multiway context, with dramatic
improvements in performance when data have multiway structure. However, the
previous implementation of multiway DWD was restricted to classification of
matrices, and did not account for sparsity. In this paper, we develop a general
framework for multiway classification which is applicable to any number of
dimensions and any degree of sparsity. We conducted extensive simulation
studies, showing that our model is robust to the degree of sparsity and
improves classification accuracy when the data have multiway structure. For our
motivating application, magnetic resonance spectroscopy (MRS) was used to
measure the abundance of several metabolites across multiple neurological
regions and across multiple time points in a mouse model of Friedreich's
ataxia, yielding a four-way data array. Our method reveals a robust and
interpretable multi-region metabolomic signal that discriminates the groups of
interest. We also successfully apply our method to gene expression time course
data for multiple sclerosis treatment. An R implementation is available in the
package MultiwayClassification at
http://github.com/lockEF/MultiwayClassification .
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