Interpretable Deep Learning Methods for Multiview Learning
- URL: http://arxiv.org/abs/2302.07930v2
- Date: Fri, 16 Feb 2024 02:02:30 GMT
- Title: Interpretable Deep Learning Methods for Multiview Learning
- Authors: Hengkang Wang, Han Lu, Ju Sun, Sandra E Safo
- Abstract summary: iDeepViewLearn is a method for learning nonlinear relationships in data from multiple views.
Deep neural networks are used to learn view-independent low-dimensional embedding.
iDeepViewLearn is tested on simulated and two real-world data, including breast cancer-related gene expression and methylation data.
- Score: 7.369639553849422
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Technological advances have enabled the generation of unique and
complementary types of data or views (e.g. genomics, proteomics, metabolomics)
and opened up a new era in multiview learning research with the potential to
lead to new biomedical discoveries. We propose iDeepViewLearn (Interpretable
Deep Learning Method for Multiview Learning) for learning nonlinear
relationships in data from multiple views while achieving feature selection.
iDeepViewLearn combines deep learning flexibility with the statistical benefits
of data and knowledge-driven feature selection, giving interpretable results.
Deep neural networks are used to learn view-independent low-dimensional
embedding through an optimization problem that minimizes the difference between
observed and reconstructed data, while imposing a regularization penalty on the
reconstructed data. The normalized Laplacian of a graph is used to model
bilateral relationships between variables in each view, therefore, encouraging
selection of related variables. iDeepViewLearn is tested on simulated and two
real-world data, including breast cancer-related gene expression and
methylation data. iDeepViewLearn had competitive classification results and
identified genes and CpG sites that differentiated between individuals who died
from breast cancer and those who did not. The results of our real data
application and simulations with small to moderate sample sizes suggest that
iDeepViewLearn may be a useful method for small-sample-size problems compared
to other deep learning methods for multiview learning.
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