Multi-view learning-based data proliferator for boosting classification using highly imbalanced classes.

Journal: Journal of neuroscience methods
Published Date:

Abstract

BACKGROUND: Multi-view data representation learning explores the relationship between the views and provides rich complementary information that can improve computer-aided diagnosis. Specifically, existing machine learning methods devised to automate neurological disorder diagnosis using brain data provided new insights into how a particular disorder such as autism spectrum disorder (ASD) alters the brain construct. However, the performance of machine learning methods highly depends on the size of the training samples from both classes. In a real-world clinical setting, such medical data is very expensive and challenging to collect, might (i) suffer from several limitations such as imbalanced classes and (ii) have non-heterogeneous distribution when derived from multi-view brain representations.

Authors

  • Olfa Graa
    BASIRA lab, Faculty of Computer and Informatics, Istanbul Technical University, Istanbul, Turkey; University of Sousse, ENISo, Sousse, Tunisia.
  • Islem Rekik
    Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, USA.