Title
Disjoint Subspaces for Common and Distinct Component Analysis: Application to Task FMRI Data
Abstract
Data-driven methods based on independent component analysis (ICA) and its extensions, have been attractive for data fusion as they minimize the assumptions placed on the data. Two widely used extensions of ICA, joint ICA (jICA) and multiset canonical correlation analysis prior to joint ICA (MCCA-jICA) fuse data from different datasets by assuming identical mixing matrices. However, these methods typically only take the common features into account within the linked datasets by disregarding the available distinct features, thus limiting their usefulness. In this paper, we propose a new method for fusion based on ICA and canonical correlation analysis (CCA), disjoint subspace framework using ICA (DS-ICA), to identify and extract not only the common but also distinct features, to yield results that better reveal the underlying relationships between the datasets. Separate analyses on the common and distinct subspaces provide flexibility of choosing suitable algorithm and order for each subspace, ensuring more robust results than the competitive methods. We perform and demonstrate performance advantage of DS-ICA through both simulations and application to multiset functional magnetic resonance imaging (fMRI) data collected from healthy controls, as well as patients of schizophrenia performing an auditory odd ball task (AOD).
Year
DOI
Venue
2019
10.1109/CISS.2019.8693045
2019 53rd Annual Conference on Information Sciences and Systems (CISS)
Field
DocType
ISBN
Mathematical optimization,Disjoint sets,Pattern recognition,Subspace topology,Computer science,Multiset,Canonical correlation,Linear subspace,Sensor fusion,Independent component analysis,Artificial intelligence,Component analysis
Conference
978-1-7281-1151-3
Citations 
PageRank 
References 
0
0.34
0
Authors
5
Name
Order
Citations
PageRank
M. A. B. S. Akhonda101.01
Qunfang Long203.38
Suchita Bhinge333.80
Vince D Calhoun42769268.91
Tülay Adali51690126.40