Title :
Local-Aggregate Modeling for Multi-subject Neuroimage Data via Distributed Optimization
Author :
Yue Hu ; Allen, Genevera I.
Abstract :
Developing multi-subject predictive models based on whole-brain neuroimage data for each subject is a major challenge due to the spatio-temporal nature of the variables and the massive amount of data relative to the number of subjects. We propose a novel multivariate machine learning model and algorithmic strategy for multi-subject regression or classification that uses regularization to directly account for the spatio-temporal nature of the data. Our method begins by fitting multi-subject models to each location separately (similar to univariate frameworks), and then aggregates information across nearby locations through regularization. We develop an optimization strategy so that our so called, Local-Aggregate Models, can be fit in a completely distributed manner over the locations which greatly reduces computational costs. Our models achieve better predictions with more interpretable results as demonstrated through a multi-subject EEG example.
Keywords :
electroencephalography; learning (artificial intelligence); medical signal processing; optimisation; regression analysis; distributed optimization; local-aggregate modeling; local-aggregate models; multi subject EEG example; multisubject neuroimage data; novel multivariate machine learning model; spatio-temporal nature; whole-brain neuroimage data; Brain modeling; Computational modeling; Data models; Electroencephalography; Neuroimaging; Optimization; Predictive models; EEG; generalized linear models; multi-subject data; neuroimaging; parallel computing;
Conference_Titel :
Pattern Recognition in Neuroimaging (PRNI), 2013 International Workshop on
Conference_Location :
Philadelphia, PA
DOI :
10.1109/PRNI.2013.60