DocumentCode :
3707434
Title :
Hierarchical tucker tensor regression: Application to brain imaging data analysis
Author :
Ming Hou;Brahim Chaib-draa
Author_Institution :
Laval University, Canada
fYear :
2015
Firstpage :
1344
Lastpage :
1348
Abstract :
We present a novel generalized linear tensor regression model, which takes tensor-variate inputs as covariates and finds low-rank (almost) best approximation of regression coefficient arrays using hierarchical Tucker decomposition. With limited sample size, our model is highly compact and extremely efficient as it requires only O(dr3 + dpr) parameters for order d tensors of mode size p and rank r, which avoids the exponential growth in d, in contrast to O(rd + dpr) parameters of Tucker regression modeling. Our model also maintains the flexibility like classical Tucker regression by allowing distinct ranks on different modes according to a dimension tree structure. We evaluate our new model on both synthetic data and real-life MRI images to show its effectiveness.
Keywords :
"Tensile stress","Brain modeling","Data models","Estimation","Imaging","Approximation methods","Parameter estimation"
Publisher :
ieee
Conference_Titel :
Image Processing (ICIP), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/ICIP.2015.7351019
Filename :
7351019
Link To Document :
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