DocumentCode
79770
Title
Higher Order Partial Least Squares (HOPLS): A Generalized Multilinear Regression Method
Author
Qibin Zhao ; Caiafa, Cesar F. ; Mandic, Danilo P. ; Chao, Z.C. ; Nagasaka, Y. ; Fujii, Naotaka ; Liqing Zhang ; Cichocki, Andrzej
Author_Institution
Lab. for Adv. Brain Signal Process., RIKEN, Saitama, Japan
Volume
35
Issue
7
fYear
2013
fDate
Jul-13
Firstpage
1660
Lastpage
1673
Abstract
A new generalized multilinear regression model, termed the higher order partial least squares (HOPLS), is introduced with the aim to predict a tensor (multiway array) Y from a tensor X through projecting the data onto the latent space and performing regression on the corresponding latent variables. HOPLS differs substantially from other regression models in that it explains the data by a sum of orthogonal Tucker tensors, while the number of orthogonal loadings serves as a parameter to control model complexity and prevent overfitting. The low-dimensional latent space is optimized sequentially via a deflation operation, yielding the best joint subspace approximation for both X and Y. Instead of decomposing X and Y individually, higher order singular value decomposition on a newly defined generalized cross-covariance tensor is employed to optimize the orthogonal loadings. A systematic comparison on both synthetic data and real-world decoding of 3D movement trajectories from electrocorticogram signals demonstrate the advantages of HOPLS over the existing methods in terms of better predictive ability, suitability to handle small sample sizes, and robustness to noise.
Keywords
computational complexity; electroencephalography; least mean squares methods; medical signal processing; regression analysis; singular value decomposition; 3D movement trajectories; HOPLS; deflation operation; electrocorticogram signals; generalized cross-covariance tensor; generalized multilinear regression method; higher order partial least squares; higher order singular value decomposition; latent variables; low-dimensional latent space; model complexity; orthogonal Tucker tensors; Approximation methods; Data models; Loading; Matrix decomposition; Optimization; Tensile stress; Vectors; Multilinear regression; constrained block Tucker decomposition; electrocorticogram; fusion of behavioral and neural data; higher order singular value decomposition; partial least squares; Algorithms; Animals; Computer Simulation; Electroencephalography; Haplorhini; Least-Squares Analysis; Models, Neurological; Reproducibility of Results; Signal Processing, Computer-Assisted;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2012.254
Filename
6365194
Link To Document