Authors
Xiantong Zhen, Mengyang Yu, Xiaofei He, Shuo Li
Publication date
2017/3/28
Journal
IEEE transactions on pattern analysis and machine intelligence
Volume
40
Issue
2
Pages
497-504
Publisher
IEEE
Description
Multi-target regression has recently regained great popularity due to its capability of simultaneously learning multiple relevant regression tasks and its wide applications in data mining, computer vision and medical image analysis, while great challenges arise from jointly handling inter-target correlations and input-output relationships. In this paper, we propose Multi-layer Multi-target Regression (MMR) which enables simultaneously modeling intrinsic inter-target correlations and nonlinear input-output relationships in a general framework via robust low-rank learning. Specifically, the MMR can explicitly encode inter-target correlations in a structure matrix by matrix elastic nets (MEN); the MMR can work in conjunction with the kernel trick to effectively disentangle highly complex nonlinear input-output relationships; the MMR can be efficiently solved by a new alternating optimization algorithm with guaranteed …
Total citations
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Scholar articles
X Zhen, M Yu, X He, S Li - IEEE transactions on pattern analysis and machine …, 2017