期刊文献+
共找到3篇文章
< 1 >
每页显示 20 50 100
Multiple injuries of the ascending reticular activating system in a stroke patient:a diffusion tensor tractography study 被引量:1
1
作者 Sung Ho Jang Jeong Pyo Seo 《Neural Regeneration Research》 SCIE CAS CSCD 2017年第1期151-152,共2页
Consciousness is mainly controlled by activation of the ascending reticular activating system(ARAS).Diffusion tensor tractography(DTT),which is reconstructed from diffusion tensor imaging(DTI)data.
关键词 activating tensor ascending reconstructed injuries basal subarachnoid rehabilitation infarct injured
暂未订购
Optic radiation injury in a patient with intraventricular hemorrhage: a diffusion tensor tractography study
2
作者 Sung Ho Jang Jeong Pyo Seo 《Neural Regeneration Research》 SCIE CAS CSCD 2016年第6期1013-1014,共2页
Optic radiation(OR)injury can occur following various brain injuries and it is usually accompanied by visual field defects(Zhang et al.,2006).OR is very important for performing activities of daily living and prov... Optic radiation(OR)injury can occur following various brain injuries and it is usually accompanied by visual field defects(Zhang et al.,2006).OR is very important for performing activities of daily living and providing safety. 展开更多
关键词 tensor injuries accompanied performing providing thereby specificity reconstructed intracranial bilateral
暂未订购
Tucker tensor factor models:Matricization and mode-wise PCA estimation
3
作者 Xu Zhang Guodong Li +1 位作者 Catherine C.Liu Jianhua Guo 《Science China Mathematics》 2026年第2期487-538,共52页
High-dimensional,higher-order tensor data are gaining prominence in a variety of fields,including but not limited to computer vision and network analysis.Tensor factor models,induced from noisy versions of tensor deco... High-dimensional,higher-order tensor data are gaining prominence in a variety of fields,including but not limited to computer vision and network analysis.Tensor factor models,induced from noisy versions of tensor decompositions or factorizations,are natural potent instruments to study a collection of tensor-variate objects that may be dependent or independent.However,it is still in the early stage of developing statistical inferential theories for the estimation of various low-rank structures,which are customary to play the role of signals of tensor factor models.In this paper,we attempt to“decode”the estimation of a higher-order tensor factor model by leveraging tensor matricization.Specifically,we recast it into mode-wise traditional highdimensional vector/fiber factor models,enabling the deployment of conventional principal components analysis(PCA)for estimation.Demonstrated by the Tucker tensor factor model(TuTFaM),which is induced from the noisy version of the widely-used Tucker decomposition,we summarize that estimations on signal components are essentially mode-wise PCA techniques,and the involvement of projection and iteration will enhance the signal-to-noise ratio to various extents.We establish the inferential theory of the proposed estimators,conduct rich simulation experiments and illustrate how the proposed estimations can work in tensor reconstruction and clustering for independent video and dependent economic datasets,respectively. 展开更多
关键词 iterative projected estimation matricization principal components tensor reconstruction tensor subspace Tucker decomposition unsupervised learning
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部