Title
A Deep Residual Computation Model For Heterogeneous Data Learning In Smart Internet Of Things
Abstract
Smart Internet of Things (smart IoT) have emerged as a transformative computing paradigm recently. This new approach has made great contributions in the area of cyber-physical-social systems by employing various computational intelligence techniques like deep learning, for analyzing data, especially heterogeneous data from sensing and wireless communication. As a representative example of deep learning, deep residual networks have achieved excellent performance for big data feature learning since they can avoid gradient vanishing issues in deep learning models effectively. Unfortunately, they could not learn features for heterogeneous data, especially multi-modal data, in smart IoT. This paper proposes a deep residual computation model by generalizing the deep residual network in the tensor space. Especially, each multi-modal data object is represented as a tensor, while all hidden layers are also represented as tensors. Furthermore, we propose a tensor back-propagation algorithm to train the parameters of the deep residual computation model. Finally, we conduct extensive experiments to evaluate the presented deep residual model by comparing with the existing models such as multi-modal deep learning models, 3D deep residual models, deep computation models, and deep convolutional computation models. Results show that the proposed model produces more accurate classification results than other models for heterogeneous data feature learning in cyber-physical-social systems. (C) 2021 Elsevier B.V. All rights reserved.
Year
DOI
Venue
2021
10.1016/j.asoc.2021.107361
APPLIED SOFT COMPUTING
Keywords
DocType
Volume
Deep residual computation, High-order computation, Tensor back-propagation algorithm, Classification
Journal
107
ISSN
Citations 
PageRank 
1568-4946
0
0.34
References 
Authors
21
4
Name
Order
Citations
PageRank
Hang Yu1133.62
Laurence T. Yang26870682.61
Xiangchao Fan300.34
Qingchen Zhang400.34