Multimodel Feature Reinforcement Framework Using Moore-Penrose Inverse for Big Data Analysis.
IEEE Trans Neural Netw Learn Syst
; 32(11): 5008-5021, 2021 Nov.
Article
en En
| MEDLINE
| ID: mdl-33021948
Fully connected representation learning (FCRL) is one of the widely used network structures in multimodel image classification frameworks. However, most FCRL-based structures, for instance, stacked autoencoder encode features and find the final cognition with separate building blocks, resulting in loosely connected feature representation. This article achieves a robust representation by considering a low-dimensional feature and the classifier model simultaneously. Thus, a new hierarchical subnetwork-based neural network (HSNN) is proposed in this article. The novelties of this framework are as follows: 1) it is an iterative learning process, instead of stacking separate blocks to obtain the discriminative encoding and the final classification results. In this sense, the optimal global features are generated; 2) it applies Moore-Penrose (MP) inverse-based batch-by-batch learning strategy to handle large-scale data sets, so that large data set, such as Place365 containing 1.8 million images, can be processed effectively. The experimental results on multiple domains with a varying number of training samples from â¼ 1 K to â¼ 2 M show that the proposed feature reinforcement framework achieves better generalization performance compared with most state-of-the-art FCRL methods.
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01-internacional
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MEDLINE
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En
Revista:
IEEE Trans Neural Netw Learn Syst
Año:
2021
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Article
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