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AuthorHu, Minghui
AuthorHerng Chion, Jet
AuthorSuganthan, Ponnuthurai Nagaratnam
AuthorKatuwal, Rakesh Kumar
Available date2025-01-20T05:12:04Z
Publication Date2023
Publication NameIEEE Transactions on Systems, Man, and Cybernetics: Systems
ResourceScopus
Identifierhttp://dx.doi.org/10.1109/TSMC.2022.3213628
ISSN21682216
URIhttp://hdl.handle.net/10576/62282
AbstractInspired by the ensemble strategy of machine learning, deep random vector functional link (dRVFL), and ensemble dRVFL (edRVFL) has shown state-of-The-Art results on different datasets. Our present work first fills the gap of dRVFL and edRVFL work in the field of regression. We test and evaluate the performances of the dRVFLs on regression problems. Subsequently, we propose a novel regularization method [boosted factor (BF)], two dRVFLs variants [edRVFL with skip connection (edRVFL-SC) and edRVFL with random skip connections (edRVFL-RSC)] and one strategy [ensemble skip connection edRVFL (esc-edRVFL)] which show significant improvement over the original dRVFL. The BF is a newly introduced hyperparameter to scale the values of the activated hidden neurons to accommodate the diversity of the data, and it is also able to filter the neurons. edRVFL-SC and edRVFL-RSC are the edRVFL variants with skip connections. In edRVFL-SC, we apply dense skip connections to the edRVFL, which is inspired by the residual architecture in the deep learning area. However, due to the specificity of randomized networks, the simple skip connections are probably leading to the reuse of useless features. To address this problem, we propose a random skip connection-based edRVFL, which can keep the diversity in the latent space. esc-RVFL is an ensemble scheme that utilizes several edRVFL-RSC models trained on the different folds of the training dataset. The esc-edRVFL is identified as the best-performing algorithm through a comprehensive evaluation of 31 UCI datasets.
Languageen
PublisherInstitute of Electrical and Electronics Engineers Inc.
SubjectEnsemble
neural networks
random vector functional link (RVFL)
regression
TitleEnsemble Deep Random Vector Functional Link Neural Network for Regression
TypeArticle
Pagination2604-2615
Issue Number5
Volume Number53
dc.accessType Open Access


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