Automated layer-wise solution for ensemble deep randomized feed-forward neural network
Author | Hu, Minghui |
Author | Gao, Ruobin |
Author | Suganthan, Ponnuthurai N. |
Author | Tanveer, M. |
Available date | 2023-02-08T10:53:35Z |
Publication Date | 2022-12-01 |
Publication Name | Neurocomputing |
Identifier | http://dx.doi.org/10.1016/j.neucom.2022.09.148 |
Citation | Hu, M., Gao, R., Suganthan, P. N., & Tanveer, M. (2022). Automated layer-wise solution for ensemble deep randomized feed-forward neural network. Neurocomputing, 514, 137-147. |
ISSN | 09252312 |
Abstract | The randomized feed-forward neural network is a single hidden layer feed-forward neural network that enables efficient learning by optimizing only the output weights. The ensemble deep learning framework significantly improves the performance of randomized neural networks. However, the framework's capabilities are limited by traditional hyper-parameter selection approaches. Meanwhile, different random network architectures, such as the existence or lack of a direct link and the mapping of direct links, can also strongly affect the results. We present an automated learning pipeline for the ensemble deep randomized feed-forward neural network in this paper, which integrates hyper-parameter selection and randomized network architectural search via Bayesian optimization to ensure robust performance. Experiments on 46 UCI tabular datasets show that our strategy produces state-of-the-art performance on various tabular datasets among a range of randomized networks and feed-forward neural networks. We also conduct ablation studies to investigate the impact of various hyper-parameters and network architectures. |
Language | en |
Publisher | Elsevier B.V. |
Subject | Automated machine learning Bayesian optimization Ensemble deep random vector functional link Random vector functional link Randomized feed-forward neural network |
Type | Article |
Pagination | 137-147 |
Volume Number | 514 |
Check access options
Files in this item
This item appears in the following Collection(s)
-
Information Intelligence [93 items ]