Mixture extreme learning machine algorithm for robust regression
Journal article
Zhao, Shangrui, Chen, Xuan-Ang, Wu, Jinran and Wang, You-Gan. (2023). Mixture extreme learning machine algorithm for robust regression. Knowledge-Based Systems. 280, p. Article 111033. https://doi.org/10.1016/j.knosys.2023.111033
Authors | Zhao, Shangrui, Chen, Xuan-Ang, Wu, Jinran and Wang, You-Gan |
---|---|
Abstract | The extreme learning machine (ELM) is a well-known approach for training single hidden layer feedforward neural networks (SLFNs) in machine learning. However, ELM is most effective when used for regression on datasets with simple Gaussian distributed error because it often employs a squared loss in its objective function. In contrast, real-world data is often collected from unpredictable and diverse contexts, which may contain complex noise that cannot be characterized by a single distribution. To address this challenge, we propose a robust mixture ELM algorithm, called Mixture-ELM, that enhances modeling capability and resilience to both Gaussian and non-Gaussian noise. The Mixture-ELM algorithm uses an adjusted objective function that blends Gaussian and Laplacian distributions to approximate any continuous distribution and match the noise. The Gaussian mixture accurately models the residual distribution, while the inclusion of the Laplacian distribution addresses the limitations of the Gaussian distribution in identifying outliers. We derive a solution to the novel objective function using the expectation maximization (EM) and iteratively reweighted least squares (IRLS) algorithms. We evaluate the effectiveness of the algorithm through numerical simulation and experiments on benchmark datasets, thereby demonstrating its superiority over other state-of-the-art machine learning methods in terms of robustness and generalization. |
Keywords | extreme learning machine; expectation maximization algorithm; iteratively reweighted least squares; algorithm; mixture distribution; prediction |
Year | 2023 |
Journal | Knowledge-Based Systems |
Journal citation | 280, p. Article 111033 |
Publisher | Elsevier B.V. |
ISSN | 0950-7051 |
Digital Object Identifier (DOI) | https://doi.org/10.1016/j.knosys.2023.111033 |
Scopus EID | 2-s2.0-85172878123 |
Open access | Published as ‘gold’ (paid) open access |
Page range | 1-12 |
Funder | Australian Research Council (ARC) |
Chunhui Program Collaborative Scientific Research Project | |
Publisher's version | License File Access Level Open |
Output status | Published |
Publication dates | |
Online | 26 Sep 2023 |
Publication process dates | |
Accepted | 22 Sep 2023 |
Deposited | 28 Nov 2023 |
ARC Funded Research | This output has been funded, wholly or partially, under the Australian Research Council Act 2001 |
Grant ID | DP160104292 |
202202004 |
https://acuresearchbank.acu.edu.au/item/8zzv5/mixture-extreme-learning-machine-algorithm-for-robust-regression
Download files
Publisher's version
OA_Zhao_2023_Mixture_extreme_learning_machine_algorithm_for.pdf | |
License: CC BY 4.0 | |
File access level: Open |
82
total views56
total downloads5
views this month3
downloads this month