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Published in: Knowledge and Information Systems 5/2023

10-01-2023 | Regular Paper

A novel correlation Gaussian process regression-based extreme learning machine

Authors: Xuan Ye, Yulin He, Manjing Zhang, Philippe Fournier-Viger, Joshua Zhexue Huang

Published in: Knowledge and Information Systems | Issue 5/2023

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Abstract

An obvious defect of extreme learning machine (ELM) is that its prediction performance is sensitive to the random initialization of input-layer weights and hidden-layer biases. To make ELM insensitive to random initialization, GPRELM adopts the simple an effective strategy of integrating Gaussian process regression into ELM. However, there is a serious overfitting problem in kernel-based GPRELM (kGPRELM). In this paper, we investigate the theoretical reasons for the overfitting of kGPRELM and further propose a correlation-based GPRELM (cGPRELM), which uses a correlation coefficient to measure the similarity between two different hidden-layer output vectors. cGPRELM reduces the likelihood that the covariance matrix becomes an identity matrix when the number of hidden-layer nodes is increased, effectively controlling overfitting. Furthermore, cGPRELM works well for improper initialization intervals where ELM and kGPRELM fail to provide good predictions. The experimental results on real classification and regression data sets demonstrate the feasibility and superiority of cGPRELM, as it not only achieves better generalization performance but also has a lower computational complexity.

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Literature
1.
go back to reference Alcalá-Fdez J, Fernandez A, Luengo J, Derrac J, García S, Sánchez L, Herrera F (2011) KEEL data-mining software tool: data set repository, integration of algorithms and experimental analysis framework. J Mult-Valued Logic Soft Comput 17(2–3):255–287 Alcalá-Fdez J, Fernandez A, Luengo J, Derrac J, García S, Sánchez L, Herrera F (2011) KEEL data-mining software tool: data set repository, integration of algorithms and experimental analysis framework. J Mult-Valued Logic Soft Comput 17(2–3):255–287
2.
go back to reference Cao JW, Lin ZP, Huang GB (2012) Self-adaptive evolutionary extreme learning machine. Neural Process Lett 36(3):285–305CrossRef Cao JW, Lin ZP, Huang GB (2012) Self-adaptive evolutionary extreme learning machine. Neural Process Lett 36(3):285–305CrossRef
3.
go back to reference Chatzis SP, Korkinof D, Demiris Y (2011) The one-hidden layer non-parametric Bayesian kernel machine, In: Proceedings of IEEE international conference on tools with artificial intelligence, pp 825–831 Chatzis SP, Korkinof D, Demiris Y (2011) The one-hidden layer non-parametric Bayesian kernel machine, In: Proceedings of IEEE international conference on tools with artificial intelligence, pp 825–831
4.
go back to reference Fernández-Delgado M, Cernadas E, Barro S, Amorim D (2014) Do we need hundreds of classifiers to solve real world classification problems? J Mach Learn Res 15(1):3133–3181MathSciNetMATH Fernández-Delgado M, Cernadas E, Barro S, Amorim D (2014) Do we need hundreds of classifiers to solve real world classification problems? J Mach Learn Res 15(1):3133–3181MathSciNetMATH
5.
go back to reference Fu AM, Dong CR, Wang LS (2015) An experimental study on stability and generalization of extreme learning machines. Int J Mach Learn Cybern 6:1CrossRef Fu AM, Dong CR, Wang LS (2015) An experimental study on stability and generalization of extreme learning machines. Int J Mach Learn Cybern 6:1CrossRef
6.
go back to reference Fu AM, Wang XZ, He YL, Wang LS (2014) A study on residence error of training an extreme learning machine and its application to evolutionary algorithms. Neurocomputing 146:75–82CrossRef Fu AM, Wang XZ, He YL, Wang LS (2014) A study on residence error of training an extreme learning machine and its application to evolutionary algorithms. Neurocomputing 146:75–82CrossRef
7.
go back to reference Han F, Yao HF, Ling QH (2013) An improved evolutionary extreme learning machine based on particle swarm optimization. Neurocomputing 116:87–93CrossRef Han F, Yao HF, Ling QH (2013) An improved evolutionary extreme learning machine based on particle swarm optimization. Neurocomputing 116:87–93CrossRef
8.
go back to reference Hu J, Heidari AA, Shou Y, Ye H, Wang L, Huang X, Wu P (2022) Detection of COVID-19 severity using blood gas analysis parameters and Harris hawks optimized extreme learning machine. Comput Biol Med 142:105166CrossRef Hu J, Heidari AA, Shou Y, Ye H, Wang L, Huang X, Wu P (2022) Detection of COVID-19 severity using blood gas analysis parameters and Harris hawks optimized extreme learning machine. Comput Biol Med 142:105166CrossRef
9.
go back to reference Huang GB, Chen L, Siew CK (2006) Universal approximation using incremental constructive feedforward networks with random hidden nodes. IEEE Trans Neural Netw 17(4):879–892CrossRef Huang GB, Chen L, Siew CK (2006) Universal approximation using incremental constructive feedforward networks with random hidden nodes. IEEE Trans Neural Netw 17(4):879–892CrossRef
10.
go back to reference Huang GB, Wang DH, Lan Y (2011) Extreme learning machines: a survey. Int J Mach Learn Cybern 2(2):107–122CrossRef Huang GB, Wang DH, Lan Y (2011) Extreme learning machines: a survey. Int J Mach Learn Cybern 2(2):107–122CrossRef
11.
go back to reference Huang GB, Zhou HM, Ding XJ, Zhang R (2012) Extreme learning machine for regression and multiclass classification. IEEE Trans Syst Man Cybern B Cybern 42(2):513–529CrossRef Huang GB, Zhou HM, Ding XJ, Zhang R (2012) Extreme learning machine for regression and multiclass classification. IEEE Trans Syst Man Cybern B Cybern 42(2):513–529CrossRef
12.
go back to reference Huang GB, Zhu QY, Siew CK (2004) Extreme learning machine: a new learning scheme of feedforward neural networks. Proc Int Joint Conf Neural Netw 2:985–990 Huang GB, Zhu QY, Siew CK (2004) Extreme learning machine: a new learning scheme of feedforward neural networks. Proc Int Joint Conf Neural Netw 2:985–990
13.
go back to reference Huang GB, Zhu QY, Siew CK (2006) Extreme learning machine: theory and applications. Neurocomputing 70(1):489–501CrossRef Huang GB, Zhu QY, Siew CK (2006) Extreme learning machine: theory and applications. Neurocomputing 70(1):489–501CrossRef
14.
go back to reference Iosifidis A, Tefas A, Pitas I (2015) On the kernel extreme learning machine classifier. Pattern Recogn Lett 54:11–17CrossRef Iosifidis A, Tefas A, Pitas I (2015) On the kernel extreme learning machine classifier. Pattern Recogn Lett 54:11–17CrossRef
15.
go back to reference Kasun LLC, Zhou H, Huang GB et al (2013) Representational learning with ELMs for big data. IEEE Intell Syst 28(6):31–34 Kasun LLC, Zhou H, Huang GB et al (2013) Representational learning with ELMs for big data. IEEE Intell Syst 28(6):31–34
16.
go back to reference Lan Y, Soh YC, Huang GB (2009) Ensemble of online sequential extreme learning machine. Neurocomputing 72(13–15):3391–3395CrossRef Lan Y, Soh YC, Huang GB (2009) Ensemble of online sequential extreme learning machine. Neurocomputing 72(13–15):3391–3395CrossRef
17.
go back to reference Larrea M, Porto A, Irigoyen E et al (2021) Extreme learning machine ensemble model for time series forecasting boosted by PSO: application to an electric consumption problem. Neurocomputing 452:465–472CrossRef Larrea M, Porto A, Irigoyen E et al (2021) Extreme learning machine ensemble model for time series forecasting boosted by PSO: application to an electric consumption problem. Neurocomputing 452:465–472CrossRef
18.
go back to reference Lichman M (2013) UCI machine learning repository. University of California, School of Information and Computer Science, Irvine, CA Lichman M (2013) UCI machine learning repository. University of California, School of Information and Computer Science, Irvine, CA
19.
go back to reference Liu N, Wang H (2010) Ensemble based extreme learning machine. IEEE Signal Process Lett 17(8):754–757CrossRef Liu N, Wang H (2010) Ensemble based extreme learning machine. IEEE Signal Process Lett 17(8):754–757CrossRef
20.
go back to reference Lukasik M, Bontcheva K, Cohn T et al (2019) Gaussian processes for rumour stance classification in social media. ACM Trans Inf Syst 37(2):1–24CrossRef Lukasik M, Bontcheva K, Cohn T et al (2019) Gaussian processes for rumour stance classification in social media. ACM Trans Inf Syst 37(2):1–24CrossRef
21.
go back to reference Luo JH, Vong CM, Wong PK (2014) Sparse Bayesian extreme learning machine for multi-classification. IEEE Trans Neural Netw Learn Syst 25(4):836–843CrossRef Luo JH, Vong CM, Wong PK (2014) Sparse Bayesian extreme learning machine for multi-classification. IEEE Trans Neural Netw Learn Syst 25(4):836–843CrossRef
22.
go back to reference Mair S, Brefeld U (2018) Distributed robust Gaussian process regression. Knowl Inf Syst 55(2):415–435CrossRef Mair S, Brefeld U (2018) Distributed robust Gaussian process regression. Knowl Inf Syst 55(2):415–435CrossRef
23.
go back to reference Nguyen V, Gupta S, Rana S, Li C, Venkatesh S (2019) Filtering Bayesian optimization approach in weakly specified search space. Knowl Inf Syst 60(1):385–413CrossRef Nguyen V, Gupta S, Rana S, Li C, Venkatesh S (2019) Filtering Bayesian optimization approach in weakly specified search space. Knowl Inf Syst 60(1):385–413CrossRef
25.
go back to reference Rasmussen CE, Williams CKI (2006) Gaussian processes for machine learning. The MIT Press Rasmussen CE, Williams CKI (2006) Gaussian processes for machine learning. The MIT Press
26.
go back to reference Silva DNG, Pacifico LDS, Ludermir TB (2011) An evolutionary extreme learning machine based on group search optimization, In: Proceedings of the IEEE congress on evolutionary computation, pp 574–580 Silva DNG, Pacifico LDS, Ludermir TB (2011) An evolutionary extreme learning machine based on group search optimization, In: Proceedings of the IEEE congress on evolutionary computation, pp 574–580
27.
go back to reference Song G, Dai Q, Han X, Guo L (2020) Two novel ELM-based stacking deep models focused on image recognition. Appl Intel 50(5):1345–1366CrossRef Song G, Dai Q, Han X, Guo L (2020) Two novel ELM-based stacking deep models focused on image recognition. Appl Intel 50(5):1345–1366CrossRef
28.
go back to reference Soria-Olivas E, Gomez-Sanchis J, Jarman IH, Vila-Frances J (2011) BELM: Bayesian extreme learning machine. IEEE Trans Neural Netw 22(3):505–509CrossRef Soria-Olivas E, Gomez-Sanchis J, Jarman IH, Vila-Frances J (2011) BELM: Bayesian extreme learning machine. IEEE Trans Neural Netw 22(3):505–509CrossRef
29.
go back to reference Wang YG, Cao FL, Yuan YB (2011) A study on effectiveness of extreme learning machine. Neurocomputing 74(16):2483–2490CrossRef Wang YG, Cao FL, Yuan YB (2011) A study on effectiveness of extreme learning machine. Neurocomputing 74(16):2483–2490CrossRef
30.
go back to reference Wilson AG, Adams RP (2013) Gaussian process kernels for pattern discovery and extrapolation. Proc Int Conf Mach Learn 3:1067–1075 Wilson AG, Adams RP (2013) Gaussian process kernels for pattern discovery and extrapolation. Proc Int Conf Mach Learn 3:1067–1075
31.
go back to reference Xue J, Zhou S, Liu Q, Liu X, Yin J (2018) Financial time series prediction using \(l\)2, 1RF-ELM. Neurocomputing 277:176–186CrossRef Xue J, Zhou S, Liu Q, Liu X, Yin J (2018) Financial time series prediction using \(l\)2, 1RF-ELM. Neurocomputing 277:176–186CrossRef
32.
go back to reference Xue XW, Yao M, Wu ZH, Yang JH (2014) Genetic ensemble of extreme learning machine. Neurocomputing 129:175–184CrossRef Xue XW, Yao M, Wu ZH, Yang JH (2014) Genetic ensemble of extreme learning machine. Neurocomputing 129:175–184CrossRef
33.
go back to reference Zhai JH, Xu HY, Wang XZ (2012) Dynamic ensemble extreme learning machine based on sample entropy. Soft Comput 16(9):1493–1502CrossRef Zhai JH, Xu HY, Wang XZ (2012) Dynamic ensemble extreme learning machine based on sample entropy. Soft Comput 16(9):1493–1502CrossRef
34.
go back to reference Zhu QY, Qin AK, Suganthan PN, Huang GB (2005) Evolutionary extreme learning machine. Pattern Recogn 38(10):1759–1763CrossRefMATH Zhu QY, Qin AK, Suganthan PN, Huang GB (2005) Evolutionary extreme learning machine. Pattern Recogn 38(10):1759–1763CrossRefMATH
Metadata
Title
A novel correlation Gaussian process regression-based extreme learning machine
Authors
Xuan Ye
Yulin He
Manjing Zhang
Philippe Fournier-Viger
Joshua Zhexue Huang
Publication date
10-01-2023
Publisher
Springer London
Published in
Knowledge and Information Systems / Issue 5/2023
Print ISSN: 0219-1377
Electronic ISSN: 0219-3116
DOI
https://doi.org/10.1007/s10115-022-01803-4

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