Machine learning for balanced and imbalanced data

Recently, a kernel based online sequential extreme learning machine (OS-ELM) methods, OS-ELM with kernels (OS-ELMK) for non-stationary time series prediction is proposed. However, OS-ELMK has not been applied to classification problems and it is not clear which OS-ELM based method is more effective...

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Main Author: Ding, Shuya
Other Authors: Lin Zhiping
Format: Final Year Project
Language:English
Published: 2016
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Online Access:http://hdl.handle.net/10356/67557
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-675572023-07-07T16:05:53Z Machine learning for balanced and imbalanced data Ding, Shuya Lin Zhiping School of Electrical and Electronic Engineering DRNTU::Engineering Recently, a kernel based online sequential extreme learning machine (OS-ELM) methods, OS-ELM with kernels (OS-ELMK) for non-stationary time series prediction is proposed. However, OS-ELMK has not been applied to classification problems and it is not clear which OS-ELM based method is more effective as a classifier. In this project, OS-ELM is extended to classification problems with relatively balanced datasets and compared with other OS-ELM methods. It is the first kernel-based OS-ELM classifier which can learn in both chunk-by-chunk and one-by-one modes. Guidelines for selecting appropriate OS-ELM classifier for different applications are also provided. Moreover, by combining OS-ELMK’s implicit feature mapping and a cost sensitive weighting scheme from weighted OS-ELM (WOS-ELM), a new kernel based online sequential method is proposed for imbalanced data classification. The new method is referred to as weighted OS-ELM with kernels (WOS-ELMK). The performance of WOS-ELMK is evaluated on benchmark imbalanced datasets and compared with a recently proposed voting based WOS-ELM (VWOS-ELM) method. Bachelor of Engineering 2016-05-18T03:41:06Z 2016-05-18T03:41:06Z 2016 Final Year Project (FYP) http://hdl.handle.net/10356/67557 en Nanyang Technological University 49 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering
spellingShingle DRNTU::Engineering
Ding, Shuya
Machine learning for balanced and imbalanced data
description Recently, a kernel based online sequential extreme learning machine (OS-ELM) methods, OS-ELM with kernels (OS-ELMK) for non-stationary time series prediction is proposed. However, OS-ELMK has not been applied to classification problems and it is not clear which OS-ELM based method is more effective as a classifier. In this project, OS-ELM is extended to classification problems with relatively balanced datasets and compared with other OS-ELM methods. It is the first kernel-based OS-ELM classifier which can learn in both chunk-by-chunk and one-by-one modes. Guidelines for selecting appropriate OS-ELM classifier for different applications are also provided. Moreover, by combining OS-ELMK’s implicit feature mapping and a cost sensitive weighting scheme from weighted OS-ELM (WOS-ELM), a new kernel based online sequential method is proposed for imbalanced data classification. The new method is referred to as weighted OS-ELM with kernels (WOS-ELMK). The performance of WOS-ELMK is evaluated on benchmark imbalanced datasets and compared with a recently proposed voting based WOS-ELM (VWOS-ELM) method.
author2 Lin Zhiping
author_facet Lin Zhiping
Ding, Shuya
format Final Year Project
author Ding, Shuya
author_sort Ding, Shuya
title Machine learning for balanced and imbalanced data
title_short Machine learning for balanced and imbalanced data
title_full Machine learning for balanced and imbalanced data
title_fullStr Machine learning for balanced and imbalanced data
title_full_unstemmed Machine learning for balanced and imbalanced data
title_sort machine learning for balanced and imbalanced data
publishDate 2016
url http://hdl.handle.net/10356/67557
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