Different learning functions for weighted kernel regression in solving small sample problem with noise

Previously, weighted kernel regression (WKR) for solving small samples problem has been reported. In the original WKR, the simple iterative learning technique and the formulated learning function in estimating weight parameters are designed only to solve non-noisy and small training samples problem....

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Main Authors: Ibrahim, Zuwairie, Arshad, Nurul Wahidah, Shapiai @ Abd. Razak, Mohd. Ibrahim, Mokhtar, Norrima
Format: Conference or Workshop Item
Published: 2015
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Online Access:http://eprints.utm.my/id/eprint/61202/
http://alife-robotics.co.jp/Call%20for%20Papers.pdf
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Institution: Universiti Teknologi Malaysia
id my.utm.61202
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spelling my.utm.612022017-08-21T04:10:57Z http://eprints.utm.my/id/eprint/61202/ Different learning functions for weighted kernel regression in solving small sample problem with noise Ibrahim, Zuwairie Arshad, Nurul Wahidah Shapiai @ Abd. Razak, Mohd. Ibrahim Mokhtar, Norrima TP Chemical technology Previously, weighted kernel regression (WKR) for solving small samples problem has been reported. In the original WKR, the simple iterative learning technique and the formulated learning function in estimating weight parameters are designed only to solve non-noisy and small training samples problem. In this study, an extension of WKR in solving noisy and small training samples is investigated. The objective of the investigation is to extend the capability and effectiveness of WKR when solving various problems. Therefore, four new learning functions are proposed for estimating weight parameters. In general, the formulated learning functions are added with a regularization term instead of error term only as in the existing WKR. However, one free parameter associated to the regularization term has firstly to be predefined. Hence, a simple cross-validation technique is introduced to estimate this free parameter value. The improvement, in terms of the prediction accuracy as compared to existing WKR is presented through a series of experiments. 2015 Conference or Workshop Item PeerReviewed Ibrahim, Zuwairie and Arshad, Nurul Wahidah and Shapiai @ Abd. Razak, Mohd. Ibrahim and Mokhtar, Norrima (2015) Different learning functions for weighted kernel regression in solving small sample problem with noise. In: The International Conference on Artificial Life and Robotics 2015 (ICAROB 2015) 20th Arob Anniversary, 10-12 Jan, 2015, Japan. http://alife-robotics.co.jp/Call%20for%20Papers.pdf
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TP Chemical technology
spellingShingle TP Chemical technology
Ibrahim, Zuwairie
Arshad, Nurul Wahidah
Shapiai @ Abd. Razak, Mohd. Ibrahim
Mokhtar, Norrima
Different learning functions for weighted kernel regression in solving small sample problem with noise
description Previously, weighted kernel regression (WKR) for solving small samples problem has been reported. In the original WKR, the simple iterative learning technique and the formulated learning function in estimating weight parameters are designed only to solve non-noisy and small training samples problem. In this study, an extension of WKR in solving noisy and small training samples is investigated. The objective of the investigation is to extend the capability and effectiveness of WKR when solving various problems. Therefore, four new learning functions are proposed for estimating weight parameters. In general, the formulated learning functions are added with a regularization term instead of error term only as in the existing WKR. However, one free parameter associated to the regularization term has firstly to be predefined. Hence, a simple cross-validation technique is introduced to estimate this free parameter value. The improvement, in terms of the prediction accuracy as compared to existing WKR is presented through a series of experiments.
format Conference or Workshop Item
author Ibrahim, Zuwairie
Arshad, Nurul Wahidah
Shapiai @ Abd. Razak, Mohd. Ibrahim
Mokhtar, Norrima
author_facet Ibrahim, Zuwairie
Arshad, Nurul Wahidah
Shapiai @ Abd. Razak, Mohd. Ibrahim
Mokhtar, Norrima
author_sort Ibrahim, Zuwairie
title Different learning functions for weighted kernel regression in solving small sample problem with noise
title_short Different learning functions for weighted kernel regression in solving small sample problem with noise
title_full Different learning functions for weighted kernel regression in solving small sample problem with noise
title_fullStr Different learning functions for weighted kernel regression in solving small sample problem with noise
title_full_unstemmed Different learning functions for weighted kernel regression in solving small sample problem with noise
title_sort different learning functions for weighted kernel regression in solving small sample problem with noise
publishDate 2015
url http://eprints.utm.my/id/eprint/61202/
http://alife-robotics.co.jp/Call%20for%20Papers.pdf
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