Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial Basis

Recently, instead of selecting a kernel has been proposed which uses SVR, where the weight of each kernel is optimized during training. Along this line of research, many pioneering kernel learning algorithms have been proposed. The use of kernels provides a powerful and principled approach to modeli...

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Main Authors: Rezzy Eko Caraka, Hasbi Yasin, Adi Waridi Basyiruddin
Format: Article
Language:English
Published: Universitas Udayana 2017-06-01
Series:Jurnal Matematika
Online Access:https://ojs.unud.ac.id/index.php/jmat/article/view/30836
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spelling doaj-41223420d40b4559be2e4bc04180034d2020-11-25T02:13:32ZengUniversitas UdayanaJurnal Matematika1693-13942017-06-0171435710.24843/JMAT.2017.v07.i01.p8130836Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial BasisRezzy Eko Caraka0Hasbi Yasin1Adi Waridi Basyiruddin2Bioinformatics and Data Science Research Center, Bina Nusantara University, Anggrek Campus Room 700, Jakarta, IndonesiaDepartemen Statistika Universitas Diponegoro, SemarangDepartemen Statistika Universitas Diponegoro, SemarangRecently, instead of selecting a kernel has been proposed which uses SVR, where the weight of each kernel is optimized during training. Along this line of research, many pioneering kernel learning algorithms have been proposed. The use of kernels provides a powerful and principled approach to modeling nonlinear patterns through linear patterns in a feature space. Another bene?t is that the design of kernels and linear methods can be decoupled, which greatly facilitates the modularity of machine learning methods. We perform experiments on real data sets crude palm oil prices for application and better illustration using kernel radial basis. We see that evaluation gives a good to fit prediction and actual also good values showing the validity and accuracy of the realized model based on MAPE and R2. Keywords:  Crude Palm Oil; Forecasting; SVR; Radial Basis; Kernelhttps://ojs.unud.ac.id/index.php/jmat/article/view/30836
collection DOAJ
language English
format Article
sources DOAJ
author Rezzy Eko Caraka
Hasbi Yasin
Adi Waridi Basyiruddin
spellingShingle Rezzy Eko Caraka
Hasbi Yasin
Adi Waridi Basyiruddin
Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial Basis
Jurnal Matematika
author_facet Rezzy Eko Caraka
Hasbi Yasin
Adi Waridi Basyiruddin
author_sort Rezzy Eko Caraka
title Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial Basis
title_short Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial Basis
title_full Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial Basis
title_fullStr Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial Basis
title_full_unstemmed Peramalan Crude Palm Oil (CPO) Menggunakan Support Vector Regression Kernel Radial Basis
title_sort peramalan crude palm oil (cpo) menggunakan support vector regression kernel radial basis
publisher Universitas Udayana
series Jurnal Matematika
issn 1693-1394
publishDate 2017-06-01
description Recently, instead of selecting a kernel has been proposed which uses SVR, where the weight of each kernel is optimized during training. Along this line of research, many pioneering kernel learning algorithms have been proposed. The use of kernels provides a powerful and principled approach to modeling nonlinear patterns through linear patterns in a feature space. Another bene?t is that the design of kernels and linear methods can be decoupled, which greatly facilitates the modularity of machine learning methods. We perform experiments on real data sets crude palm oil prices for application and better illustration using kernel radial basis. We see that evaluation gives a good to fit prediction and actual also good values showing the validity and accuracy of the realized model based on MAPE and R2. Keywords:  Crude Palm Oil; Forecasting; SVR; Radial Basis; Kernel
url https://ojs.unud.ac.id/index.php/jmat/article/view/30836
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AT hasbiyasin peramalancrudepalmoilcpomenggunakansupportvectorregressionkernelradialbasis
AT adiwaridibasyiruddin peramalancrudepalmoilcpomenggunakansupportvectorregressionkernelradialbasis
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