Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method

Outliers represent the points that greatly diverge and act differently from the rest of the points. These kinds of phenomenon usually happen in the data especially in time series data. The presence of this outlier gave bad effect in all statistical method including forecasting if there are no action...

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Main Authors: Wahir, Norsoraya Azurin, Nor, Maria Elena, Rusiman, Mohd Saifullah, G. P., Khuneswari
Format: Article
Language:English
Published: UTHM Publisher 2018
Subjects:
Online Access:http://eprints.uthm.edu.my/5359/1/AJ%202018%20%28854%29%20Alternative%20method%20outlier%20treatments%20with%20Box-Jenkins%20and%20neural%20network%20via%20interpolation%20method.pdf
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author Wahir, Norsoraya Azurin
Nor, Maria Elena
Rusiman, Mohd Saifullah
G. P., Khuneswari
author_facet Wahir, Norsoraya Azurin
Nor, Maria Elena
Rusiman, Mohd Saifullah
G. P., Khuneswari
author_sort Wahir, Norsoraya Azurin
collection UTHM
description Outliers represent the points that greatly diverge and act differently from the rest of the points. These kinds of phenomenon usually happen in the data especially in time series data. The presence of this outlier gave bad effect in all statistical method including forecasting if there are no actions on it. Thus, this paper discusses alternative methods which are linear interpolation and cubic spline interpolation to the time series data as outlier treatment. Assuming outlier as missing value in the data, the outlier were detected and the results were compared using forecast accuracies by two popular forecasting model, Box-Jenkins and neural network. The monthly time series data of Malaysia tourist arrival were used in this paper from 1998 until 2015. The result indicates that the improved time series data using the linear interpolation and cubic spline interpolation showed great performance in forecasting than the original data series.
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spelling uthm.eprints-53592022-01-09T04:34:51Z http://eprints.uthm.edu.my/5359/ Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method Wahir, Norsoraya Azurin Nor, Maria Elena Rusiman, Mohd Saifullah G. P., Khuneswari TA Engineering (General). Civil engineering (General) TA329-348 Engineering mathematics. Engineering analysis Outliers represent the points that greatly diverge and act differently from the rest of the points. These kinds of phenomenon usually happen in the data especially in time series data. The presence of this outlier gave bad effect in all statistical method including forecasting if there are no actions on it. Thus, this paper discusses alternative methods which are linear interpolation and cubic spline interpolation to the time series data as outlier treatment. Assuming outlier as missing value in the data, the outlier were detected and the results were compared using forecast accuracies by two popular forecasting model, Box-Jenkins and neural network. The monthly time series data of Malaysia tourist arrival were used in this paper from 1998 until 2015. The result indicates that the improved time series data using the linear interpolation and cubic spline interpolation showed great performance in forecasting than the original data series. UTHM Publisher 2018 Article PeerReviewed text en http://eprints.uthm.edu.my/5359/1/AJ%202018%20%28854%29%20Alternative%20method%20outlier%20treatments%20with%20Box-Jenkins%20and%20neural%20network%20via%20interpolation%20method.pdf Wahir, Norsoraya Azurin and Nor, Maria Elena and Rusiman, Mohd Saifullah and G. P., Khuneswari (2018) Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method. Journal of Science and Technology, 10 (2). pp. 122-127. ISSN 2600-7924
spellingShingle TA Engineering (General). Civil engineering (General)
TA329-348 Engineering mathematics. Engineering analysis
Wahir, Norsoraya Azurin
Nor, Maria Elena
Rusiman, Mohd Saifullah
G. P., Khuneswari
Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method
title Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method
title_full Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method
title_fullStr Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method
title_full_unstemmed Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method
title_short Alternative method outlier treatments with Box-Jenkins and neural network via interpolation method
title_sort alternative method outlier treatments with box jenkins and neural network via interpolation method
topic TA Engineering (General). Civil engineering (General)
TA329-348 Engineering mathematics. Engineering analysis
url http://eprints.uthm.edu.my/5359/1/AJ%202018%20%28854%29%20Alternative%20method%20outlier%20treatments%20with%20Box-Jenkins%20and%20neural%20network%20via%20interpolation%20method.pdf
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AT normariaelena alternativemethodoutliertreatmentswithboxjenkinsandneuralnetworkviainterpolationmethod
AT rusimanmohdsaifullah alternativemethodoutliertreatmentswithboxjenkinsandneuralnetworkviainterpolationmethod
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