Regression for Exploring Rainfall Pattern in Indramayu Regency

Quantile regression is an important tool for conditional quantiles estimation of a response Y for a given vector of covariates X. It can be used to measure the effect of covariates not only in the center of a distribution, but also in the upper and lower tails. Regression coefficients for each quant...

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Main Authors: Anik Djuraidah, Aji Hamim Wigena
Format: Article
Language:English
Published: Fakultas MIPA Universitas Jember 2012-01-01
Series:Jurnal Ilmu Dasar
Subjects:
Online Access:https://jurnal.unej.ac.id/index.php/JID/article/view/354
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spelling doaj-e4b90d1917fe48e48bff083ad6f9e4582020-11-25T02:14:03ZengFakultas MIPA Universitas JemberJurnal Ilmu Dasar1411-57352442-56132012-01-011215056354Regression for Exploring Rainfall Pattern in Indramayu RegencyAnik DjuraidahAji Hamim WigenaQuantile regression is an important tool for conditional quantiles estimation of a response Y for a given vector of covariates X. It can be used to measure the effect of covariates not only in the center of a distribution, but also in the upper and lower tails. Regression coefficients for each quantile can be estimated through an objective function which is weighted average absolute errors. Each quantile regression characterizes a particular aspect of a conditional distribution. Thus we can combine different quantile regressions to describe more completely the underlying conditional distribution. The analysis model of quantile regression would be specifically useful when the conditional distribution is not a normal shape, such as an asymmetric distribution or truncated distribution. In general, rainfall in Indramayu regency during 1972-2001 at 23 stations is highly variable in amount across time (month)andspace. So,the first objective of the research is reducing the variability in space using classification of the rainfall stations. The second objective is modelling the variability in time using quantile regression for every cluster of rainfall stations. The result shows that there are two clusters of rainfall stations. The first cluster has higher amount of rainfall than the second cluster. The coefficient of quantile regression for quantile 50 and 75 percent are similar, but for quantile 5 and 90 percent are very different. Exploring pattern of rainfall using quantile regression can detect normal or extreme rainfall that very useful in agricultural.https://jurnal.unej.ac.id/index.php/JID/article/view/354quantilequantile regressionclusterrainfall
collection DOAJ
language English
format Article
sources DOAJ
author Anik Djuraidah
Aji Hamim Wigena
spellingShingle Anik Djuraidah
Aji Hamim Wigena
Regression for Exploring Rainfall Pattern in Indramayu Regency
Jurnal Ilmu Dasar
quantile
quantile regression
cluster
rainfall
author_facet Anik Djuraidah
Aji Hamim Wigena
author_sort Anik Djuraidah
title Regression for Exploring Rainfall Pattern in Indramayu Regency
title_short Regression for Exploring Rainfall Pattern in Indramayu Regency
title_full Regression for Exploring Rainfall Pattern in Indramayu Regency
title_fullStr Regression for Exploring Rainfall Pattern in Indramayu Regency
title_full_unstemmed Regression for Exploring Rainfall Pattern in Indramayu Regency
title_sort regression for exploring rainfall pattern in indramayu regency
publisher Fakultas MIPA Universitas Jember
series Jurnal Ilmu Dasar
issn 1411-5735
2442-5613
publishDate 2012-01-01
description Quantile regression is an important tool for conditional quantiles estimation of a response Y for a given vector of covariates X. It can be used to measure the effect of covariates not only in the center of a distribution, but also in the upper and lower tails. Regression coefficients for each quantile can be estimated through an objective function which is weighted average absolute errors. Each quantile regression characterizes a particular aspect of a conditional distribution. Thus we can combine different quantile regressions to describe more completely the underlying conditional distribution. The analysis model of quantile regression would be specifically useful when the conditional distribution is not a normal shape, such as an asymmetric distribution or truncated distribution. In general, rainfall in Indramayu regency during 1972-2001 at 23 stations is highly variable in amount across time (month)andspace. So,the first objective of the research is reducing the variability in space using classification of the rainfall stations. The second objective is modelling the variability in time using quantile regression for every cluster of rainfall stations. The result shows that there are two clusters of rainfall stations. The first cluster has higher amount of rainfall than the second cluster. The coefficient of quantile regression for quantile 50 and 75 percent are similar, but for quantile 5 and 90 percent are very different. Exploring pattern of rainfall using quantile regression can detect normal or extreme rainfall that very useful in agricultural.
topic quantile
quantile regression
cluster
rainfall
url https://jurnal.unej.ac.id/index.php/JID/article/view/354
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