Estimation of rubber price returns using quantile regression

<p>The rubber industry in Sri Lanka is of much economic importance. The current world consumption of rubber, totalling around 18 million tonnes per year, consists of 48% natural rubber (NR). Thus, in terms of quantity by type, NR is still the largest. Price returns on rubber have effect on bot...

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Main Authors: Kwadwo Agyei Nyantakyi, B.L. Pieris, L.H.P. Gunaratne
Format: Article
Language:English
Published: Postgraduate Institute of Agriculture, University of Peradeniya 2015-11-01
Series:Tropical Agricultural Research
Subjects:
Online Access:https://tar.sljol.info/articles/8131
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spelling doaj-c38ac54d2ba44249be12a2a9f0f7d9b22020-11-25T01:29:16ZengPostgraduate Institute of Agriculture, University of PeradeniyaTropical Agricultural Research1016-14222015-11-0126410.4038/tar.v26i4.81316057Estimation of rubber price returns using quantile regressionKwadwo Agyei Nyantakyi0B.L. Pieris1L.H.P. Gunaratne2University of PeradeniyaUniversity of PeradeniyaUniversity of Peradeniya<p>The rubber industry in Sri Lanka is of much economic importance. The current world consumption of rubber, totalling around 18 million tonnes per year, consists of 48% natural rubber (NR). Thus, in terms of quantity by type, NR is still the largest. Price returns on rubber have effect on both its production and replanting and also the GDP of the Sri Lankan economy in the long run and the world economy. Therefore, accurate analysis and prediction of the price returns on the asset become very important since the supply of agricultural products in the future is affected by continuous future price uncertainties or volatility. Quantile regression was used for the estimation, prediction and analysis of the effects of price returns on rubber production and GDP of Sri Lanka. There were high changes at the percentile 75%, 90%, and the 95% which shows that the rate of change of price decreased drastically with a unit increase in production. At the 50% percentile, the values coincide with that of the conditional mean value with all other quantile having varying rate of change of price with respect to a unit change in production. For each quantile, a regression model was fitted.</p><p> </p><p>Tropical Agricultural Research Vol. 26 (4): 693 – 699 (2015)</p>https://tar.sljol.info/articles/8131asset returns, production, price, quantiles, rubber
collection DOAJ
language English
format Article
sources DOAJ
author Kwadwo Agyei Nyantakyi
B.L. Pieris
L.H.P. Gunaratne
spellingShingle Kwadwo Agyei Nyantakyi
B.L. Pieris
L.H.P. Gunaratne
Estimation of rubber price returns using quantile regression
Tropical Agricultural Research
asset returns, production, price, quantiles, rubber
author_facet Kwadwo Agyei Nyantakyi
B.L. Pieris
L.H.P. Gunaratne
author_sort Kwadwo Agyei Nyantakyi
title Estimation of rubber price returns using quantile regression
title_short Estimation of rubber price returns using quantile regression
title_full Estimation of rubber price returns using quantile regression
title_fullStr Estimation of rubber price returns using quantile regression
title_full_unstemmed Estimation of rubber price returns using quantile regression
title_sort estimation of rubber price returns using quantile regression
publisher Postgraduate Institute of Agriculture, University of Peradeniya
series Tropical Agricultural Research
issn 1016-1422
publishDate 2015-11-01
description <p>The rubber industry in Sri Lanka is of much economic importance. The current world consumption of rubber, totalling around 18 million tonnes per year, consists of 48% natural rubber (NR). Thus, in terms of quantity by type, NR is still the largest. Price returns on rubber have effect on both its production and replanting and also the GDP of the Sri Lankan economy in the long run and the world economy. Therefore, accurate analysis and prediction of the price returns on the asset become very important since the supply of agricultural products in the future is affected by continuous future price uncertainties or volatility. Quantile regression was used for the estimation, prediction and analysis of the effects of price returns on rubber production and GDP of Sri Lanka. There were high changes at the percentile 75%, 90%, and the 95% which shows that the rate of change of price decreased drastically with a unit increase in production. At the 50% percentile, the values coincide with that of the conditional mean value with all other quantile having varying rate of change of price with respect to a unit change in production. For each quantile, a regression model was fitted.</p><p> </p><p>Tropical Agricultural Research Vol. 26 (4): 693 – 699 (2015)</p>
topic asset returns, production, price, quantiles, rubber
url https://tar.sljol.info/articles/8131
work_keys_str_mv AT kwadwoagyeinyantakyi estimationofrubberpricereturnsusingquantileregression
AT blpieris estimationofrubberpricereturnsusingquantileregression
AT lhpgunaratne estimationofrubberpricereturnsusingquantileregression
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