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A new nonlinear asymmetric cointegration approach using error correction models

In this article, two new powerful tests for cointegration are proposed. The general idea is based on an intuitively appealing extension of the traditional, rather restrictive cointegration concept. In this article, we allow for a nonlinear, but most importantly a different, asymmetric convergence pr...

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Published in:Communications in statistics. Simulation and computation 2017-01, Vol.46 (2), p.1661-1668
Main Authors: Sjölander, Pär, Månsson, Kristofer, Shukur, Ghazi
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Language:English
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Shukur, Ghazi
description In this article, two new powerful tests for cointegration are proposed. The general idea is based on an intuitively appealing extension of the traditional, rather restrictive cointegration concept. In this article, we allow for a nonlinear, but most importantly a different, asymmetric convergence process to account for negative and positive changes in our cointegration approach. Using Monte Carlo simulations we verify, that the estimated size of the first test depends on the unknown value of a signal-to-noise ratio q. However, our second test-which is based on the original ideas of Kanioura and Turner-is more successful and robust in the sense that it works in all of the different evaluated situations. Furthermore it is shown to be more powerful than the traditional residual based Enders and Siklos method. The new optimal test is also applied in an empirical example in order to test for potential nonlinear asymmetric price transmission effects on the Swedish power market. We find that there is a higher propensity for power retailers to rapidly and systematically increase their retail electricity prices subsequent to increases in Nordpool's wholesale prices, than there is for them to reduce their prices subsequent to a drop in wholesale spot prices.
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ispartof Communications in statistics. Simulation and computation, 2017-01, Vol.46 (2), p.1661-1668
issn 0361-0918
1532-4141
1532-4141
language eng
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source Taylor and Francis Science and Technology Collection
subjects Cointegration
Cointegration analysis
Economic models
Error correction & detection
Error Correction Models
Monte Carlo Simulations
Nonlinear Asymmetric Price Transmissions
Nordpool
Prices
Statistics/Econometrics
Statistik
title A new nonlinear asymmetric cointegration approach using error correction models
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