Carbon credit returns under EU ETS and its determinants: a multi-phase study
Journal of Advances in Management Research
ISSN: 0972-7981
Article publication date: 2 October 2017
Issue publication date: 2 October 2017
Abstract
Purpose
The purpose of this paper is to find out the best method for forecasting European Union Allowance (EUA) returns and determine its price determinants. The previous studies in this area have focused on a particular subset of EUA data and do not take care of the multicollinearities. The authors take EUA data from all three phases and the continuous series, adopt the principal component analysis (PCA) to eliminate multicollinearities and fit seven different homoscedastic models for a comprehensive analysis.
Design/methodology/approach
PCA is adopted to extract independent factors. Seven different linear regression and auto regressive integrated moving average (ARIMA) models are employed for forecasting EUA returns and isolating their price determinants. The seven models are then compared and the one with minimum (root mean square error is adjudged as the best model.
Findings
The best model for forecasting the EUA returns of all three phases is dynamic linear regression with lagged predictors and that for forecasting EUA continuous series is ARIMA errors. The latent factors such as switch to gas (STG) and clean spread (capturing the effects of the clean dark spread, clean spark spread, switching price and natural gas price), National Allocation Plan announcements events, energy variables, German Stock Exchange index and extreme temperature events have been isolated as the price determinants of EUA returns.
Practical implications
The current study contributes to effective carbon management by providing a quantitative framework for analyzing cap-and-trade schemes.
Originality/value
This study differs from earlier studies mainly in three aspects. First, instead of focusing on a particular subset of EUA data, it comprehensively analyses the data of all the three phases of EUA along with the EUA continuous series. Second, it expressly adopts PCA to eliminate multicollinearities, thereby reducing the error variance. Finally, it evaluates both linear and non-linear homoscedastic models incorporating lags of predictor variables to isolate the price determinants of EUA.
Keywords
Citation
Dhamija, A.K., Yadav, S.S. and Jain, P.K. (2017), "Carbon credit returns under EU ETS and its determinants: a multi-phase study", Journal of Advances in Management Research, Vol. 14 No. 4, pp. 481-526. https://doi.org/10.1108/JAMR-11-2016-0099
Publisher
:Emerald Publishing Limited
Copyright © 2017, Emerald Publishing Limited