Carbon Price Forecasting Models Based on Big Data Analytics

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Date

2019

Journal Title

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Volume Title

Publisher

Taylor and Francis Ltd.

Open Access Color

GOLD

Green Open Access

Yes

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Top 10%
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Abstract

After the establishment of the European Union's Emissions Trading System (EU-ETS) carbon pricing attracted many researchers. This paper aims to develop a prediction model that anticipates future carbon prices given a real-world data set. We treat the carbon pricing issue as part of big data analytics to achieve this goal. We apply three fundamental methodologies to characterize the carbon price. First method is the artificial neural network, which mimics the principle of human brain to process relevant data. As a second approach, we apply the decision tree algorithm. This algorithm is structured through making multiple binary decisions, and it is mostly used for classification. We employ two different decision tree algorithms, namely traditional and conditional, to determine the type of decision tree that gives better results in terms of prediction. Finally, we exploit the random forest, which is a more complex algorithm compared to the decision tree. Similar to the decision tree, we test both traditional and conditional random forest algorithms to analyze their performances. We use Brent crude futures, coal, electricity and natural gas prices, and DAX and S&P Clean Energy Index as explanatory variables. We analyze the variables' effects on carbon price forecasting. According to our results, S&P Clean Energy Index is the most influential variable in explaining the changes in carbon price, followed by DAX Index and coal price. Moreover, we conclude that the traditional random forest is the best algorithm based on all indicators. We provide the details of these methods and their comparisons.

Description

Keywords

Decision tree, Random forest, Artificial neural network, Forecasts, Big data, Carbon price, Environmental sciences, carbon price, big data, forecasts, decision tree, GE1-350, artificial neural network, random forest

Turkish CoHE Thesis Center URL

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

Citation

Yahsi, M., Canakoglu, E., & Agrali, S. (February, 2019) Carbon price forecasting models based on big data analytics, Carbon Management, 10:2, 175-187, DOI: 10.1080/17583004.2019.1568138

WoS Q

Q2

Scopus Q

Q2
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OpenCitations Citation Count
52

Source

Carbon Management

Volume

10

Issue

2

Start Page

175

End Page

187
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CrossRef : 2

Scopus : 64

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Mendeley Readers : 64

SCOPUS™ Citations

65

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Web of Science™ Citations

61

checked on Feb 03, 2026

Page Views

253

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Downloads

27

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2.27505133
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