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Causality analysis of electricity market liberalization on electricity price using novel Machine Learning methods

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  • Orr Shahar
  • Stefan Lessmann
  • Daniel Traian Pele

Abstract

Relationships between the energy and the finance markets are increasingly important. Understanding these relationships is vital for policymakers and other stakeholders as the world faces challenges such as satisfying humanity's increasing need for energy and the effects of climate change. In this paper, we investigate the causal effect of electricity market liberalization on the electricity price in the US. By performing this analysis, we aim to provide new insights into the ongoing debate about the benefits of electricity market liberalization. We introduce Causal Machine Learning as a new approach for interventions in the energy-finance field. The development of machine learning in recent years opened the door for a new branch of machine learning models for causality impact, with the ability to extract complex patterns and relationships from the data. We discuss the advantages of causal ML methods and compare the performance of ML-based models to shed light on the applicability of causal ML frameworks to energy policy intervention cases. We find that the DeepProbCP framework outperforms the other frameworks examined. In addition, we find that liberalization of, and individual players' entry to, the electricity market resulted in a 7% decrease in price in the short term.

Suggested Citation

  • Orr Shahar & Stefan Lessmann & Daniel Traian Pele, 2025. "Causality analysis of electricity market liberalization on electricity price using novel Machine Learning methods," Papers 2507.12331, arXiv.org.
  • Handle: RePEc:arx:papers:2507.12331
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