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Functional Factor Regression with an Application to Electricity Price Curve Modeling

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  • Sven Otto
  • Luis Winter

Abstract

We propose a function-on-function linear regression model for time-dependent curve data that is consistently estimated by imposing factor structures on the regressors. An integral operator based on cross-covariances identifies two components for each functional regressor: a predictive low-dimensional component, along with associated factors that are guaranteed to be correlated with the dependent variable, and an infinite-dimensional component that has no predictive power. In order to consistently estimate the correct number of factors for each regressor, we introduce a functional eigenvalue difference test. Our setting allows us to construct a novel central limit theorem for the regression parameters in a fully functional model, making it possible to construct confidence bands and conduct statistical inference. The model is applied to forecast electricity price curves in three different energy markets. Its prediction accuracy is found to be comparable to popular machine learning approaches, while providing statistically valid inference and interpretable insights into the conditional correlation structures of electricity prices.

Suggested Citation

  • Sven Otto & Luis Winter, 2025. "Functional Factor Regression with an Application to Electricity Price Curve Modeling," Papers 2503.12611, arXiv.org.
  • Handle: RePEc:arx:papers:2503.12611
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    References listed on IDEAS

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