Orderbook Feature Learning and Asymmetric Generalization in Intraday Electricity Markets
By: Runyao Yu , Ruochen Wu , Yongsheng Han and more
Potential Business Impact:
Predicts electricity prices better using hidden order details.
Accurate probabilistic forecasting of intraday electricity prices is critical for market participants to inform trading decisions. Existing studies rely on specific domain features, such as Volume-Weighted Average Price (VWAP) and the last price. However, the rich information in the orderbook remains underexplored. Furthermore, these approaches are often developed within a single country and product type, making it unclear whether the approaches are generalizable. In this paper, we extract 384 features from the orderbook and identify a set of powerful features via feature selection. Based on selected features, we present a comprehensive benchmark using classical statistical models, tree-based ensembles, and deep learning models across two countries (Germany and Austria) and two product types (60-min and 15-min). We further perform a systematic generalization study across countries and product types, from which we reveal an asymmetric generalization phenomenon.
Similar Papers
Directional Price Forecasting in the Continuous Intraday Market under Consideration of Neighboring Products and Limit Order Books
Statistical Finance
Helps traders make more money on electricity prices.
Optimal Execution in Intraday Energy Markets under Hawkes Processes with Transient Impact
Trading & Market Microstructure
Saves money trading electricity by predicting prices.
Forecasting Intraday Volume in Equity Markets with Machine Learning
Computational Finance
Predicts stock trading amounts to help investors make money.