Lee, H., & Park, H. (2024). IVE: Enhanced Probabilistic Forecasting of Intraday Volume Ratio with Transformers. arXiv:2411.10956v1 [q-fin.CP].
This paper introduces a novel approach to predicting intraday volume ratios in financial markets using a Transformer-based model, aiming to improve the execution of Volume-Weighted Average Price (VWAP) strategies.
The researchers developed the Intraday Volume Estimator (IVE), a Transformer-based model trained on a dataset comprising top market capitalization stocks from Korean and US markets. The model incorporates various features, including volume statistics, external volume-related factors, absolute time information, and stock-specific characteristics. Unlike traditional models that rely on point predictions, IVE utilizes a distribution head to generate probabilistic forecasts, capturing both the mean and standard deviation of volume ratios. The model's performance was evaluated against baseline algorithms like RNN, LSTM, and Bi-LSTM using RMSE and MAE metrics. Additionally, the researchers conducted live trading tests in the Korean market to assess the practical application of IVE in VWAP-focused trading strategies.
The study highlights the effectiveness of Transformer-based models for probabilistic intraday volume ratio prediction. The integration of diverse market features, absolute time information, and a distribution head for probabilistic forecasting contributes to IVE's superior performance. Live trading results demonstrate the practical utility of the model in enhancing VWAP-focused trading strategies.
This research significantly contributes to the field of financial forecasting by introducing a novel and effective approach for predicting intraday volume ratios. The model's ability to anticipate volume spikes and its successful application in real-world trading scenarios holds significant implications for algorithmic trading and optimal execution strategies.
While the model demonstrates promising results, the authors acknowledge that the relatively low R-squared values in volatility analysis suggest the presence of other influential factors requiring further investigation. Future research could explore incorporating additional market indicators, refining the probabilistic forecasting mechanism, and investigating advanced optimization techniques for real-time trading strategy adjustments. Additionally, exploring the model's performance in different market conditions, such as during periods of high volatility or market shocks, would provide a more comprehensive understanding of its capabilities and limitations.
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