核心概念
Auto-ML techniques automate neural network architecture search for financial time series forecasting.
要約
The content discusses the comparison of three popular neural architecture search strategies - Bayesian optimization, hyperband method, and reinforcement learning - in the context of financial time series forecasting. It explores the challenges, data preparation, architecture types (feedforward networks, CNNs, RNNs), search spaces, and performance estimation strategies. Results show LSTM and 1D CNN outperforming FFNN with hyperband and Bayesian optimization yielding better results than reinforcement learning. The study highlights the difficulties in predicting financial markets and the impact of random seed variance on model performance.
統計
"The LSTM with parameters selected by the hyperband method applied to the unseen test data achieved an AUC score of 0.56 on average over 50 test runs."
"For the Japan dataset, the best performing architecture was a 1D CNN coming from Bayesian optimization, achieving an AUC score of 0.54 ± 0.03 over 50 test runs."
"Although tuned 1d CNNs gave an AUC score of 0.6 ± 0.02 on validation data (not used for training) in our repeated testing, on average no architecture could achieve AUC over 0.5 on the test dataset."
引用
"The hierarchical structure of neural networks extracts important features automatically."
"Bayesian optimization efficiently explores search space intelligently guiding optimization process."
"Reinforcement learning treats neural architecture search as a reinforcement problem."