The paper proposes a stock trend prediction solution called ACEFormer, which consists of four main components:
Pretreatment module: This module preprocesses the input data, including applying a novel noise reduction algorithm called ACEEMD (Alias Complete Ensemble Empirical Mode Decomposition with Adaptive Noise) to remove short-term high-frequency trading noise from the stock data.
Distillation module: This module extracts the main features from the preprocessed data using a probability self-attention mechanism, convolution, and max pooling. It also includes a time-aware mechanism to capture temporal features and enhance the temporal information of the input data.
Attention module: This module further extracts critical features from the output of the distillation module using the attention mechanism.
Fully connected module: This module is a linear regression that produces the final predicted stock values.
The authors demonstrate that ACEFormer significantly outperforms several state-of-the-art baselines, such as Informer, TimesNet, DLinear, and Non-stationary Transformer, on two public stock market datasets (NASDAQ100 and SPY500) in terms of trend prediction accuracy, Matthews Correlation Coefficient, investment return ratio, and Sharpe ratio.
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by Chufeng Li,J... alle arxiv.org 04-12-2024
https://arxiv.org/pdf/2404.07969.pdfDomande più approfondite