Forecasting Foreign Exchange Market Prices Using Technical Indicators with Deep Learning and Attention Mechanism
- URL: http://arxiv.org/abs/2411.19763v1
- Date: Fri, 29 Nov 2024 15:07:44 GMT
- Title: Forecasting Foreign Exchange Market Prices Using Technical Indicators with Deep Learning and Attention Mechanism
- Authors: Sahabeh Saadati, Mohammad Manthouri,
- Abstract summary: The proposed architecture consists of a Long Short-Term Memory (LSTM) and Convolutional Neural Network (CNN)
Technical indicators are employed to extract statistical features from Forex currency pair data.
The LSTM and CNN networks are utilized in parallel to predict future price movements.
- Score: 0.46040036610482665
- License:
- Abstract: Accurate prediction of price behavior in the foreign exchange market is crucial. This paper proposes a novel approach that leverages technical indicators and deep neural networks. The proposed architecture consists of a Long Short-Term Memory (LSTM) and Convolutional Neural Network (CNN), and attention mechanism. Initially, trend and oscillation technical indicators are employed to extract statistical features from Forex currency pair data, providing insights into price trends, market volatility, relative price strength, and overbought and oversold conditions. Subsequently, the LSTM and CNN networks are utilized in parallel to predict future price movements, leveraging the strengths of both recurrent and convolutional architectures. The LSTM network captures long-term dependencies and temporal patterns in the data, while the CNN network extracts local patterns. The outputs of the parallel LSTM and CNN networks are then fed into an attention mechanism, which learns to weigh the importance of each feature and temporal dependency, generating a context-aware representation of the input data. The attention-weighted output is then used to predict future price movements, enabling the model to focus on the most relevant features and temporal dependencies. Through a comprehensive evaluation of the proposed approach on multiple Forex currency pairs, we demonstrate its effectiveness in predicting price behavior and outperforming benchmark models.
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