Cryptocurrency Price Prediction with Genetic Algorithm-based Hyperparameter Optimization
Keywords:
cryptocurrency price predictions, time series, deep learning, hyperparameter optimization, genetic algorithm
Abstract
Accurate cryptocurrency price forecasting is crucial for investors and researchers in the dynamic and unpredictable cryptocurrency market. Existing models face challenges in incorporating various cryptocurrencies and determining the most effective hyperparameters, leading to reduced forecast accuracy. This study introduces an innovative approach that automates hyperparameter selection, improving accuracy by uncovering complex interconnections among cryptocurrencies. Our methodology leverages deep learning techniques, particularly Recurrent Neural Networks (RNNs) and Long Short-Term Memory (LSTM) networks, in conjunction with the Genetic Algorithm (GA) to optimize hyperparameters. We propose and compare two architectures, LAO and LOEE, utilizing these methods to enhance forecast accuracy and address the challenges of the cryptocurrency market. This cutting-edge approach not only improves forecasting capabilities but also provides valuable insights for managing cryptocurrency investments and conducting research. By automating hyperparameter selection and considering interconnections between cryptocurrencies, our approach offers a practical solution for accurate cryptocurrency price prediction in a dynamic market environment, benefiting both investors and academics.
Published
2025-02-22
How to Cite
Hafidi, N., Khoudi, Z., Nachaoui, M., & Lyaqini, S. (2025). Cryptocurrency Price Prediction with Genetic Algorithm-based Hyperparameter Optimization. Statistics, Optimization & Information Computing. https://doi.org/10.19139/soic-2310-5070-2035
Issue
Section
Research Articles
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