Title of article
Bitcoin price forecasting using hybrid genetic algorithm
Author/Authors
Mirabi ، Mohammad Group of Industrial Engineering - Meybod University , Ghaneai ، Hossein Department of Computer Engineering - Meybod University , Mousavi ، Somaye Group of Industrial Engineering - Meybod University , Tavakoli ، Hossein Group of Industrial Engineering - Meybod University
From page
34
To page
48
Abstract
Bitcoin and digital currencies have emerged as a new market for investment. Therefore, the prediction of their future trend and prices is highly significant. In this research, the factors influencing the price of bitcoin were identified and extracted based on previous researches. The identified factors include the US dollar index, CPI index, S and P 500, Dow Jones, and gold price. Considering the performance of metaheuristic algorithms in predicting bitcoin price, this research utilized genetic algorithm and particle swarm optimization algorithm, and proposed a hybrid algorithm to improve their performance.According to our results, among the investigated factors, the US dollar index has the greatest impact on bitcoin price, followed by inflation rate and the CPI index. Additionally, the proposed hybrid algorithm outperforms the particle swarm optimization and genetic algorithms, with a prediction error of 7.3%. It should be noted that the type and magnitude of the impact of the investigated factors may change over time. For example, a factor that previously had a direct impact may become reversed or neutralized over time.
Keywords
Bitcoin , genetic algorithm , Particle Swarm Optimization , Hybrid , prediction
Journal title
Mathematics and Computational Sciences
Journal title
Mathematics and Computational Sciences
Record number
2766173
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