학술논문

Optimization Trading Strategy Model for Gold and Bitcoin Based on Market Fluctuation.
Document Type
Article
Source
Journal of Advanced Computational Intelligence & Intelligent Informatics. Jan2023, Vol. 27 Issue 1, p105-118. 14p.
Subject
*BITCOIN
*MACHINE learning
*ELECTRONIC money
*GOLD futures
*CRYPTOCURRENCIES
*GENETIC algorithms
*SIMULATED annealing
Language
ISSN
1343-0130
Abstract
As a new type of digital currency, Bitcoin is considered as "future gold" by various scholars. Therefore, this study considers Bitcoin and gold as a group of hedging assets to conduct investment research and it also discusses the investment rules between Bitcoin and gold: prediction of the rise and fall of Bitcoin, comparison of the characteristics of Bitcoin and gold, and the impact of the transaction procedures of Bitcoin and gold on the final trading results, and formulates trading strategies through optimization algorithms. Then, four machine learning algorithms, i.e., LSTM, BP neural network, Adaboost, and Bagging, are introduced to predict the rise and fall of gold and Bitcoin the next day, and then, the entropy weight method is used to synthesize four predicted results to ensure the robustness of the predicted results. To establish the optimal trading strategy, this study considers the maximum expected return as the goal to develop a single-objective optimization model and historical five-day price volatility as a risk factor. In this study, ant colony, simulated annealing, and genetic algorithms are used to solve the single-objective optimization model. Finally, we conclude that Bitcoin, similar to other financial assets, e.g., gold, is sensitive to shocks and volatile and possesses a relatively quiet cycle. When Bitcoin has an asymmetric impact, Bitcoin and gold can equally treat transactions. [ABSTRACT FROM AUTHOR]