使用分解法优化加密货币算法交易策略

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Sherin M. Omran, Wessam H. El-Behaidy, A. Youssif
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引用次数: 0

摘要

加密货币是一种非中心化的货币形式,利用加密过程促进金融交易。它可以被视为一种虚拟货币或一种在线收发货币的支付机制。在过去几年中,加密货币获得了广泛的市场认可和快速发展。由于加密货币市场的不稳定性,加密货币交易涉及高风险。本文针对加密货币算法交易提出了一种新的基于归一化分解的多目标粒子群优化(N-MOPSO/D)算法。该算法的目的是帮助交易者找到最佳的莱特币交易策略,从而提高交易结果。所提出的算法用于管理三个目标之间的权衡:投资回报率、索蒂诺比率和交易次数。此外,还提出了一种混合权重分配机制。它与带有标准参数的交易规则、MOPSO/D(使用归一化加权 Tchebycheff 标量化)和 MOEA/D 进行了比较。在基准问题和实际问题上,所提出的算法优于其他算法。结果表明,所提出的算法在不同的市场条件下都具有很好的前景和稳定性。在适量交易的情况下,该算法在训练和测试期间都能保持最佳收益和风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Cryptocurrency Algorithmic Trading Strategies Using the Decomposition Approach
A cryptocurrency is a non-centralized form of money that facilitates financial transactions using cryptographic processes. It can be thought of as a virtual currency or a payment mechanism for sending and receiving money online. Cryptocurrencies have gained wide market acceptance and rapid development during the past few years. Due to the volatile nature of the crypto-market, cryptocurrency trading involves a high level of risk. In this paper, a new normalized decomposition-based, multi-objective particle swarm optimization (N-MOPSO/D) algorithm is presented for cryptocurrency algorithmic trading. The aim of this algorithm is to help traders find the best Litecoin trading strategies that improve their outcomes. The proposed algorithm is used to manage the trade-offs among three objectives: the return on investment, the Sortino ratio, and the number of trades. A hybrid weight assignment mechanism has also been proposed. It was compared against the trading rules with their standard parameters, MOPSO/D, using normalized weighted Tchebycheff scalarization, and MOEA/D. The proposed algorithm could outperform the counterpart algorithms for benchmark and real-world problems. Results showed that the proposed algorithm is very promising and stable under different market conditions. It could maintain the best returns and risk during both training and testing with a moderate number of trades.
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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