Profitability trend prediction in crypto financial markets using Fibonacci technical indicator and hybrid CNN model

IF 8.6 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Journal of Big Data Pub Date : 2024-04-28 DOI:10.1186/s40537-024-00908-7
Bilal Hassan Ahmed Khattak, Imran Shafi, Chaudhary Hamza Rashid, Mejdl Safran, Sultan Alfarhood, Imran Ashraf
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Abstract

Cryptocurrency has become a popular trading asset due to its security, anonymity, and decentralization. However, predicting the direction of the financial market can be challenging, leading to difficult financial decisions and potential losses. The purpose of this study is to gain insights into the impact of Fibonacci technical indicator (TI) and multi-class classification based on trend direction and price-strength (trend-strength) to improve the performance and profitability of artificial intelligence (AI) models, particularly hybrid convolutional neural network (CNN) incorporating long short-term memory (LSTM), and to modify it to reduce its complexity. The main contribution of this paper lies in its introduction of Fibonacci TI, demonstrating its impact on financial prediction, and incorporation of a multi-classification technique focusing on trend strength, thereby enhancing the depth and accuracy of predictions. Lastly, profitability analysis sheds light on the tangible benefits of utilizing Fibonacci and multi-classification. The research methodology employed to carry out profitability analysis is based on a hybrid investment strategy—direction and strength by employing a six-stage predictive system: data collection, preprocessing, sampling, training and prediction, investment simulation, and evaluation. Empirical findings show that the Fibonacci TI has improved its performance (44% configurations) and profitability (68% configurations) of AI models. Hybrid CNNs showed most performance improvements particularly the C-LSTM model for trend (binary-0.0023) and trend-strength (4 class-0.0020) and 6 class-0.0099). Hybrid CNNs showed improved profitability, particularly in CLSTM, and performance in CLSTM mod. Trend-strength prediction showed max improvements in long strategy ROI (6.89%) and average ROIs for long-short strategy. Regarding the choice between hybrid CNNs, the C-LSTM mod is a viable option for trend-strength prediction at 4-class and 6-class due to better performance and profitability.

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利用斐波那契技术指标和混合 CNN 模型预测加密货币金融市场的盈利趋势
加密货币因其安全性、匿名性和去中心化而成为一种流行的交易资产。然而,预测金融市场的走向可能具有挑战性,从而导致艰难的金融决策和潜在的损失。本研究的目的是深入了解斐波那契技术指标(TI)和基于趋势方向和价格强度(趋势强度)的多类分类对提高人工智能(AI)模型,特别是结合了长短期记忆(LSTM)的混合卷积神经网络(CNN)的性能和盈利能力的影响,并对其进行修改以降低其复杂性。本文的主要贡献在于引入了斐波那契 TI,展示了其对金融预测的影响,并纳入了以趋势强度为重点的多重分类技术,从而提高了预测的深度和准确性。最后,盈利能力分析揭示了利用斐波那契和多重分类的实际好处。盈利能力分析所采用的研究方法基于混合投资策略--方向和强度,采用了六阶段预测系统:数据收集、预处理、抽样、训练和预测、投资模拟和评估。实证研究结果表明,斐波那契 TI 提高了人工智能模型的性能(44% 的配置)和盈利能力(68% 的配置)。混合 CNN 的性能提高最多,尤其是 C-LSTM 模型的趋势(二进制-0.0023)和趋势强度(4 级-0.0020)和 6 级-0.0099)。混合 CNN(尤其是 CLSTM)的盈利能力和 CLSTM 模式的性能都有所提高。趋势强度预测在多头策略投资回报率(6.89%)和多空策略平均投资回报率方面都有最大改进。在混合 CNN 的选择方面,由于 C-LSTM mod 具有更好的性能和盈利能力,因此是 4 级和 6 级趋势强度预测的可行选择。
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来源期刊
Journal of Big Data
Journal of Big Data Computer Science-Information Systems
CiteScore
17.80
自引率
3.70%
发文量
105
审稿时长
13 weeks
期刊介绍: The Journal of Big Data publishes high-quality, scholarly research papers, methodologies, and case studies covering a broad spectrum of topics, from big data analytics to data-intensive computing and all applications of big data research. It addresses challenges facing big data today and in the future, including data capture and storage, search, sharing, analytics, technologies, visualization, architectures, data mining, machine learning, cloud computing, distributed systems, and scalable storage. The journal serves as a seminal source of innovative material for academic researchers and practitioners alike.
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