Dezhkam Arsalan, Manzuri Mohammad Taghi, Aghapour Ahmad, Karimi Afshin, Rabiee Ali, Shalmani Shervin Manzuri
Computer Engineering Department, Sharif University of Technology, Tehran, Iran.
Department of Computing and Software, McMaster University, Hamilton, ON Canada.
J Supercomput. 2023;79(4):4622-4659. doi: 10.1007/s11227-022-04834-4. Epub 2022 Sep 29.
Financial time series have been extensively studied within the past decades; however, the advent of machine learning and deep neural networks opened new horizons to apply supercomputing techniques to extract more insights from the underlying patterns of price data. This paper presents a tri-state labeling approach to classify the underlying patterns in price data into up, down and no-action classes. The introduction of a no-action state in our novel approach alleviates the burden of denoising the dataset as a preprocessing task. The performance of our labeling algorithm is experimented with using machine learning and deep learning models. The framework is augmented by applying the Bayesian optimization technique for the selection of the best tuning values of the hyperparameters. The price trend prediction module generates the required trading signals. The results show that the average annualized Sharpe ratio as the trading performance metric is about 2.823, indicating the framework produces excellent cumulative returns.
在过去几十年里,金融时间序列受到了广泛研究;然而,机器学习和深度神经网络的出现为应用超级计算技术从价格数据的潜在模式中提取更多见解开辟了新视野。本文提出了一种三态标记方法,将价格数据中的潜在模式分类为上涨、下跌和无操作类别。在我们的新方法中引入无操作状态减轻了将去噪数据集作为预处理任务的负担。我们使用机器学习和深度学习模型对标记算法的性能进行了实验。通过应用贝叶斯优化技术来选择超参数的最佳调优值,对该框架进行了扩充。价格趋势预测模块生成所需的交易信号。结果表明,作为交易绩效指标的平均年化夏普比率约为2.823,表明该框架产生了出色的累积回报。