In this paper we apply a specific type ANNs - convolutional neural networks (CNNs) - to the problem of finding start and endpoints of trends, which are the optimal points for entering and leaving the market. We aim to explore long-term trends, which last several months, not days. The key distinction of our model is that its labels are fully based on expert opinion data. Despite the various models based solely on stock price data, some market experts still argue that traders are able to see hidden opportunities. The labelling was done via the GUI interface, which means that the experts worked directly with images, not numerical data. This fact makes CNN the natural choice of algorithm. The proposed framework requires the sequential interaction of three CNN submodels, which identify the presence of a changepoint in a window, locate it and finally recognize the type of new tendency - upward, downward or flat. These submodels have certain pitfalls, therefore the calibration of their hyperparameters is the main direction of further research. The research addresses such issues as imbalanced datasets and contradicting labels, as well as the need for specific quality metrics to keep up with practical applicability. This paper is the full text of the research, presented at the 20th International Conference on Artificial Intelligence and Soft Computing Web System (ICAISC 2021)
翻译:在本文中,我们对寻找趋势的起始点和终点问题应用了特定类型的ANNs- Convolutional神经网络(CNNs),这些趋势是进入和离开市场的最佳点。我们的目标是探索长期趋势,这些趋势持续几个月,而不是几天。我们模型的关键区别在于其标签完全基于专家意见数据。尽管存在完全基于股票价格数据的各种模型,但一些市场专家仍然认为贸易商能够看到隐藏的机会。标签是通过GUI接口进行的,这意味着专家直接使用图像而不是数字数据。这一事实使得CNN成了算法的自然选择。拟议框架需要三个CNN子模型的顺序互动,这些模型确定窗口中存在变更点,定位它,并最终承认新趋势的类型――上升、下降或平坦。这些次级模型有一些陷阱,因此,其超参数的校准是进一步研究的主要方向。研究涉及诸如数据设置不平衡和与标签相矛盾等问题,以及需要具体的质量指标系统(CNN)作为算法的自然选择。拟议框架需要三个CNNM子模型的相继互动,这些模型在窗口中确定一个变化点的存在,定位,并最终认识到新趋势-向上、向下或平坦。这些结构系统是20号国际计算机化文件。