Great research efforts have been devoted to exploiting deep neural networks in stock prediction. While long-range dependencies and chaotic property are still two major issues that lower the performance of state-of-the-art deep learning models in forecasting future price trends. In this study, we propose a novel framework to address both issues. Specifically, in terms of transforming time series into complex networks, we convert market price series into graphs. Then, structural information, referring to associations among temporal points and the node weights, is extracted from the mapped graphs to resolve the problems regarding long-range dependencies and the chaotic property. We take graph embeddings to represent the associations among temporal points as the prediction model inputs. Node weights are used as a priori knowledge to enhance the learning of temporal attention. The effectiveness of our proposed framework is validated using real-world stock data, and our approach obtains the best performance among several state-of-the-art benchmarks. Moreover, in the conducted trading simulations, our framework further obtains the highest cumulative profits. Our results supplement the existing applications of complex network methods in the financial realm and provide insightful implications for investment applications regarding decision support in financial markets.
翻译:虽然长期依赖性和混乱财产仍然是降低预测未来价格趋势方面最先进的深层次学习模型表现的两个主要问题,但我们在这项研究中提出了一个解决这两个问题的新框架,具体地说,将时间序列转换成复杂的网络,我们将市场价格序列转换成图表;然后,从地图图中提取结构信息,涉及时间点和节点重量之间的关联,以解决长期依赖性和混乱财产方面的问题。我们用图表嵌入图来代表时间点之间的关联,作为预测模型投入。将节点权重作为先行知识用来加强时间关注的学习。我们拟议框架的有效性利用现实世界存量数据得到验证,我们的方法在几个最先进的基准中取得了最佳的绩效。此外,在进行的交易模拟中,我们的框架还获得了最高的累积利润。我们的成果补充了金融领域复杂的网络方法的现有应用,并为金融市场决策支持的投资应用提供了深刻的影响。