计算机科学
时间序列
股票市场
图形
先验与后验
金融市场
人工神经网络
混乱的
人工智能
机器学习
财务
数据挖掘
计量经济学
理论计算机科学
经济
古生物学
哲学
认识论
马
生物
作者
Junran Wu,Ke Xu,Xueyuan Chen,Shangzhe Li,Jichang Zhao
标识
DOI:10.1016/j.ins.2021.12.089
摘要
Great research efforts have been devoted to exploiting deep neural networks in stock prediction. However, long-term dependencies and chaotic properties 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 temporal point associations and node weights, is extracted from the mapped graphs to resolve the problems regarding long-term dependencies and chaotic properties. 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.
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