China futures price forecasting based on online search and information transfer

Jingyi Liang, Guozhu Jia
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引用次数: 14

Abstract

The synchronicity effect between the financial market and online response for time-series forecasting is an important task with wide applications. This study combines data from the Baidu index (BDI), Google trends (GT), and transfer entropy (TE) to forecast a wide range of futures prices with a focus on China. A forecasting model based on a hybrid gray wolf optimizer (GWO), convolutional neural network (CNN), and long short-term memory (LSTM) is developed. First, Baidu and Google dual-platform search data were selected and constructed as Internet-based consumer price index (ICPI) using principal component analysis. Second, TE is used to quantify the information between online behavior and futures markets. Finally, the effective Internet-based consumer price index (ICPI) and TE are introduced into the GWO-CNN-LSTM model to forecast the daily prices of corn, soybean, polyvinyl chloride (PVC), egg, and rebar futures. The results show that the GWO-CNN-LSTM model has a significant improvement in predicting future prices. Internet-based CPI built on Baidu and Google platforms has a high degree of real-time performance and reduces the platform and language bias of the search data. Our proposed framework can provide predictive decision support for government leaders, market investors, and production activities.

基于网上搜索和信息传递的中国期货价格预测
在时间序列预测中,金融市场与在线响应之间的同步性效应是一项具有广泛应用前景的重要任务。本研究结合了百度指数(BDI)、谷歌趋势(GT)和转移熵(TE)的数据,以中国为重点,预测了广泛的期货价格。提出了一种基于混合灰狼优化器(GWO)、卷积神经网络(CNN)和长短期记忆(LSTM)的预测模型。首先,选取百度和谷歌双平台搜索数据,运用主成分分析法构建基于互联网的消费者价格指数(ICPI)。其次,TE用于量化在线行为与期货市场之间的信息。最后,将基于互联网的有效消费者价格指数(ICPI)和TE引入到GWO-CNN-LSTM模型中,对玉米、大豆、聚氯乙烯(PVC)、鸡蛋和螺蛳粉期货的日价格进行预测。结果表明,GWO-CNN-LSTM模型在预测未来价格方面有显著提高。建立在百度和谷歌平台上的基于互联网的CPI具有较高的实时性,减少了搜索数据的平台和语言偏差。我们提出的框架可以为政府领导人、市场投资者和生产活动提供预测性决策支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.50
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