论文标题
股票价格上涨之前的微交易行为的模式识别:基于多变量时间序列分析的框架
Pattern recognition in micro-trading behaviors before stock price jumps: A framework based on multivariate time series analysis
论文作者
论文摘要
在股价上涨之前,研究微交易行为是金融法规和投资决策的重要问题。在这项研究中,我们提供了一个新的框架,以基于多变量时间序列分析来研究跳跃前交易行为。与现有文献不同,我们的方法论考虑了与交易相关属性中嵌入的时间信息,并且可以更好地评估和比较不同属性的异常水平。此外,它可以探索属性的共同信息,并选择一部分信息丰富但最少的冗余属性,以分析单个股票前股票前交易中的同质和特质模式。此外,我们的分析涉及一组技术指标来描述微交易行为。为了说明拟议方法论的生存能力,根据中国安全指数的189个组成股的2级数据进行了申请案例300的级别2。为此,我们的实验提供了一组跳跃指标,可以代表中国股票市场的前跳贸易行为,并发现了一些具有极为异常的前交易的股票。
Studying the micro-trading behaviors before stock price jumps is an important problem for financial regulations and investment decisions. In this study, we provide a new framework to study pre-jump trading behaviors based on multivariate time series analysis. Different from the existing literature, our methodology takes into account the temporal information embedded in the trading-related attributes and can better evaluate and compare the abnormality levels of different attributes. Moreover, it can explore the joint informativeness of the attributes as well as select a subset of highly informative but minimally redundant attributes to analyze the homogeneous and idiosyncratic patterns in the pre-jump trades of individual stocks. In addition, our analysis involves a set of technical indicators to describe micro-trading behaviors. To illustrate the viability of the proposed methodology, an application case is conducted based on the level-2 data of 189 constituent stocks of the China Security Index 300. The individual and joint informativeness levels of the attributes in predicting price jumps are evaluated and compared. To this end, our experiment provides a set of jump indicators that can represent the pre-jump trading behaviors in the Chinese stock market and have detected some stocks with extremely abnormal pre-jump trades.