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中国管理科学 ›› 2016, Vol. 24 ›› Issue (12): 20-29.doi: 10.16381/j.cnki.issn1003-207x.2016.12.003

• 论文 • 上一篇    下一篇

指令不均衡与股票收益关系研究——基于大规模数据分位数回归的实证

许启发1,2, 蔡超1,3, 蒋翠侠1   

  1. 1. 合肥工业大学管理学院, 安徽 合肥 230009;
    2. 合肥工业大学过程优化与智能决策教育部重点实验室, 安徽 合肥 230009;
    3. 山东工商学院统计学院, 山东 烟台 264005
  • 收稿日期:2015-05-19 修回日期:2015-11-27 出版日期:2016-12-20 发布日期:2017-03-07
  • 通讯作者: 蒋翠侠(1973-),女(汉族),安徽省砀山县人,合肥工业大学管理学院副教授,博士,硕士生导师,研究方向:金融计量、时间序列分析,E-mail:jiangcx1973@163.com. E-mail:jiangcx1973@163.com
  • 基金资助:

    国家自然科学基金资助项目(71671056,71071087);国家社会科学基金资助项目(15BJY008,14BTJ028);教育部人文社会科学研究规划基金资助项目(14YJA790015);安徽省哲学社会科学规划基金资助项目(AHSKY2014D103)

An Analysis of the Relationship between Order Imbalance and Stock Returns through Quantile Regression Approach for Large-scale Data

XU Qi-fa1,2, CAI Chao1,3, JIANG Cui-xia1   

  1. 1. School of Management, Hefei University of Technology, Hefei 230009, China;
    2. Key Laboratory of Process Optimization and Intelligent Decision-making, Ministry of Education, Hefei 230009, China;
    3. School of Statistics, Shandong Institute of Business and Technology, Yantai 264005, China
  • Received:2015-05-19 Revised:2015-11-27 Online:2016-12-20 Published:2017-03-07

摘要: 在指令不均衡与股票收益关系研究中,常常遇到两个困难:第一,不同市场环境下,前者对后者存在异质影响;第二,往往涉及大规模数据处理。为此,运用大规模数据分位数回归的方法,一方面揭示不同分位点处指令不均衡对股票收益的异质影响,细致刻画两者之间关系;另一方面适应大规模数据建模要求,得到更为可靠的结果。以上证A股和深证A股为研究对象,通过大规模数据分位数回归方法,得到了比均值回归更多有用信息。实证结果表明:第一,在高分位点处,滞后1期指令不均衡对股票收益具有正向影响且呈现上升趋势,而在低分位点却具有负向影响;第二,控制当期指令不均衡后,滞后期指令不均衡对股票收益具有负向影响,且随着分位点的增加呈现下降趋势。这些结果意味着,指令不均衡对股票收益具有一定的解释能力和预测能力。

关键词: 指令不均衡, 股票收益, 大规模数据, 分位数回归

Abstract: In the paste decades, much effort has been devoted to exploring the relation between stock price movements and trading volume to gain a better understanding of an issue that is the law of financial market price changes. Trading volume, however, only measures the absolute quantity of trading activity, but ignores the important information that this trading is buyer-initiated or seller-initiated. Order imbalances can provide additional power beyond trading activity measures such as volume in explaining stock return volatilities. In fact, order imbalance can reflect the information buyer-initiated or seller-initiated. In addition, order imbalance can signal excessive investor interest in a stock, and if this interest is auto-correlated, then order imbalance could be related to future returns.In this paper the relationship between order imbalances and daytime stock returns is investigated to obtain more detailed results. We often confront with two main difficulties in the study. The first one is the heterogeneous effects of the former on the latter under different market conditions. Second, it always involves large-scale data processing. To this end, quantile regression approach is used for large-scale data to reveal heterogeneous effects across different quantiles and hope to obtain more reliable results. Quantile regression approach for large-scale data consists of three steps:(1) computing a well-conditioned basis via QR factorization, (2) computing a sampling matrix to reduce the number of observations, and (3) using standard quantile regression for the reduced subset to compute a high-precision approximate solution. Compared to standard quantile regression, memory requirement and CPU time are reduced obviously by the proposed approach. For empirical illustration, first, Shanghai and Shenzhen stock markets are selected to test the effectiveness o quantile regression approach for large-scale data. Second, two lags of order imbalance are used to study the relationship between lagged order imbalances and daytime stock returns. Third, the contemporaneous imbalance is controlled and two lags of order imbalance are used to study the indirect effects of lagged order imbalances to the returns. Finally, the conditional density of response is predicted through estimated conditional quantiles. The empirical results show that one period lagged order imbalance has positive effects with increasing trend on stock returns at higher quantiles while has negative effects at lower quantiles. Furthermore, the lagged order imbalance has negative effects on stock returns when the current order imbalance is controlled, and the negative effect presents a downward trend with the increasing of quantiles. This implies that the order imbalance has good qualities of explanation and prediction for stock returns.

Key words: order imbalance, stock returns, large scale data, quantile regression

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