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Extreme returns and intensity of trading

机译:极高的回报和交易强度

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摘要

Asymmetric information models of market microstructure claim that variables such as trading intensity are proxies for latent information on the value of financial assets. We consider the interval-valued time series (ITS) of low/high returns and explore the relationship between these extreme returns and the intensity of trading. We assume that the returns (or prices) are generated by a latent process with some unknown conditional density. At each period of time, from this density, we have some random draws (trades) and the lowest and highest returns are the realized extreme observations of the latent process over the sample of draws. In this context, we propose a semiparametric model of extreme returns that exploits the results provided by extreme value theory. If properly centered and standardized extremes have well-defined limiting distributions, the conditional mean of extreme returns is a nonlinear function of the conditional moments of the latent process and of the conditional intensity of the process that governs the number of draws. We implement a two-step estimation procedure. First, we estimate parametrically the regressors that will enter into the nonlinear function, and in a second step we estimate nonparametrically the conditional mean of extreme returns as a function of the generated regressors. Unlike current models for ITS, the proposed semiparametric model is robust to misspecification of the conditional density of the latent process. We fit several nonlinear and linear models to the 5-minute and 1-minute low/high returns to seven major banks and technology stocks, and find that the nonlinear specification is superior to the current linear models and that the conditional volatility of the latent process and the conditional intensity of the trading process are major drivers of the dynamics of extreme returns.
机译:市场微观结构的不对称信息模型声称,诸如交易强度之类的变量是有关金融资产价值的潜在信息的代理。我们考虑低/高回报的区间值时间序列(ITS),并探讨这些极高回报与交易强度之间的关系。我们假设收益(或价格)是由具有未知条件密度的潜在过程产生的。在每个时间段内,从此密度,我们都有一些随机抽取(交易),最低和最高收益是抽取样本上潜在过程的已实现极端观察。在这种情况下,我们提出了一种极限收益的半参数模型,该模型利用了极限价值理论提供的结果。如果正确居中和标准化的极限具有定义明确的极限分布,则极限收益的条件均值是潜在过程的条件矩和控制抽奖次数的过程的条件强度的非线性函数。我们执行两步估算程序。首先,我们通过参量估计将要进入非线性函数的回归变量,然后在第二步中,我们将根据生成的回归函数来极端回归的条件均值进行非参数估计。与当前的ITS模型不同,拟议的半参数模型对于潜在过程条件密度的错误指定具有鲁棒性。我们对七个主要银行和技术股的5分钟和1分钟低/高收益率拟合了几个非线性和线性模型,发现非线性规范优于当前的线性模型,并且潜在过程的条件波动性交易过程的条件强度是极高回报动态的主要驱动力。

著录项

  • 来源
    《Journal of applied econometrics》 |2019年第7期|1121-1140|共20页
  • 作者单位

    Univ Int Business & Econ Sch Int Trade & Econ Beijing Peoples R China;

    Univ Calif Riverside Dept Econ Riverside CA 92521 USA;

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  • 正文语种 eng
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