Time-Varying Arrival Rates of Informed and Uninformed Trades

D. Easley, Liuren Wu, R. Engle, Maureen O'Hara
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引用次数: 318

Abstract

We propose a dynamic econometric microstructure model of trading, and we investigate how the dynamics of trades and trade composition interact with the evolution of market liquidity, market depth, and order flow. We estimate a bivariate generalized autoregressive intensity process for the arrival rates of informed and uninformed trades for 16 actively traded stocks over 15 years of transaction data. Our results show that both informed and uninformed trades are highly persistent, but that the uninformed arrival forecasts respond negatively to past forecasts of the informed intensity. Our estimation generates daily conditional arrival rates of informed and uninformed trades, which we use to construct forecasts of the probability of information-based trade (PIN). These forecasts are used in turn to forecast market liquidity as measured by bid-ask spreads and the price impact of orders. We observe that PINs vary across assets and over time, and most importantly that they are correlated across assets. Our analysis shows that one principal component explains much of the daily variation in PINs and that this systemic liquidity factor may be important for asset pricing. We also find that PINs tend to rise before earnings announcement days and decline afterwards. Copyright The Author 2008., Oxford University Press.
知情和不知情交易的时变到达率
本文提出了一个动态计量微观结构的交易模型,并研究了交易动态和交易构成如何与市场流动性、市场深度和订单流的演变相互作用。我们在15年的交易数据中估计了16只活跃交易股票的知情和不知情交易到达率的双变量广义自回归强度过程。我们的研究结果表明,知情和不知情的交易都具有高度的持久性,但不知情的到达预测与过去的知情强度预测呈负相关。我们的估计产生了每日有条件到达率的知情和不知情的交易,我们用它来构建基于信息的交易(PIN)的概率预测。这些预测反过来被用来预测市场流动性,通过买卖价差和订单的价格影响来衡量。我们观察到pin在不同的资产和时间上是不同的,最重要的是它们在不同的资产之间是相关的。我们的分析表明,一个主成分解释了pin的大部分日常变化,并且这种系统性流动性因素可能对资产定价很重要。我们还发现,pin往往在收益公告日之前上升,之后下降。版权所有作者2008。牛津大学出版社。
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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