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A generalized bivariate mixture model for stock price volatility and trading volume

机译:股价波动和交易量的广义双变量混合模型

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摘要

In the standard bivariate mixture model, the number of information arrivals which is typically modeled as a serially correlated random variable, determines the dynamics of stock price volatility and trading volume. An important limitation of this model is the assumption that the traders' sensitivity to new information is constant over time, implying that every piece of information is treated alike. In this paper, I allow the latent number of information arrivals as well as the latent sensitivity tonew information to be serially correlated random variables each endowed with their own dynamic behavior. In the resulting generalized mixture model, the behavior of volatility and volume results from the simultaneous interaction of the number of information arrivals and traders' sensitivity to new information. The empirical results based on daily data for the IBM and Kodak stock reveals that the generalized mixture model improves the explanation of the behavior of volatility relative to the standard model. Furthermore, the short-run volatility dynamics are directed by the information arrival process, whereas the long-run dynamics are associated with the sensitivity to new information. Finally, the variation of the sensitivity to news is largely irrelevant for the behavior of trading volume which is mainly determined by the variation of the number of information arrivals.
机译:在标准双变量混合模型中,信息到达的次数(通常被建模为与序列相关的随机变量)决定了股价波动和交易量的动态。该模型的一个重要局限性是假设交易者对新信息的敏感性随着时间的推移是恒定的,这意味着每条信息都被相同地对待。在本文中,我允许潜在的信息到达数量以及对新信息的潜在敏感性成为与序列相关的随机变量,每个变量都具有自己的动态行为。在由此产生的广义混合模型中,波动性和交易量的行为是由于信息到达数量和交易者对新信息的敏感性的同时相互作用而产生的。基于IBM和柯达股票每日数据的经验结果表明,相对于标准模型,广义混合模型可以更好地解释波动性行为。此外,短期波动动态是由信息到达过程控制的,而长期动态则与对新信息的敏感性相关。最后,对新闻敏感性的变化与交易量的行为无关,这主要取决于信息到达数量的变化。

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