Gabaix Xavier, Gopikrishnan Parameswaran, Plerou Vasiliki, Stanley H Eugene
Department of Economics, Massachusetts Institute of Technology, Cambridge, Massachusetts 02142, USA.
Nature. 2003 May 15;423(6937):267-70. doi: 10.1038/nature01624.
Insights into the dynamics of a complex system are often gained by focusing on large fluctuations. For the financial system, huge databases now exist that facilitate the analysis of large fluctuations and the characterization of their statistical behaviour. Power laws appear to describe histograms of relevant financial fluctuations, such as fluctuations in stock price, trading volume and the number of trades. Surprisingly, the exponents that characterize these power laws are similar for different types and sizes of markets, for different market trends and even for different countries--suggesting that a generic theoretical basis may underlie these phenomena. Here we propose a model, based on a plausible set of assumptions, which provides an explanation for these empirical power laws. Our model is based on the hypothesis that large movements in stock market activity arise from the trades of large participants. Starting from an empirical characterization of the size distribution of those large market participants (mutual funds), we show that the power laws observed in financial data arise when the trading behaviour is performed in an optimal way. Our model additionally explains certain striking empirical regularities that describe the relationship between large fluctuations in prices, trading volume and the number of trades.
对复杂系统动态的洞察往往通过关注大幅波动来获得。对于金融系统而言,如今存在大量数据库,便于对大幅波动进行分析并刻画其统计行为特征。幂律似乎能描述相关金融波动的直方图,比如股价波动、交易量波动和交易次数波动。令人惊讶的是,表征这些幂律的指数在不同类型和规模的市场、不同市场趋势甚至不同国家都是相似的——这表明可能存在一个通用的理论基础来支撑这些现象。在此,我们基于一组合理的假设提出一个模型,该模型为这些经验幂律提供了解释。我们的模型基于这样一个假设,即股票市场活动中的大幅波动源于大型参与者的交易。从对那些大型市场参与者(共同基金)规模分布的经验刻画出发,我们表明当交易行为以最优方式进行时,在金融数据中观察到的幂律就会出现。我们的模型还解释了某些显著的经验规律,这些规律描述了价格大幅波动、交易量和交易次数之间的关系。