社会科学中动态幂律分布的经验方法

Ricardo T. Fernholz
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引用次数: 4

摘要

本文介绍了在基本稳定条件下表征一般幂律分布的非参数计量方法。这些方法在几个方向上扩展了社会科学中幂律的文献。首先,我们表明,随机增长环境中的任何平稳分布完全由两个因素决定——分布中不同等级的特殊波动率和回归率(横截面均值回归的一种度量)。无论不同经济主体的增长率和波动性如何变化,这一结果都是有效的,因此适用于直布罗陀定律及其延伸。其次,我们提出了使用面板数据估计这两个因素的技术。第三,我们展示了我们的结果如何为普遍的规模效应提供结构性解释,在这种效应中,排名较高的过程平均比排名较低的过程增长得更慢。最后,我们使用商品价格面板数据的实证方法,并表明我们的技术准确地描述了相对商品价格的实证分布。我们还展示了商品的广义“规模”效应的存在,正如我们的计量经济学理论所预测的那样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical Methods for Dynamic Power Law Distributions in the Social Sciences
This paper introduces nonparametric econometric methods that characterize general power law distributions under basic stability conditions. These methods extend the literature on power laws in the social sciences in several directions. First, we show that any stationary distribution in a random growth setting is shaped entirely by two factors - the idiosyncratic volatilities and reversion rates (a measure of cross-sectional mean reversion) for different ranks in the distribution. This result is valid regardless of how growth rates and volatilities vary across different economic agents, and hence applies to Gibrat's law and its extensions. Second, we present techniques to estimate these two factors using panel data. Third, we show how our results offer a structural explanation for a generalized size effect in which higher-ranked processes grow more slowly than lower-ranked processes on average. Finally, we employ our empirical methods using panel data on commodity prices and show that our techniques accurately describe the empirical distribution of relative commodity prices. We also show the existence of a generalized "size" effect for commodities, as predicted by our econometric theory.
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