Firms Growth, Distribution, and Non-Self Averaging Revisited

Y. Fujiwara
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Abstract

During my last conversation with Masanao Aoki, he told me that the concept of non-self averaging in statistical physics, frequently appearing in economic and financial systems, has important consequences to policy implication. Zipf's law in firms-size distribution is one of such examples. Recent Malevergne, Saichev and Sornette (MSS) model, simple but realistic, gives a framework of stochastic process including firms entry, exit and growth based on Gibrat's law of proportionate effect, and shows that the Zipf's law is a robust consequence. By using the MSS model, I would like to discuss about the breakdown of Gibrat's law and the deviation from Zipf's law, often observed for the regime of small and medium firms. For the purpose of discussion, I recapitulate the derivation of exact solution for the MSS model with some correction and additional information on the distribution for the age of existing firms. I argue that the breakdown of Gibrat's law is related to the underlying network of firms, most notably production network, in which firms are mutually correlated among each other leading to the larger volatility in the growth for smaller firms that depend as suppliers on larger customers.
公司成长、分布和非自我平均再考察
在我与青木正雄的最后一次谈话中,他告诉我,统计物理学中的非自我平均概念经常出现在经济和金融体系中,对政策含义具有重要影响。公司规模分配中的齐夫定律就是这样一个例子。Malevergne, Saichev和Sornette (MSS)模型基于Gibrat的比例效应定律,给出了包括企业进入、退出和成长在内的随机过程的框架,并证明了Zipf定律是一个稳健的结果。通过使用MSS模型,我想讨论Gibrat定律的崩溃和对Zipf定律的偏离,这在中小企业制度中经常观察到。为了讨论的目的,我概述了MSS模型精确解的推导过程,并对现有企业年龄分布进行了一些修正和补充信息。我认为直布罗陀定律的崩溃与公司的潜在网络有关,最明显的是生产网络,在生产网络中,公司之间相互关联,导致依赖于大客户的供应商的小公司的增长波动较大。
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