Statistical Properties in Firms’ Large-scale Data
This is the first book to provide a systematic description of statistical properties of large-scale financial data. Specifically, the power-law and log-normal distributions observed at a given time and their changes using time-reversal symmetry, quasi-time-reversal symmetry, Gibrat's law, and the non-Gibrat's property observed in a short-term period are derived here. The statistical properties observed over a long-term period, such as power-law and exponential growth, are also derived. These subjects have not been thoroughly discussed in the field of economics in the past, and this book is a compilation of the author's series of studies by reconstructing the data analyses published in 15 academic journals with new data. This book provides readers with a theoretical and empirical understanding of how the statistical properties observed in firms’ large-scale data are related along the time axis. It is possible to expand this discussion to understand theoretically and empirically how the statistical properties observed among differing large-scale financial data are related. This possibility provides readers with an approach to microfoundations, an important issue that has been studied in economics for many years.
Autor: | Ishikawa, Atushi |
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ISBN: | 9789811622960 |
Sprache: | Englisch |
Seitenzahl: | 140 |
Produktart: | Gebunden |
Verlag: | Springer Singapore |
Veröffentlicht: | 26.06.2021 |
Schlagworte: | Cobb-Douglas Gibrat’s Law Log-normal Distribution Pareto Law Power Law Production Function |
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