Mathematical modeling on the base of functions density of normal distribution

Author:

Pinkovetskaia Iuliia1ORCID,Nuretdinova Yulia2ORCID,Nuretdinov Ildar3ORCID,Lipatova Natalia4ORCID

Affiliation:

1. Department of Economic Analysis and State Management, Ulyanovsk State University

2. Department of Economic Security, Accounting and Audit, Ulyanovsk State University

3. Department of Finance and Credit, Ulyanovsk State Agrarian University named after P. A. Stolypin, Ulyanovsk, 432600, Russia

4. Department of Economic Theory and Economics of Agriculture, Samara State Agrarian University, Kinel, 446430, Russia

Abstract

One of the urgent tasks in many modern scientific studies is the comparative analysis of indicators that characterize large sets of similar objects located in different regions. Given the significant differences between the regions compared, this analysis should be carried out using relative indicators. The objective of the study was to use the density functions of the normal distribution to model empirical data that describe the compared sets of objects located in different regions. The methodological approach was based on the Chebyshev and Lyapunov theorems. The research results focus on the main stages of the construction of normal distribution functions and the corresponding histograms, as well as the determination of the parameters of these functions. The work possesses a degree of originality, since it provides answers to questions such as the justification of the necessary information base; performing computational experiments and developing alternative options for the generation of normal distribution density functions; comprehensive evaluation of the quality of the functions obtained through three statistical tests: Pearson, Kolmogorov-Smirnov, Shapiro-Wilk; identification of patterns that characterize the distribution of indicators of the sets of objects considered. Examples of empirical data models are given using distribution functions to estimate the share of innovative firms in the total number of firms in the regions of Russia.

Publisher

Universidad del Zulia

Reference33 articles.

1. Afeez B., Maxwell O., Otekunrin O., Happiness O. (2018). Selection and Validation of Comparative Study of Normality Test. American Journal of Mathematics and Statistics. 8(6), 190-201.

2. Allanson P. (1992). Farm size structure in England and Wales, 1939–89. Journal of Agricultural Economics, 43, 137-148.

3. Balaev A.I. (2014). Modelling Financial Returns and Portfolio Construction for the Russian Stock Market. International Journal of Computational Economics and Econometrics, 1/2(4), 32-81.

4. Dubrov A.M., Mkhitaryan V.S. & Troshin L.I. (2000). Multidimensional statistical methods. Moscow, Finance and Statistics.

5. Federal State Statistics Service. Science and innovation. Available at: https://rosstat.gov.ru/folder/14477?print=1 (accessed 15.01.2021).

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