Cluster model for big data analysis in livestock production
Кластерная модель анализа больших данных в животноводческом производстве
Olga V. Galanina (Галанина О.В.) and
Julia P. Zolotaryova (Золотарёва Ю.П.)
Additional contact information
Olga V. Galanina (Галанина О.В.): Saint-Petersburg State Agrarian University
Julia P. Zolotaryova (Золотарёва Ю.П.): Saint-Petersburg State Agrarian University
State and Municipal Management Scholar Notes, 2023, vol. 3, 67-74
Abstract:
Intelligent methods of analysis, which include the problem of clustering, are widely used in the field of economics of the agro-industrial complex. The clustering problem belongs to the class of unsupervised learning problems. The essence of the problem is the grouping of research objects according to the use of similarity. If the regions of the Russian Federation are selected in terms of livestock production, they can also be automatically grouped according to the similarity recipe. The k-means method is currently a successful method for solving clustering problems. The main stage of solving the problem is the collection of data, which includes all the main characteristics of the object. For example, if you set up production in the region in terms of animal husbandry, then it would be more logical to x1 - meat production per capita and x2 – milk production per capita. The criterion for choosing the number of clusters is the root mean square error. In total, 79 regions of the Russian Federation participated in the analysis. It turned out that the potential to break all regions of the Russian Federation into 7 clusters of similarity. Regions with high milk and meat production (clusters 4 and 6), regions with high milk and meat production (clusters 2, 3, 5) and regions with low milk and meat production (clusters 0, 1) were identified.
Keywords: artificial intelligence; data analysis; big date; k-means method; cluster model; animal husbandry (search for similar items in EconPapers)
Date: 2023
References: Add references at CitEc
Citations:
Downloads: (external link)
ftp://w82.ranepa.ru/rnp/smmscn/s2338.pdf
Related works:
This item may be available elsewhere in EconPapers: Search for items with the same title.
Export reference: BibTeX
RIS (EndNote, ProCite, RefMan)
HTML/Text
Persistent link: https://EconPapers.repec.org/RePEc:rnp:smmscn:s2338
Access Statistics for this article
State and Municipal Management Scholar Notes is currently edited by Tatiana Ignatova
More articles in State and Municipal Management Scholar Notes from Russian Presidential Academy of National Economy and Public Administration Contact information at EDIRC.
Bibliographic data for series maintained by RANEPA maintainer ().