Clustering of Regions Using Basic Agricultural and Economic Criteria

IF 5.6 2区 经济学 Q1 DEVELOPMENT STUDIES Cambridge Journal of Regions Economy and Society Pub Date : 2023-01-01 DOI:10.17059/ekon.reg.2023-1-14
R. Shestakov, E. I. Lovchikova
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Abstract

The diversity of natural, climatic, and economic conditions of Russian regions implies a wide range of approaches to their classification. Simultaneously, the task of creating an abstract methodology for any branch of the national economy becomes more complicated. Effective clustering plays an important role in the establishment and implementation of agricultural and economic policies. The paper explores the potential of basic agricultural and economic regional clustering based on time series of main eco-nomic and agricultural development indicators. The dynamic segmentation technique was applied in order to monitor and predict the direction of meso-economic changes. Official Russian statistics were analysed to identify groups of indicators on production, production and institutional, and production and structural criteria. The k-means clustering algorithm was chosen as the key research method. Based on the three simulated regional segments, baseline average values were calculated. Then, the segments were classified according to the obtained characteristics. The outliers, significantly differing from the main data sets, were considered separately. The findings confirmed a wide spatial distribution of regions included in certain agricultural and economic segments. The presented classification can be applied to justify the directions and choice of instruments of agricultural and economic policy and a strategy for creating production clusters. Moreover, it can be used to plan the activities of regional agri-businesses and reduce their devel-opment imbalances. To improve the dynamic segmentation technique in the field of agricultural and economic development, the analysis can be expanded by changing the examined time interval, increasing the number of factors included in the model and their interactions, and introducing new clustering algorithms. Additionally, this model can be used to forecast structural changes and production dynamics.
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基于基本农业经济标准的区域聚类研究
俄罗斯各地区自然、气候和经济条件的多样性意味着它们的分类方法范围很广。同时,为国民经济的任何一个部门建立一个抽象的方法论的任务变得更加复杂。有效集群在农业和经济政策的制定和实施中发挥着重要作用。基于主要经济和农业发展指标的时间序列,探讨了基础农业和经济区域集聚的潜力。采用动态分割技术对中观经济变化方向进行监测和预测。对俄罗斯官方统计数据进行了分析,以确定有关生产、生产和体制以及生产和结构标准的指标组。选择k-means聚类算法作为重点研究方法。基于三个模拟区域段,计算基线平均值。然后,根据得到的特征对片段进行分类。与主要数据集显著不同的异常值被单独考虑。调查结果证实,包括某些农业和经济部门在内的区域在空间上分布广泛。所提出的分类可用于证明农业和经济政策的方向和工具的选择,以及创建生产集群的战略。此外,它还可用于规划区域农业企业的活动并减少其发展不平衡。为了改进农业和经济发展领域的动态分割技术,可以通过改变检测时间间隔、增加模型中包含的因素数量及其相互作用、引入新的聚类算法来扩展分析范围。此外,该模型还可用于预测结构变化和生产动态。
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来源期刊
CiteScore
7.90
自引率
4.50%
发文量
40
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