ASSESSING THE REGIONAL LABOR MARKET BY USING DATA MINING METHODS: WAYS OF EFFECTIVE FUNCTIONING

IF 0.5 Q4 ECONOMICS EGE ACADEMIC REVIEW Pub Date : 2022-11-25 DOI:10.32342/2074-5354-2022-2-57-3
L. Harmider, S. Fedulova, Yuliia Bartashevska, Vitalina Komirna
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Abstract

As a result of the uneven development of certain territories, it is more feasible and effective to tackle the practical issues of labor market regulation at the regional level. This ensures sufficient regulation of the system. Since it is necessary to properly account for the regional differences in practice, it is required that these issues be methodologically justified. Therefore, the aim of this paper is to investigate regional labor markets based on indicators of the socio-economic development of regions using the data mining methods. The current study has clustered regions of Ukraine on the basis of the level of their socio-economic development using data mining methods, in particular Kohonen maps and the k-means methods. One of the most critical stages in the assessment of Ukraine’s regions in terms of socio-economic development by using data mining methods is to determine the information base, criteria of evaluation, and a list of estimates. The data mining methods have gained much popularity in the assessing regional differentiation. The conducted analysis based on data mining methods included the use of the Deductor software, which includes the following analytical algorithms: neural networks, Kohonen’s self-organizing maps, autocorrelation and regression, associative rules, decision trees. For our study, we used the cluster analysis method based on Kohonen’s self-organizing maps as one of the most popular and frequently used methods for solving problems of the regional economy and assessing the differentiation of regions. In the context of our task, the result of cluster analysis is clusters of regions, united by indices of socioeconomic development. The main aspects of the socio-economic and demographic development of the regions are characterized by a set of statistical indicators related to four blocks of key factors: 1. Assessment of the demographic situation in a region. 2. Assessment of the social situation in a region. 3. Assessment of the economic situation in a region. 4. Assessment of the organizational environment in a region. The study, by no means, claims to detect all the dependences in the labor market related to all the above-mentioned factors. Based on public data, given in the statistical yearbook “Ukraine in Figures” (2020), by using mathematical methods (correlation-regression and cluster analysis), we obtained two groups of factors that characterize different aspects of the socio-economic and demographic development. The ranking of the regions by the level of extensive and intensive development shows that the development of the regions in Ukraine mainly proceeds in the extensive path of development. Almost all regions of Ukraine demonstrate a low level of intensive development. The integrated coefficient of intensive development for many territories is far from a maximum value; there are well distinguishable and huge discrepancies in the levels of the regions’ intensive development. Such a gap between the natural and human resource potentials, on the one hand, and the level of the development of economic activity and its territorial organization within the regions, on the other hand, leads to investment unattractiveness of some territories. Thus, the estimation of the country’s regions based on the level of their socio-economic development testifies to the dominance of extensive factors in the development of most regions in Ukraine. Common areas of the policy, conducted in the labor market, for all groups of regions are the measures to conduct an active policy (promoting self-employment and small businesses; the creation of new jobs; vocational training and retraining of unemployed people; public works; improvement of employment services, etc.).
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利用数据挖掘方法评估区域劳动力市场:有效运作的方法
由于某些地区的发展不平衡,在区域层面解决劳动力市场调控的实际问题更为可行和有效。这确保了对系统的充分监管。由于有必要适当地考虑到实践中的区域差异,因此需要在方法上证明这些问题是合理的。因此,本文的目的是利用数据挖掘方法,在区域社会经济发展指标的基础上,对区域劳动力市场进行研究。目前的研究使用数据挖掘方法,特别是Kohonen地图和k-means方法,根据乌克兰各区域的社会经济发展水平将其聚集在一起。在利用数据挖掘方法评估乌克兰各地区的社会经济发展方面,最关键的阶段之一是确定信息库、评价标准和估算清单。数据挖掘方法在区域差异评价中得到了广泛的应用。基于数据挖掘方法进行的分析包括使用演绎软件,演绎软件包括以下分析算法:神经网络、Kohonen自组织图、自相关和回归、关联规则、决策树。本文将基于Kohonen自组织图的聚类分析方法作为解决区域经济问题和评估区域分化最常用的方法之一。在我们的任务背景下,聚类分析的结果是由社会经济发展指标联合起来的区域集群。各区域社会经济和人口发展的主要方面的特点是与四个关键因素有关的一套统计指标:对一个地区人口状况的评估。2. 对一个地区社会形势的评估。3.对一个地区经济形势的评估。4. 对一个地区的组织环境进行评估。这项研究并没有声称发现了劳动力市场中与上述所有因素相关的所有依赖关系。根据统计年鉴《数字中的乌克兰》(2020)中的公共数据,我们使用数学方法(相关回归和聚类分析),获得了表征社会经济和人口发展不同方面的两组因素。通过对各地区粗放型和集约型发展水平的排名可以看出,乌克兰各地区的发展主要是走粗放型发展道路。乌克兰几乎所有地区都表现出低水平的集约化发展。许多地区集约发展综合系数远未达到最大值;区域集约发展水平差异明显,差异巨大。一方面,自然资源和人力资源潜力与区域内经济活动的发展水平及其领土组织之间的这种差距,另一方面,导致一些地区的投资缺乏吸引力。因此,根据其社会经济发展水平对该国各地区的估计证明,在乌克兰大多数地区的发展中,广泛的因素占主导地位。在劳动力市场上对所有地区群体实施的政策的共同领域是实施积极政策的措施(促进自营职业和小企业;创造新的就业机会;对失业人员进行职业培训和再培训;公共工程;改善就业服务等)。
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EGE ACADEMIC REVIEW
EGE ACADEMIC REVIEW ECONOMICS-
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