TY - JOUR T1 - Analysis of Sector Based Energy Consumption Rates of OECD Countries with Louvain Clustering TT - OECD Ülkelerinin Sektör Bazlı Enerji Tüketim Oranlarının Louvain Kümeleme ile Analizi AU - Şimşek, Ahmet Bahadır PY - 2024 DA - October Y2 - 2024 DO - 10.54600/igdirsosbilder.1437462 JF - Iğdır Üniversitesi Sosyal Bilimler Dergisi JO - SOSBİLDER PB - Igdir University WT - DergiPark SN - 2147-5717 SP - 55 EP - 68 IS - 37 LA - en AB - This study examines the shares of sectors (agriculture, services, industry, transportation and other sectors) in total energy consumption in OECD countries for the period 2011-2020 using Louvain cluster analysis. Energy consumption is an important development indicator and provides important information about the development of countries. In particular, the analysis of the shares of energy consumption of main sectors such as agriculture, services, industry and transport sectors can provide important information about a country's economic diversity, level of industrialization and economic focus. Cluster analysis can provide important insights by identifying countries with similar energy consumption patterns. Louvain cluster analysis was preferred in this study. Louvain clustering has the advantage of being fast and dealing with noise compared to K-means and Hierarchical clustering methods. The results of the study are evaluated from two perspectives. The first one is the inferences obtained from the descriptive statistics of the data set and the second one is the inferences obtained from the clustering analysis. The results of the cluster analysis emphasize the insights offered by the cluster changes in the temporal dimension and the formation of year-based clusters. In addition, the insights provided by the clustering results for Türkiye are evaluated. KW - Energy Consumption KW - Sectoral Analysis KW - Louvain Cluster Analysis KW - OECD Countries KW - Türkiye N2 - Bu çalışma, OECD ülkelerindeki sektörlerin (tarım, hizmetler, endüstri, taşımacılık ve diğer sektörler) toplam enerji tüketimindeki paylarını 2011-2020 döneminde Louvain kümeleme analizi ile incelemektedir. Enerji tüketimi önemli bir kalkınma göstergesidir ve ülkelerin gelişimi hakkında önemli bilgiler sunar. Özellikle tarım, hizmetler, endüstri ve ulaştırma sektörleri gibi ana sektörlerin enerji tüketimindeki paylarının analizi, bir ülkenin ekonomik çeşitliliği, sanayileşme düzeyi ve ekonomik odakları hakkında önemli bilgiler sunabilir. Kümeleme analizi ile benzer enerji tüketim desenlerine sahip ülkeleri belirleyerek önemli çıkarımlar elde edilebilir. Çalışmada Louvain kümeleme analizi tercih edilmiştir. 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