基于目的国的棕榈油出口分组K-Medoids聚类算法的实现

Deny Haryadi, Demi Adidrana
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引用次数: 3

摘要

棕榈油是种植产品之一,成为印尼出口的主要商品。棕榈油出口量每年都有增加的趋势。这是受世界上棕榈油进口国对棕榈油需求量大的影响。对棕榈油的高需求是一个必须开发的机会,以便印度尼西亚能够在当前的大流行中与其竞争对手竞争。印度尼西亚作为世界上最大的棕榈油生产国,必须能够将优先作为最大棕榈油进口国的国家分组。因此,有必要将优先进口棕榈油的国家归类为最大进口国。本研究的目的是使用K-Medoids聚类算法根据目的国对棕榈油出口进行分组。根据本研究中使用K-Medoids聚类算法进行的测试结果,聚类1是进口低棕榈油或低棕榈油的国家类别,即10个被测试国家类别中的7个(荷兰、美国、西班牙、埃及、孟加拉国、意大利、新加坡),然后聚类2是进口中等棕榈油或中等棕榈油的国家类别,即10个被测试国家类别中的1个(巴基斯坦)。最后,集群3是棕榈油高进口国的类别或高,即2(印度和中国)从10个类别的国家测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of K-Medoids Clustering Algorithm for Grouping Palm Oil Exports by Destination Country
Palm oil is one of the plantation products that becomes the export of Indonesia's leading commodity. The volume of palm oil exports tends to increase every year. This is influenced by the large demand for palm oil in palm oil importing countries in the world. The high demand for palm oil is an opportunity that must be developed so that Indonesia can compete with its competitors in the current pandemic. Indonesia as the world's largest palm oil producer must be able to group the countries that are priority as the largest importers of palm oil. For this reason, it is necessary to group the countries that are a priority as the largest importer of palm oil. The purpose of this study is to group palm oil exports based on the destination country using the K-Medoids Clustering algorithm. Based on the results of tests that have been conducted in this study using the K-Medoids Clustering algorithm, Cluster 1 is a category of countries importing low palm oil or Low, namely 7 (Netherlands, USA, Spain, Egypt, Bangladesh, Italy, Singapore) of 10 categories of countries tested, then cluster 2 is a category of countries importing medium palm oil or Medium which is 1 (Pakistan) of 10 categories of countries tested, and lastly cluster 3 is a category of high palm oil importing countries or High which is 2 (India and China) from 10 categories of countries tested.
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