SEGMENTASI PELANGGAN MENGGUNAKAN METODE K-MEANS CLUSTERING BERDASARKAN MODEL QRF PADA PERUSAHAAN RINTISAN PENYEDIA TENAGA KERJA

Sari Melati, A. Wibowo
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Abstract

The difficulty of getting a job that is in accordance with the interests and specialization of a worker, as well as the difficulty of the company getting a worker who suits the needs of the company causes the mushrooming of consulting firms or labor providers in Indonesia today. With the increasing number of companies providing labor, of course the competitiveness of the business industry in the human resources is increasingly high. So it needs to be analyzed to determine the right business strategy, such as determining the company's promotion goals. One of them is analyzing the segmentation of customers who have worked together. This research successfully modeled customer segmentation based on data mining clustering techniques using the K-Means data mining algorithm. The QRF (Quantity, Recency, Frequency) modeling process is analyzing the customer's behavior from the number of requests in each transaction carried out within a certain timeframe, as well as recency as the identification of the time span of the last transaction, as well as the number of transactions made within a certain time period. Researchers conducted a period of data for one year by analyzing customer activity in start-up providers of labor during 2019, on 86 active customers. Based on the analysis results obtained, customer segmentation in two clusters with QRF (Quantity, Recency, Frequency) modeling using Davies Bouldin Index (DBI) evaluation scored -0,482, while customer segmentation in three clusters using QRF (Quantity, Recency, Frequency) evaluation using Davies Bouldin Index (DBI) evaluation to obtain -0.469, and customer segmentation in four clusters with QRF (Quantity, Recency, Frequency) modeling using Davies BouldinIndex (DBI) evaluation to obtain -0,526. Keywords— pelanggan, clustering, algoritma k-means, DBI, QRF
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分割客户使用基于QRF模型的QRF方法
很难找到一份符合工人兴趣和专业的工作,以及公司很难找到适合公司需求的工人,这导致了今天印度尼西亚咨询公司或劳动力提供商的迅速发展。随着提供劳动力的公司越来越多,当然商业行业在人力资源方面的竞争力也越来越高。所以需要通过分析来确定正确的经营策略,比如确定公司的推广目标。其中之一是对合作过的客户进行细分分析。本研究利用K-Means数据挖掘算法成功地建立了基于数据挖掘聚类技术的客户细分模型。QRF (Quantity, Recency, Frequency)建模过程根据在特定时间范围内执行的每个事务中的请求数量,以及最近一次事务的时间范围的识别,以及在特定时间段内进行的事务数量来分析客户的行为。研究人员分析了2019年创业人力资源公司的86名活跃客户的客户活动,并进行了为期一年的数据分析。根据分析结果,采用QRF (Quantity, Recency, Frequency)模型的2个聚类客户细分采用戴维斯博尔丁指数(DBI)评价得分为-0,482,采用QRF (Quantity, Recency, Frequency)模型的3个聚类客户细分采用戴维斯博尔丁指数(DBI)评价得分为-0.469,采用QRF (Quantity, Recency, Frequency)模型的4个聚类客户细分采用戴维斯博尔丁指数(DBI)评价得分为-0,526。关键词:pelanggan,聚类,k-means算法,DBI, QRF
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