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Customer Clustering Using a Combination of Fuzzy C-Means and Genetic Algorithms

机译:模糊C均值与遗传算法相结合的客户聚类

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This study intends to combine the fuzzy c-means clustering and genetic algorithms to cluster the customers of?steel industry. The customers were divided into two clusters by using the variables of the LRFM (length, recency,?frequency, monetary value) model. Results indicated that customers belonging to the first cluster had a higher?length of the relationship, recency of trade, and frequency of trade but lower monetary value compared to the?average values of these criteria for all customers. The results also showed that customers belonging to the second cluster had a higher recency of trade and monetary value but lower length of the relationship and frequency of?trade compared to the average values of these criteria for all customers. It was also found that the combined?algorithm (i.e., fuzzy c-means clustering and genetic algorithm) used in this study had a lower mean squared?error (MSE) compared to fuzzy c-means clustering.
机译:本研究旨在将模糊c均值聚类和遗传算法相结合,以对钢铁行业的客户进行聚类。通过使用LRFM(长度,新近度,频率,货币价值)模型的变量,将客户分为两个集群。结果表明,与所有客户的这些标准的平均值相比,属于第一个集群的客户的关系长度,交易的新近度和交易频率更高,但货币价值更低。结果还表明,与所有客户的这些标准的平均值相比,属于第二类的客户具有较高的交易新近度和货币价值,但关系长度和交易频率较短。还发现,与模糊c均值聚类相比,本研究中使用的组合算法(即模糊c均值聚类和遗传算法)具有较低的均方误差(MSE)。

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