基于k均值聚类的可解释客户细分

Riyo Hayat Khan, Dibyo Fabian Dofadar, Md. Golam Rabiul Alam
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引用次数: 2

摘要

近年来,可解释的人工智能越来越受欢迎,但它在无监督学习中的应用仍然很少。在本研究中,可解释性与聚类这一无监督方法相结合。在竞争激烈的商业世界中,客户细分是最重要的方面之一。客户细分最常用的方法是集群,然而,集群的分配通常很难解释。为了使聚类分配更具可解释性,本研究在小数据集和大数据集的客户细分中实现了基于可解释性的决策树。采用肘部法和廓形评分法找到最优聚类数,然后对两个数据集实施ExKMC算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable Customer Segmentation Using K-means Clustering
Explainable AI has gained popularity in recent years, but the application of it in unsupervised learning is still a few. In this research, explainability was integrated with clustering, an unsupervised method. Customer segmentation is one of the most important aspects in the competitive business world. The most common approach for customer segmentation is clustering, however, assignments of the clusters often can be hard to interpret. To make the cluster assignments more interpretable, a decision tree based explainability was implemented for customer segmentation in this research for small and large datasets. Using the Elbow Method and Silhouette Score, an optimal number of clusters were found, then ExKMC algorithm was implemented for both datasets.
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