金融科技行业的初步研究:B2B环境下客户细分的两阶段聚类分析

IF 2.5 4区 管理学 Q3 BUSINESS
A. Sheikh, T. Ghanbarpour, Davoud Gholamiangonabadi
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引用次数: 20

摘要

本文提出了一种考虑两阶段聚类和LRFMP模型(长度、近因、频率、货币和周期性)同时用于客户细分和行为分析的新方法,并将其应用于伊朗金融科技公司。在本实践者笔记中,将K-means聚类算法和LRFMP模型结合在客户细分过程中。在初始聚类之后,为了更好地了解有价值的客户,在需要进一步调查的细分中实现额外的聚类。这种方法有助于更好地解释不同的客户群。根据23524个商业客户的特点,分析了客户细分市场,并提出了相应的策略。第一阶段聚类结果表明,客户被最好地划分为四类。将第一和第四细分再次聚类,确定最终的11组客户。本报告为研究人员和从业人员提供了系统和实用的方法,用于细分,解释和定位客户,特别是在B2B环境和金融科技行业,并帮助管理人员制定有效的营销策略,增强客户关系和营销情报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Preliminary Study of Fintech Industry: A Two-Stage Clustering Analysis for Customer Segmentation in the B2B Setting
ABSTRACT This practitioner note proposes a new approach considering two-stage clustering and LRFMP model (Length, Recency, Frequency, Monetary and Periodicity) simultaneously for customer segmentation and behavior analysis and applies it among the Iranian Fintech companies. In this practitioner note, the K-means clustering algorithm and LRFMP model are combined in the customer segmentation process. After initial clustering, for a better understanding of valuable customers, additional clustering is implemented in segments that needed further investigation. This approach contributes to a better interpretation of different customer segments. Customer segments, consisting of 23524 business customers are analysed based on their characteristics and appropriate strategies are recommended accordingly. The first stage clustering result shows that customers are best segmented into four groups. The first and fourth segments are clustered again and the final 11 groups of customers are determined. This note provides a systematic and practical approach for researchers and practitioners for segmentation, interpretation, and targeting of customers especially in the B2B setting and the Fintech industry and helps managers to make effective marketing strategies and enhance customer relationship and marketing intelligence.
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来源期刊
CiteScore
2.20
自引率
35.70%
发文量
22
期刊介绍: The Journal of Business-to-Business Marketing® encourages diversity in approaches to business marketing theory development, research methods, and managerial problem solving. An editorial board comprised of outstanding, internationally recognized scholars and practitioners ensures that the journal maintains impeccable standards of relevance and rigorous scholarship. The Journal of Business-to-Business Marketing features: •basic and applied research that reflects current business marketing theory, methodology, and practice •articles from leading researchers covering topics of mutual interest for the business and academic communities
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