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Ranking and selection of unsupervised learning marketing segmentation

机译:无监督学习营销细分的排序和选择

摘要

This paper addresses the problem of choosing the most appropriate classification from a given set of classifications of a set of patterns. This is a relevant topic on unsupervised systems and clustering analysis because different classifications can in general be obtained from the same data set. The provided methodology is based on five fuzzy criteria which are aggregated using an Ordered Weighted Averaging (OWA) operator. To this end, a novel multi-criteria decision making (MCDM) system is defined, which assesses the degree up to which each criterion is met by all classifications. The corresponding single evaluations are then proposed to be aggregated into a collective one by means of an OWA operator guided by a fuzzy linguistic quantifier, which is used to implement the concept of fuzzy majority in the selection process. This new methodology is applied to a real marketing case based on a business to business (B2B) environment to help marketing experts during the segmentation process. As a result, a segmentation containing three segments consisting of 35, 98 and 127 points of sale respectively is selected to be the most suitable to endorse marketing strategies of the firm. Finally, an analysis of the managerial implications of the proposed methodology solution is provided.
机译:本文讨论了从一组模式的给定分类中选择最合适的分类的问题。这是与无监督系统和聚类分析有关的主题,因为通常可以从同一数据集获得不同的分类。所提供的方法基于五个模糊标准,这些标准使用有序加权平均(OWA)运算符进行汇总。为此,定义了一种新颖的多标准决策(MCDM)系统,该系统评估所有分类满足每个标准的程度。然后提出相应的单个评估,通过由模糊语言量词指导的OWA运算符将其汇总为一个集合,用于在选择过程中实现模糊多数的概念。此新方法应用于基于企业对​​企业(B2B)环境的实际营销案例,以在细分过程中帮助营销专家。结果,包含三个分别由35、98和127个销售点组成的细分的细分被选择为最适合企业的营销策略的细分。最后,对所提出的方法学解决方案的管理意义进行了分析。

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