基于粗糙集理论的自适应模糊网格划分与规则生成混合方法

Pa Liu Zheng, Liu Wang Zhang, Li Wang Cheng, Koscik Xue Huang
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引用次数: 0

摘要

针对基于购买行为的客户细分问题,提出了一种基于粗糙集理论的自适应模糊网格划分和规则生成的混合方法。目标是最小化划分的模糊性,同时最大化生成规则的准确性和可解释性。该研究利用了一个由客户交易组成的数据集,包括人口统计数据、购买细节和满意度评级。模糊网格划分过程将客户空间划分为网格单元,代表不同的段。模糊隶属度值是根据数据点与每个网格单元的关联来分配的。利用粗糙集理论进行属性约简,识别出与客户细分最相关的属性。规则归纳算法生成捕获客户属性之间的模式和依赖关系以及它们与特定网格单元的关联的规则。该方法结合了自适应模糊网格划分和基于粗糙集的规则生成的优点。优化过程调整模糊隶属度值并细化生成的规则,以提高准确性和可解释性。最后,以零售行业为例,对该方法的有效性进行了验证。结果显示成功的客户细分和产生可操作的规则的营销策略。该研究提供了一种综合的方法,将自适应模糊网格划分和基于粗糙集理论的规则生成相结合,为客户细分领域做出了贡献。这种混合方法提供了对客户行为的有价值的见解,支持有针对性的营销活动、个性化推荐和增强的客户满意度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid approach for adaptive fuzzy grid partitioning and rule generation using rough set theory
This research proposes a hybrid approach for adaptive fuzzy grid partitioning and rule generation using rough set theory to address the problem of customer segmentation based on purchasing behavior. The objective is to minimize the fuzziness of the partitioning while maximizing the accuracy and interpretability of the generated rules. The research utilizes a dataset consisting of customer transactions, including demographics, purchase details, and satisfaction ratings. The fuzzy grid partitioning process divides the customer space into grid cells, representing different segments. Fuzzy membership values are assigned to data points based on their association with each grid cell. Rough set theory is employed for attribute reduction, identifying the most relevant attributes for customer segmentation. Rule induction algorithms generate rules that capture the patterns and dependencies among customer attributes and their association with specific grid cells. The hybrid approach combines the advantages of adaptive fuzzy grid partitioning and rough set-based rule generation. The optimization process adjusts fuzzy membership values and refines the generated rules to improve accuracy and interpretability. A numerical example and a case study in the retail industry are presented to demonstrate the effectiveness of the proposed approach. Results show successful customer segmentation and generation of actionable rules for marketing strategies. The research contributes to the field of customer segmentation by providing a comprehensive methodology that integrates adaptive fuzzy grid partitioning and rule generation using rough set theory. The hybrid approach offers valuable insights into customer behavior, enabling targeted marketing campaigns, personalized recommendations, and enhanced customer satisfaction.
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