一种使用聚类算法和高级分析的用户分割方法的发展

Daniil Andreevic Klinov, K. Grigorian
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引用次数: 0

摘要

本文致力于为用户细分创建一个有效的解决方案。本文分析了现有的用户分割服务,分析了用户分割的方法(ABCDx分割,人口统计分割,基于用户旅程地图的分割),分析了聚类算法(K-means, Mini-Batch K-means, DBSCAN, Agglomerative clustering, Spectral clustering)。对这些领域的研究旨在创建一个“灵活”的细分解决方案,以适应每个用户样本。分散分析(ANOVA检验)、聚类指标分析也被用来评估用户分割的质量。在这些领域的帮助下,使用先进的分析和机器学习技术开发了有效的用户细分解决方案。
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Development of a Method for User Segmentation using Clustering Algorithms and Advanced Analytics
The article is devoted to the creation of an effective solution for user segmentation. The article presents an analysis of existing user segmentation services, an analysis of approaches to user segmentation (ABCDx segmentation, demographic segmentation, segmentation based on a user journey map), an analysis of clustering algorithms (K-means, Mini-Batch K-means, DBSCAN, Agglomerative Clustering, Spectral Clustering). The study of these areas is aimed at creating a “flexible” segmentation solution that adapts to each user sample. Dispersion analysis (ANOVA test), analysis of clustering metrics is also used to assess the quality of user segmentation. With the help of these areas, an effective solution for user segmentation has been developed using advanced analytics and machine learning technology.
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