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The k-means range algorithm for personalized data clustering in e-commerce

机译:用于电子商务中个性化数据聚类的k-均值范围算法

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摘要

This paper describes the k-means range algorithm, a combination of the partitional k-means clustering algorithm with a well known spatial data structure, namely the range tree, which allows fast range searches. It offers a real-time solution for the development of distributed interactive decision aids in e-commerce since it allows the consumer to model his preferences along multiple dimensions, search for product information, and then produce the data clusters of the products retrieved to enhance his purchase decisions. This paper also discusses the implications and advantages of this approach in the development of on-line shopping environments and consumer decision aids in traditional and mobile e-commerce applications. (c) 2005 Elsevier B.V. All rights reserved.
机译:本文介绍了k-means范围算法,它是分区k-means聚类算法与众所周知的空间数据结构(即范围树)的组合,可以进行快速范围搜索。它为电子商务中的分布式交互式决策辅助工具的开发提供了实时解决方案,因为它允许消费者在多个维度上对自己的偏好进行建模,搜索产品信息,然后生成所检索产品的数据集群以增强其能力。购买决定。本文还讨论了在传统和移动电子商务应用程序中开发在线购物环境和消费者决策辅助工具时这种方法的含义和优势。 (c)2005 Elsevier B.V.保留所有权利。

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