Ranking Gradients in Multi-Dimensional Spaces

R. Alves, J. Ribeiro, O. Belo, Jiawei Han
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引用次数: 1

Abstract

Business organizations must pay attention to interesting changes in customer behavior in order to anticipate their needs and act accordingly with appropriated business actions. Tracking customer’s commercial paths through the products they are interested in is an essential technique to improve business and increase customer satisfaction. Data warehousing (DW) allows us to do so, giving the basic means to record every customer transaction based on the different business strategies established. Although managing such huge amounts of records may imply business advantage, its exploration, especially in a multi-dimensional space (MDS), is a nontrivial task. The more dimensions we want to explore, the more are the computational costs involved in multi-dimensional data analysis (MDA). To make MDA practical in real world business problems, DW researchers have been working on combining data cubing and mining techniques to detect interesting changes in MDS. Such changes can also be detected through gradient queries. While those studies have provided the basis for future research in MDA, just few of them points to preference query selection in MDS. Thus, not only the exploration of changes in MDS is an essential task, but also even more important is ranking most interesting gradients. In this chapter, the authors investigate how to mine and rank the most interesting changes in a MDS applying a TOP-K gradient strategy. Additionally, the authors also propose a gradient-based cubing method to evaluate interesting gradient regions in MDS. So, the challenge is to find maximum gradient regions (MGRs) that maximize the task of raking gradients in a MDS. The authors’ evaluation study demonstrates that the proposed method presents a promising strategy for ranking gradients in MDS. DOI: 10.4018/978-1-60566-748-5.ch011
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多维空间中的排序梯度
业务组织必须注意客户行为中有趣的变化,以便预测他们的需求并采取相应的业务行动。通过客户感兴趣的产品跟踪客户的商业路径是改善业务和提高客户满意度的必要技术。数据仓库(DW)允许我们这样做,它提供了基于所建立的不同业务策略记录每笔客户交易的基本手段。尽管管理如此大量的记录可能意味着业务优势,但对其进行探索,特别是在多维空间(MDS)中,是一项艰巨的任务。我们想要探索的维度越多,多维数据分析(MDA)所涉及的计算成本就越多。为了使MDA在现实世界的业务问题中实用,DW研究人员一直致力于将数据立方和挖掘技术结合起来,以检测MDS中有趣的变化。这种变化也可以通过梯度查询来检测。虽然这些研究为MDA的未来研究提供了基础,但只有少数研究指向了MDS中的偏好查询选择。因此,探索MDS的变化不仅是一项必不可少的任务,更重要的是对最有趣的梯度进行排序。在本章中,作者研究了如何使用TOP-K梯度策略挖掘MDS中最有趣的变化并对其进行排序。此外,作者还提出了一种基于梯度的立方体方法来评估MDS中感兴趣的梯度区域。因此,我们面临的挑战是找到最大梯度区域(mgr),以最大限度地在MDS中获取梯度。作者的评价研究表明,该方法是一种很有前途的梯度排序策略。DOI: 10.4018 / 978 - 1 - 60566 - 748 - 5. - ch011
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