Implementing sentinels in the TARGIT BI suite

Morten Middelfart, T. Pedersen
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引用次数: 10

Abstract

This paper describes the implementation of so-called sentinels in the TARGIT BI Suite. Sentinels are a novel type of rules that can warn a user if one or more measure changes in a multi-dimensional data cube are expected to cause a change to another measure critical to the user. Sentinels notify users based on previous observations, e.g., that revenue might drop within two months if an increase in customer problems combined with a decrease in website traffic is observed. In this paper we show how users, without any prior technical knowledge, can mine and use sentinels in the TARGIT BI Suite. We present in detail how sentinels are mined from data, and how sentinels are scored. We describe in detail how the sentinel mining algorithm is implemented in the TARGIT BI Suite, and show that our implementation is able to discover strong and useful sentinels that could not be found when using sequential pattern mining or correlation techniques. We demonstrate, through extensive experiments, that mining and usage of sentinels is feasible with good performance for the typical users on a real, operational data warehouse.
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在TARGIT BI套件中实现哨兵
本文描述了所谓的哨兵在TARGIT BI套件中的实现。哨兵是一种新型规则,如果多维数据立方体中的一个或多个度量更改可能导致对用户至关重要的另一个度量更改,它可以向用户发出警告。哨兵会根据之前的观察结果通知用户,例如,如果观察到客户问题的增加和网站流量的减少,那么收入可能会在两个月内下降。在本文中,我们展示了用户如何在没有任何先前技术知识的情况下挖掘和使用TARGIT BI套件中的哨兵。我们详细介绍了如何从数据中挖掘哨兵,以及如何对哨兵进行评分。我们详细描述了哨兵挖掘算法是如何在TARGIT BI套件中实现的,并表明我们的实现能够发现在使用顺序模式挖掘或相关技术时无法发现的强大且有用的哨兵。通过大量的实验,我们证明了哨兵的挖掘和使用对于真实的、可操作的数据仓库中的典型用户来说是可行的,并且具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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