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Discovering Extended Action-Rules (System DEAR)

机译:发现扩展的动作规则(亲爱的系统)

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Action rules introduced in [3] and investigated further in [4] assume that attributes in a database are divided into two groups: stable and flexible. In general, an action rule can be constructed from two rules extracted earlier from the same database. Furthermore, we assume that these two rules describe two different decision classes and that our goal is to re-classify some objects from one of these decision classes to the other one. Flexible attributes provide a tool for making hints to a business user what changes within some values of flexible attributes are needed for a given object to re-classify this object to another decision class. In [3], we suggested what changes are needed to classification attributes listed in both rules but we did not consider situations when such an attribute is listed only in one of these rules. Also, neither in [3] nor [4] we provide a way to compute support and confidence of action rules. ! In this paper, we show how system DEAR is discovering extended action rules which give better strategies for re-classifying objects than strategies provided by action rules. Also, the confidence of extended action rules is much higher than confidence of corresponding action rules. System DEAR, implemented in KDD Laboratory at UNC-Charlotte, requires Windows 95 or higher. It does not discretize numerical attributes which means some discretization algorithm has to applied before DEAR is used.
机译:[3]中引入并在[4]中进一步调查的行动规则假设数据库中的属性分为两组:稳定灵活。通常,可以从同一数据库中提取的两个规则构建动作规则。此外,我们假设这两个规则描述了两个不同的决策类,并且我们的目标是将一些对象从这些决策类中的一个重新分类给另一个。灵活的属性提供了一种用于向业务用户制作提示的工具,对于给定对象将该对象重新将此对象重新分类到另一个决策类时,需要在某些灵活属性值中更改的工具。在[3]中,我们建议在这两个规则中列出的分类属性需要哪些更改,但是当您仅在其中一个规则中列出此类属性时,我们没有考虑情况。此外,在[3]中也不是[4]我们提供了一种计算支持和行动规则的信心的方法。 !在本文中,我们展示了系统亲爱的是发现扩展的行动规则,这为重新分类对象提供了更好的策略,而不是行动规则提供的策略。此外,扩展行动规则的信心远高于相应行动规则的置信度。亲爱的,在Unc-Charlotte在KDD实验室实施,需要Windows 95或更高版本。它不会离散化数字属性,这意味着在使用之前必须应用的一些离散化算法。

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