Abstract A novel incremental attribute reduction approach for dynamic incomplete decision systems
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A novel incremental attribute reduction approach for dynamic incomplete decision systems

机译:动态不完备决策系统的新型增量属性约简方法

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摘要

AbstractAttribute reduction is an important process in data mining and knowledge discovery. In dynamic data environments, the attribute reduction problem has three issues: variation of object sets, variation of attribute sets and variation of attribute values. For the first two issues, a few achievements have been made. For variation of the attribute values, current attribute reduction approaches are not efficient, because the method becomes a non-incremental or inefficient one in some cases. In order to address this, we first introduce the concept of an inconsistency degree in an incomplete decision system and prove that the attribute reduction based on the inconsistency degree is equivalent to that based on the positive region. Then, three update strategies of inconsistency degree for dynamic incomplete decision systems are provided. Finally, the framework of the incremental attribute reduction algorithm is proposed. Experiments on different data sets from UCI show the accuracy and feasibility of the proposed incremental reduction algorithms.HighlightsWe presented three update strategies for tolerance class.We proposed a framework of incremental attribute reduction algorithm.Our approach contains three update strategies for different cases.Our approach is better than the non-incremental approaches and the existing approaches.
机译: 摘要 属性约简是数据挖掘和知识发现中的重要过程。在动态数据环境中,属性约简问题具有三个问题:对象集的变化,属性集的变化和属性值的变化。对于前两个问题,已经取得了一些成就。对于属性值的变化,当前的属性约简方法效率不高,因为该方法在某些情况下变为非增量或效率低下的方法。为了解决这个问题,我们首先在一个不完整的决策系统中引入不一致度的概念,并证明基于不一致度的属性约简与基于正区域的属性约简是等效的。然后,针对动态不完全决策系统,提出了三种不一致程度的更新策略。最后,提出了增量属性约简算法的框架。来自UCI的不同数据集的实验证明了所提出的增量约简算法的准确性和可行性。 突出显示 我们为公差等级提出了三种更新策略。 我们提出了一种增量属性约简算法框架。 我们的方法包含针对不同情况的三种更新策略。 我们的方法优于非增量方法和现有方法方法。

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