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Related families-based attribute reduction of dynamic covering decision information systems

机译:基于相关族的动态覆盖决策信息系统的属性约简

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摘要

Many efforts have focused on studying techniques for selecting most informative features from data sets. Especially, the related family-based approaches have been provided for attribute reduction of covering information systems. However, the existing related family-based methods have to recompute reducts for dynamic covering decision information systems. In this paper, firstly, we investigate the mechanisms of updating the related families and attribute reducts by the utilization of previously learned results in dynamic covering decision information systems with variations of attributes. Then, we design incremental algorithms for attribute reduction of dynamic covering decision information systems in terms of attribute arriving and leaving using the related families and employ examples to demonstrate that how to update attribute reducts with the proposed algorithms. Finally, experimental comparisons with the non-incremental algorithms on UCI data sets illustrate that the proposed incremental algorithms are feasible and efficient to conduct attribute reduction of dynamic covering decision information systems with immigration and emigration of attributes.
机译:许多努力集中于研究用于从数据集中选择大多数信息特征的技术。特别地,已经提供了基于家庭的相关方法来减少覆盖信息系统的属性。但是,现有的基于家庭的相关方法必须重新计算缩减量,以动态覆盖决策信息系统。在本文中,首先,我们研究了在属性变化的动态覆盖决策信息系统中,利用先前学习的结果来更新相关族和属性约简的机制。然后,我们使用相关族设计了用于属性覆盖到达和离开的动态覆盖决策信息系统的属性约简的增量算法,并通过实例演示了如何用提出的算法更新属性约简。最后,通过与UCI​​数据集上非增量算法的实验比较表明,所提出的增量算法在属性覆盖和属性迁移的情况下进行动态覆盖决策信息系统的属性约简是可行且有效的。

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