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A rough-set based incremental approach for updating attribute reduction under dynamic incomplete decision systems

机译:动态不完全决策系统下基于粗糙集的增量式属性更新方法

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Efficient attribute reduction in large-scale incomplete decision systems is a challenging problem. The computation of tolerance classes induced by the condition attributes in the incomplete decision system is a key part among all existing attribute reduction algorithms. Moreover, updating attribute reduction for dynamically-increasing decision systems has attracted much attention, in view of that incremental attribute reduction algorithms in a dynamic incomplete decision system have not yet been sufficiently discussed so far. In this paper, we first introduce a simpler way of computing tolerance classes than the classical method. Then we present an incremental attribute reduction algorithm to compute an attribute reduct for a dynamically-increasing incomplete decision system. Compared with the non-incremental algorithms, our incremental attribute reduction algorithm can compute a new attribute reduct in much shorter time. Experiments on four data sets downloaded from UCI show that the feasibility and effectiveness of the proposed incremental algorithm.
机译:大规模不完整决策系统中有效的属性约简是一个具有挑战性的问题。在不完整的决策系统中,由条件属性引起的公差等级的计算是所有现有属性约简算法中的关键部分。此外,鉴于动态不完整决策系统中的增量属性约简算法到目前为止尚未得到充分讨论,因此针对动态增长的决策系统的更新属性约简引起了广泛的关注。在本文中,我们首先介绍一种比经典方法更简单的计算公差等级的方法。然后,我们提出了一种增量属性约简算法,用于为动态增长的不完备决策系统计算属性约简。与非增量算法相比,我们的增量属性约简算法可以在更短的时间内计算出新的属性约简。从UCI下载的四个数据集的实验表明,所提增量算法的可行性和有效性。

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