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Active Sample Selection Based Incremental Algorithm for Attribute Reduction With Rough Sets

机译:基于主动样本选择的增量式粗糙集属性约简算法

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Attribute reduction with rough sets is an effective technique for obtaining a compact and informative attribute set from a given dataset. However, traditional algorithms have no explicit provision for handling dynamic datasets where data present themselves in successive samples. Incremental algorithms for attribute reduction with rough sets have been recently introduced to handle dynamic datasets with large samples, though they have high complexity in time and space. To address the time/space complexity issue of the algorithms, this paper presents a novel incremental algorithm for attribute reduction with rough sets based on the adoption of an active sample selection process and an insight into the attribute reduction process. This algorithm first decides whether each incoming sample is useful with respect to the current dataset by the active sample selection process. A useless sample is discarded while a useful sample is selected to update a reduct. At the arrival of a useful sample, the attribute reduction process is then employed to guide how to add and/or delete attributes in the current reduct. The two processes thus constitute the theoretical framework of our algorithm. The proposed algorithm is finally experimentally shown to be efficient in time and space.
机译:使用粗糙集进行属性约简是一种从给定数据集中获取紧凑而内容丰富的属性集的有效技术。但是,传统算法没有明确的规定来处理动态数据集,数据在连续样本中呈现。尽管具有时间和空间上的高复杂度,但最近已引入了用于通过粗糙集进行属性约简的增量算法来处理具有大样本的动态数据集。为了解决算法的时间/空间复杂性问题,本文基于采用主动样本选择过程并深入了解属性约简过程,提出了一种用于粗糙集属性约简的新型增量算法。该算法首先通过活动样本选择过程来确定每个传入样本对于当前数据集是否有用。废弃无用的样本,同时选择有用的样本以更新还原。在有用样本到达时,然后使用属性缩减过程来指导如何在当前归约中添加和/或删除属性。因此,这两个过程构成了我们算法的理论框架。最后,实验证明了所提出的算法在时间和空间上都是有效的。

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