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Compressed binary discernibility matrix based incremental attribute reduction algorithm for group dynamic data

机译:基于压缩的二进制可辨别矩阵基于增量属性的组动态数据

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摘要

The datasets in real-world applications often vary dynamically over time. Moreover, datasets often expand by introducing a group of data in many cases rather than a single object one by one. The traditional incremental attribute reduction approaches for a single dynamic object may not be applied to such cases. Focusing on this issue, a compressed binary discernibility matrix is introduced and an incremental attribute reduction algorithm for group dynamic data is developed. The single dynamic object and the group dynamic objects are both considered in this algorithm. According to the dynamic data is a single object or a group of objects, different branches can be chosen to update the compressed binary discernibility matrix. Thereafter, the incremental reduction result can be obtained based on the updated compressed binary discernibility matrix. The validity of this algorithm is demonstrated by simulation and experimental analysis. (C) 2019 Elsevier B.V. All rights reserved.
机译:实际应用中的数据集通常随着时间的推移而动态变化。此外,数据集通常通过在许多情况下引入一组数据而不是单个对象逐个展开。传统的单个动态对象的增量属性缩减方法可能不适用于这种情况。专注于此问题,介绍了压缩的二进制可辨别矩阵,并且开发了组动态数据的增量属性缩减算法。在该算法中考虑单个动态对象和组动态对象。根据动态数据是单个对象或一组对象,可以选择不同的分支以更新压缩的二进制辨别矩阵。此后,可以基于更新的压缩二进制辨识矩阵获得增量减少结果。通过模拟和实验分析证明了该算法的有效性。 (c)2019 Elsevier B.v.保留所有权利。

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