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An efficient stripped cover-based accelerator for reduction of attributes in incomplete decision tables

机译:一个有效的基于剥离的,基于覆盖的加速器,用于减少不完整决策表中的属性

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Attribute reduction in incomplete decision tables plays an extremely important role in machine learning, data mining, pattern recognition, especially for experts and intelligent systems. Many different reducts have been given in the rough set approach to find a promising reduct. However, efficiently extracting a reduct from large-scale incomplete data sets is time-consuming and becomes a challenging research problem. Although researchers have spent a lot of efforts for improving the computational efficiency, most existing methods have quite high complexity and focus mostly on the positive region reduct. To accelerate the attribute reduction process, we firstly introduce in this paper a new concept of stripped covers. Then, we investigate vital properties of stripped covers as well as provide attribute significance measures. By using these measures, we propose an effective and efficient heuristic algorithm framework for fast computation of popular reduct types. It is also worthwhile to mention that our algorithm has better time complexity than existing methods. Furthermore, the performance of the proposed method is experimentally demonstrated across multiple real-world datasets and compared with the main state-of-the-art methods. The results showed that our method outperforms the compared methods in the terms of obtained reduct size, computational time and classification accuracy. (C) 2019 Elsevier Ltd. All rights reserved.
机译:不完整决策表中的属性减少在机器学习,数据挖掘,模式识别中起着极其重要的作用,特别是对于专家和智能系统而言。粗糙集方法中给出了许多不同的折减,以找到有希望的折减。但是,有效地从大规模不完整数据集中提取归约数据既耗时又成为具有挑战性的研究问题。尽管研究人员为提高计算效率付出了很多努力,但大多数现有方法都具有很高的复杂度,并且主要集中在正区域约简上。为了加速属性约简的过程,我们首先介绍了剥皮封面的新概念。然后,我们调查剥离的覆盖物的重要特性,并提供属性重要性度量。通过使用这些措施,我们提出了一种有效且高效的启发式算法框架,用于快速计算流行的还原类型。还值得一提的是,我们的算法比现有方法具有更好的时间复杂度。此外,在多个真实世界的数据集上通过实验证明了该方法的性能,并与主要的最新技术进行了比较。结果表明,在还原量,计算时间和分类准确性方面,我们的方法优于比较方法。 (C)2019 Elsevier Ltd.保留所有权利。

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