2022
DOI: 10.1109/tkde.2020.2997039
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GBNRS: A Novel Rough Set Algorithm for Fast Adaptive Attribute Reduction in Classification

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Cited by 118 publications
(33 citation statements)
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References 41 publications
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“…This is mainly because the prediction is based solely on historical flow data. If more meteorological factors affecting the flow are considered, then the proposed method is likely to yield a more accurate prediction result; in addition, if the clustering methods and feature selection methods can be combined into the proposed method, such as that in [33] and [34], the prediction performance may be further improved.…”
Section: Discussionmentioning
confidence: 99%
“…This is mainly because the prediction is based solely on historical flow data. If more meteorological factors affecting the flow are considered, then the proposed method is likely to yield a more accurate prediction result; in addition, if the clustering methods and feature selection methods can be combined into the proposed method, such as that in [33] and [34], the prediction performance may be further improved.…”
Section: Discussionmentioning
confidence: 99%
“…Besides the gap rough set, Xia et al [50,51] have also developed a novel concept called granular ball for adaptively acquiring the information granules of samples. Furthermore, it should be emphasized that the sizes of the information granules in terms of different samples may be different.…”
Section: Granular Ball Rough Set and Attribute Reductionmentioning
confidence: 99%
“…From discussions above, a new MGRS called Triple-G MGRS (covers three different "G", i.e., neiGhborhood, Gap and Granular ball) will be developed in the context of this paper. Different from previous MGRS, our Triple-G MGRS employs the following three different information granulations: (1) a neiGhborhood [25,46,53] based parameterized information granulation; (2) a Gap [65] based data-adaptive information granulation; (3) a Granular ball [50,51] based data-adaptive information granulation. Obviously, since both parameterized information granulation and data-adaptive information granulations have been used, our Triple-G MGRS does reflect the fundamental principle of heterogeneous information granulation.…”
Section: Introductionmentioning
confidence: 99%
“…That accelerates the innovative evolution of deep learning technology, which has demonstrated the prominent achievement in widely-applied technologies, including computer vision, nature language processing and data mining [40], [42]. From the successful applications, deep learning shows obvious superiorities over conventional hand-crafted-feature-based models [3], [43]- [45]. Several Deep learning approaches [12], [19], [39] aim to improve the identification accuracy on the fundus images to diagnose DR, and design various models to support the application in computer-aided diagnosis.…”
Section: Introductionmentioning
confidence: 99%