A Novel Robust Fuzzy Rough Set Model for Feature Selection
Yuwen Li,
Shoushui Wei,
Xing Liu,
Zhimin Zhang and
Jianxin Li
Complexity, 2021, vol. 2021, 1-12
Abstract:
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample set into several “clear†decision classes, and this data processing method makes the model sensitive to noise information when conducting feature selection. To solve this problem, this paper proposes a robust fuzzy rough set model (RS-FRS) based on representative samples. Firstly, the fuzzy membership degree of the samples is defined to reflect its fuzziness and uncertainty, and RS-FRS model is constructed to reduce the influence of the noise samples. RS-FRS model does not need to set parameters for the model in advance and can effectively reduce the complexity of the model and human intervention. On this basis, the related properties of RS-FRS model are studied, and the sample pair selection algorithm (SPS) based on RS-FRS is used for feature selection. In this paper, RS-FRS is tested and analysed on the open 12 datasets. The experimental results show that RS-FRS model proposed can effectively select the most relevant features and has certain robustness to the noise information. The proposed model has a good applicability for data processing and can effectively improve the performance of feature selection.
Date: 2021
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Persistent link: https://EconPapers.repec.org/RePEc:hin:complx:6685396
DOI: 10.1155/2021/6685396
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