Author:
Feng Weibing,Sun Tiantian
Abstract
AbstractThis paper addresses the current existence of attribute reduction algorithms for incomplete hybrid decision-making systems, including low attribute reduction efficiency, low classification accuracy and lack of consideration of unlabeled data types. To address these issues, this paper first redefines the weakly labeled relative neighborhood discernibility degree and develops a non-dynamic attribute reduction algorithm. In addition, this paper proposes an incremental update mechanism for weakly tagged relative neighborhood discernibility degree and introduces a new dynamic attribute reduction algorithm for increasing the set of objects based on it. Meanwhile, this paper also compares and analyses the improved algorithm proposed in this study with two existing attribute reduction algorithms using 8 data sets in the UCI database. The results show that the dynamic attribute reduction algorithm proposed in this paper achieves higher attribute reduction efficiency and classification accuracy, which further validates the effectiveness of the algorithm proposed in this paper.
Funder
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Reference37 articles.
1. Qian, Y. H., Liang, X. Y. & Wang, Q. Local rough set: A solution to rough data analysis in big data. Int. J. Approximate Reason. 97, 38–63 (2018).
2. Qian, J., Miao, D. Q. & Zhang, Z. H. Parallel attribute reduction algorithms using MapReduce. Inf. Sci. 279, 671–690 (2014).
3. Su, N., An, X. J. & Yan, C. Q. Incremental attribute reduction method based on chi-square statistics and information entropy. IEEE Access. 8, 98234–98243 (2020).
4. Hu, Q. H., Zhang, L. J. & Zhou, Y. C. Large-scale multimodality attribute reduction with multi-Kernel Fuzzy rough sets. IEEE Trans. Fuzzy Syst. 26, 226–238 (2017).
5. Liu, C. H. Covering-based multi-granulation decision theoretic rough set approaches with new strategies. J. Intell. Fuzzy Syst. 1, 1–13 (2018).