This work is licensed under the Creative Commons Attribution 4.0 International License.
Dempester A. P. Upper and Lower Probabilities Induced by a Multi-valued Mapping, Annals Mathematical Statistics, no. 38, pp. 325–339, 1967.DempesterA. P.Upper and Lower Probabilities Induced by a Multi-valued MappingAnnals Mathematical Statistics38325339196710.1214/aoms/1177698950Search in Google Scholar
Shafer G. A Mathematical Theory of Evidence. Princeton: Princeton University Press, pp. 133–185, 1976.ShaferG.A Mathematical Theory of EvidencePrincetonPrinceton University Press133185197610.1515/9780691214696Search in Google Scholar
Laurie Webster, Jen-Gwo Chen, Simon S. et al. Validation of Authentic Reasoning Expert Systems, Information Sciences, no. 117, pp. 19–46, 1999.WebsterLaurieChenJen-GwoSimonS.Validation of Authentic Reasoning Expert SystemsInformation Sciences1171946199910.1016/S0020-0255(99)00005-5Search in Google Scholar
Zhu Lijun, Hu Zheng, Yang Yongmin. Fault Diagnosis Based on Reasoning Integration of Rough Sets and Evidence Theory, Transactions of CSICE, vol. 25, no.1, pp. 90–95, 2007.ZhuLijunHuZhengYangYongminFault Diagnosis Based on Reasoning Integration of Rough Sets and Evidence TheoryTransactions of CSICE25190952007Search in Google Scholar
Li Yanhong, Guo Haixia. Fault Diagnosis of Mine Belt Conveyor Based on Improved DS Evidence Theory, Coal Mine Machinery, vol. 41, no. 8, pp. 174–176, 2020.LiYanhongGuoHaixiaFault Diagnosis of Mine Belt Conveyor Based on Improved DS Evidence TheoryCoal Mine Machinery4181741762020Search in Google Scholar
Jia Jin Zhang, Hen Yi Nuo, Ke Ding Lin. Risk analysis of a Bayesian network for harmful chemicals road transportation systems based on fuzzy sets and improved Dempster/Shafer (DS) evidence theory, Journal of Beijing University of Chemical Technology (Natural Science), vol. 47, no. 1, pp. 38–45, 2020.ZhangJia JinNuoHen YiLinKe DingRisk analysis of a Bayesian network for harmful chemicals road transportation systems based on fuzzy sets and improved Dempster/Shafer (DS) evidence theoryJournal of Beijing University of Chemical Technology (Natural Science)47138452020Search in Google Scholar
Pawlak Z. Rough Sets, International Journal of Computer and Information Sciences, vol. 11, no. 5, pp. 341–356, 1982.PawlakZRough SetsInternational Journal of Computer and Information Sciences115341356198210.1007/BF01001956Search in Google Scholar
Yunliang J, Congfu X, Jin G, et al. Research on Rough Set Theory Extension and Rough Reasoning, IEEE International Conference on Systems, Man and Cybernetics, Hague, pp. 5888–5893, 2004.YunliangJCongfuXJinGResearch on Rough Set Theory Extension and Rough ReasoningIEEE International Conference on Systems, Man and CyberneticsHague588858932004Search in Google Scholar
Yao Y Y, Lingras P J. Interpretations of Belief Functions in the Theory of Rough Sets, Information Sciences, no. 104, pp. 81–106, 1998.YaoY YLingrasP JInterpretations of Belief Functions in the Theory of Rough SetsInformation Sciences10481106199810.1016/S0020-0255(97)00076-5Search in Google Scholar
Skowron A, Grzymalta-Busse J. From Rough Set Theory to Evidence Theory-Advances in the Dempster-Shafer Theory of Evidence. New York: John Wiley & Sons, Inc, pp. 193–236, 1994.SkowronAGrzymalta-BusseJFrom Rough Set Theory to Evidence Theory-Advances in the Dempster-Shafer Theory of EvidenceNew YorkJohn Wiley & Sons, Inc1932361994Search in Google Scholar
Ding Han, Hou Ruichun, Ding Xiangqian. A Fault Diagnosis Method Based on Rough Set and Improved D-S Evidence Theory, Computer & Digital Engineering, vol. 47, no. 3, pp. 543–549, 2019.DingHanHouRuichunDingXiangqianA Fault Diagnosis Method Based on Rough Set and Improved D-S Evidence TheoryComputer & Digital Engineering4735435492019Search in Google Scholar
Zhang Wenxiu. The Theory and Method of Rough Sets, Beijing: Science Press, 2001.ZhangWenxiuThe Theory and Method of Rough SetsBeijingScience Press2001Search in Google Scholar
Sun Quan, Ye Xiuqing, Gu Weikang. A New Combination Rule of Evidence Theory, ACTA Electronic SINICA, vol. 28, no. 8, pp. 117–119, 2000.SunQuanYeXiuqingGuWeikangA New Combination Rule of Evidence TheoryACTA Electronic SINICA2881171192000Search in Google Scholar
Yager R R. On the D-S Framework and New Combination Rules, Information Sciences, vol. 41, no. 2, pp. 93–138, 1987.YagerR ROn the D-S Framework and New Combination RulesInformation Sciences41293138198710.1016/0020-0255(87)90007-7Search in Google Scholar
Li Bicheng, Wang Bo, Wei Jun. An Efficient Combination Rule of Evidence Theory, Journal of Data Aquisition & Processing, vol. 17, no. 1, pp. 33–36, 2002.LiBichengWangBoWeiJunAn Efficient Combination Rule of Evidence TheoryJournal of Data Aquisition & Processing17133362002Search in Google Scholar
Zhao Rongyong, Zhang Hao, Li Cuiling. The Study and Application of Discretization Model for Continuous Attribute Values in Rough Set Theory, Computer Engineering and applications, vol. 41, no.8, pp. 40–42, 91, 2005.ZhaoRongyongZhangHaoLiCuilingThe Study and Application of Discretization Model for Continuous Attribute Values in Rough Set TheoryComputer Engineering and applications4184042912005Search in Google Scholar
Xu Dong, Wang Xin, Meng Yulong, etc. A Discretization Algorithm Based on Forest Optimization Network and Variable Precision Rough Set, Journal of Northwestern Polytechnical University, vol. 38, no. 2, pp. 434–441, 2020.XuDongWangXinMengYulongA Discretization Algorithm Based on Forest Optimization Network and Variable Precision Rough SetJournal of Northwestern Polytechnical University382434441202010.1051/jnwpu/20203820434Search in Google Scholar
Yang Guang, Wu Xiaoping, Song Yexin, etc. Muli-sensor Information Fusion Fault Diagnosis Method Based on Rough Set Theory, Systems Engineering and Electronics, vol. 31, no.8, pp. 2013–2019, 2009.YangGuangWuXiaopingSongYexinMuli-sensor Information Fusion Fault Diagnosis Method Based on Rough Set TheorySystems Engineering and Electronics318201320192009Search in Google Scholar
Yang Guang, Yu Shuofeng. Synthesized fault diagnosis method reasoned from rough set-neural network and evidence theory, Concurrency Computat Pract Exper. 2018; e4944. https://doi.org/10.1002/cpe.4944.YangGuangYuShuofengSynthesized fault diagnosis method reasoned from rough set-neural network and evidence theoryConcurrency Computat Pract Exper2018e4944https://doi.org/10.1002/cpe.4944.10.1002/cpe.4944Search in Google Scholar
He You, Wang Guohong, Lu Dajin, etc. Multi-sensor Information Fusion with Applications, Beijing: Electronic Industry Press, 2000.HeYouWangGuohongLuDajinMulti-sensor Information Fusion with ApplicationsBeijingElectronic Industry Press2000Search in Google Scholar
Vesanto J, Alhoniemi E. Clustering of the Self-organizing Map, IEEE-Neural Networks, no. 11, pp. 586–598, 2000.VesantoJAlhoniemiEClustering of the Self-organizing MapIEEE-Neural Networks11586598200010.1109/72.84673118249787Search in Google Scholar