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融合专家先验知识和单调性约束的贝叶斯网络参数学习方法 被引量:16

Bayesian network parameter learning method based on expert priori knowledge and monotonic constraints
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摘要 针对小样本集条件下的贝叶斯网络参数学习问题,提出一种融合专家先验知识和单调性约束的贝叶斯网络参数学习方法。该方法通过将专家先验知识以正态分布形式融入单调性约束的贝叶斯网络参数学习过程,进一步提高了小样本集条件下贝叶斯网络参数学习的精度和稳定性。在小样本集条件下进行仿真实验,结果表明,与其他3种主要方法相比,所提方法平均(Kullback-Leibler,KL)散度大幅降低,运行时间高于其余3种方法。综合考虑学习精度和运行时间,所提方法优于其他3种方法。将所提方法应用于燃气轮机健康状态评估,评估结果与实际状态一致,验证了方法的有效性。 Aiming at the Bayesian network parameter learning problem under the condition of the small sample set,a Bayesian network parameter learning method combining expert prior knowledge and monotonic constraints is proposed.This method integrates the expert priori knowledge into the process of parameter learning of Bayesian network with monotonic constraints in the form of normal distribution and further improves the accuracy and stability of parameter learning of Bayesian network under the condition of the small sample set.Simulation experiments are conducted under the condition of small sample sets,and the results show that compared with the other three main methods,the average Kullback-Leibler(KL)divergence is significantly reduced,and the running time is higher than the other three methods.Considering the learning accuracy and running time comprehensively,this method is superior to the other three methods mentioned above.The method is applied to the gas turbine health condition evaluation,and the result is consistent with the actual condition,which verifies the effectiveness of the method.
作者 曾强 黄政 魏曙寰 ZENG Qiang;HUANG Zheng;WEI Shuhuan(College of Power Engineering,Naval University of Engineering,Wuhan 430033,China)
出处 《系统工程与电子技术》 EI CSCD 北大核心 2020年第3期646-652,共7页 Systems Engineering and Electronics
基金 海军工程大学自然科学基金(425517K156)资助课题
关键词 贝叶斯网络 参数学习 小样本集 单调性约束 正态分布 Bayesian network parametric learning small sample set monotonic constraint normal distribution
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  • 1周海芳,赵进.基于GPU的遥感图像配准并行程序设计与存储优化[J].计算机研究与发展,2012,49(S1):281-286. 被引量:18
  • 2赵春晖,刘春红.超谱遥感图像降维方法研究现状与分析[J].中国空间科学技术,2004,24(5):28-36. 被引量:19
  • 3阮本清,韩宇平,王浩,蒋任飞.水资源短缺风险的模糊综合评价[J].水利学报,2005,36(8):906-912. 被引量:105
  • 4杨炘,王鸿冰,邢云,罗伟中.中国国际石油投资模糊数学综合评价方法[J].清华大学学报(自然科学版),2006,46(6):855-857. 被引量:13
  • 5Meng D, Sivakumar K, Kargupta H. Privacy-sensitive Bayesian net- work parameter learning[C] // Proc. of the Fourth IEEE Interna- tional Conference on Data Mining, 2004487- 490.
  • 6Friedman N. The Bayesian structural EM algorithm[C]//Proc. of the Fourteenth Annual Conference on Uncertainty in Artifi- cial Intelligence, 1998 : 125 - 133.
  • 7Lamine F B, Kalti K,Mahjoub M A. The threshold EM algo- rithm for parameter learning in Bayesian network with incom- plete data[J]. International Journal of Advanced Computer Sci- ence and Applications, 2011, 2(7) : 86 - 91.
  • 8Ramoni M, Sebastiani P. Robust learning with missing data[J]. Machine Learning Archive, 2001,45(2) :147 - 170.
  • 9Liao W H, Ji Q. Learning Bayesian network parameters under incomplete data with domain knowledge [J]. Journal Pattern Recognition, 2009,42(11) 3046 - 3056.
  • 10Feelders A. A new parameter learning method for bayesian net- works with qualitative influences[-C//Proc, of the 23rd Con- ference on Uncertainty in Artificial Intelligence, 2007:117 - 124.

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