期刊文献+
共找到3篇文章
< 1 >
每页显示 20 50 100
带权重的定性贝叶斯网 被引量:4
1
作者 胡笑旋 杨善林 马溪骏 《小型微型计算机系统》 CSCD 北大核心 2007年第2期283-286,共4页
定性贝叶斯网使用定性的影响标记表示变量之间的影响关系,但不能表达影响力的强弱,在推理过程中容易出现不确定的结果.研究了带权重的定性贝叶斯网,权重是一个[0,1]区间内的数值,用以表达影响力的强弱,修正了推理中的运算规则,并设计了... 定性贝叶斯网使用定性的影响标记表示变量之间的影响关系,但不能表达影响力的强弱,在推理过程中容易出现不确定的结果.研究了带权重的定性贝叶斯网,权重是一个[0,1]区间内的数值,用以表达影响力的强弱,修正了推理中的运算规则,并设计了权重标杆方便专家给出权重,保持了定性贝叶斯网络建模过程的简易性,同时提高了推理精度. 展开更多
关键词 定性贝叶斯网 权重 建模
下载PDF
Handling epistemic uncertainties in PRA using evidential networks
2
作者 王冬 陈进 +1 位作者 程志君 郭波 《Journal of Central South University》 SCIE EI CAS 2014年第11期4261-4269,共9页
In order to overcome the limitations of traditional methods in uncertainty analysis, a modified Bayesian network(BN), which is called evidence network(EN), was proposed with evidence theory to handle epistemic uncerta... In order to overcome the limitations of traditional methods in uncertainty analysis, a modified Bayesian network(BN), which is called evidence network(EN), was proposed with evidence theory to handle epistemic uncertainty in probabilistic risk assessment(PRA). Fault trees(FTs) and event trees(ETs) were transformed into an EN which is used as a uniform framework to represent accident scenarios. Epistemic uncertainties of basic events in PRA were presented in evidence theory form and propagated through the network. A case study of a highway tunnel risk analysis was discussed to demonstrate the proposed approach. Frequencies of end states are obtained and expressed by belief and plausibility measures. The proposed approach addresses the uncertainties in experts' knowledge and can be easily applied to uncertainty analysis of FTs/ETs that have dependent events. 展开更多
关键词 probabilistic risk assessment epistemic uncertainty evidence theory evidential network
下载PDF
Context-aware end-to-end QoS diagnosis and guarantee based on Bayesian network
3
作者 Lin Xiangtao Cheng Bo +1 位作者 Chen Junliang Qiao Xiuquan 《High Technology Letters》 EI CAS 2012年第1期51-58,共8页
A systematic approach for end-to-end QoS qualitative diagnosis and quantitative guarantee is proposed to support quality of service (QoS) management on current Internet. An automatic unwatched discretization algorit... A systematic approach for end-to-end QoS qualitative diagnosis and quantitative guarantee is proposed to support quality of service (QoS) management on current Internet. An automatic unwatched discretization algorithm for discretizing continuous numeric-values is brought forth to reshape these QoS metrics and contexts into their discrete forms. For QoS qualitative diagnosis, causal relationships between a QoS metric and its contexts are exploited with K2 Bayesian network (BN) structure learning by treating QoS metrics and contexts as BN nodes. A QoS metric node is qualitatively diagnosed to be causally related to its parent context nodes. To guarantee QoS quantitatively, those causal relationships are next modeled quantitatively by BN parameter learning. Then, BN inference can be carried out on the BN. Finally, the QoS metric is guaranteed to a specific value with certain probability by tuning its causal contexts to suitable values suggested by the BN inference. Our approach is validated to be sound and effective by simulations on a peer-to-peer (P2P) network. 展开更多
关键词 CONTEXT context discretization quality of service (QoS) qualitative diagnosis quantitativeguarantee Bayesian network
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部