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A NON-PARAMETER BAYESIAN CLASSIFIER FOR FACE RECOGNITION 被引量:9
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作者 Liu Qingshan Lu Hanqing Ma Songde (Nat. Lab of Pattern Recognition, Inst. of Automation, Chinese Academy of Sciences, Beijing 100080) 《Journal of Electronics(China)》 2003年第5期362-370,共9页
A non-parameter Bayesian classifier based on Kernel Density Estimation (KDE)is presented for face recognition, which can be regarded as a weighted Nearest Neighbor (NN)classifier in formation. The class conditional de... A non-parameter Bayesian classifier based on Kernel Density Estimation (KDE)is presented for face recognition, which can be regarded as a weighted Nearest Neighbor (NN)classifier in formation. The class conditional density is estimated by KDE and the bandwidthof the kernel function is estimated by Expectation Maximum (EM) algorithm. Two subspaceanalysis methods-linear Principal Component Analysis (PCA) and Kernel-based PCA (KPCA)are respectively used to extract features, and the proposed method is compared with ProbabilisticReasoning Models (PRM), Nearest Center (NC) and NN classifiers which are widely used in facerecognition systems. The experiments are performed on two benchmarks and the experimentalresults show that the KDE outperforms PRM, NC and NN classifiers. 展开更多
关键词 Kernel Density Estimation (KDE) Probabilistic Reasoning Models (PRM) Principal Component Analysis (PCA) Kernel-based PCA (KPCA) Face recognition
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Combined Fault Tree Analysis and Bayesian Network for Reliability Assessment of Marine Internal Combustion Engine
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作者 Ivana Jovanović Çağlar Karatuğ +1 位作者 Maja Perčić Nikola Vladimir 《哈尔滨工程大学学报(英文版)》 2026年第1期239-258,共20页
This paper investigates the reliability of internal marine combustion engines using an integrated approach that combines Fault Tree Analysis(FTA)and Bayesian Networks(BN).FTA provides a structured,top-down method for ... This paper investigates the reliability of internal marine combustion engines using an integrated approach that combines Fault Tree Analysis(FTA)and Bayesian Networks(BN).FTA provides a structured,top-down method for identifying critical failure modes and their root causes,while BN introduces flexibility in probabilistic reasoning,enabling dynamic updates based on new evidence.This dual methodology overcomes the limitations of static FTA models,offering a comprehensive framework for system reliability analysis.Critical failures,including External Leakage(ELU),Failure to Start(FTS),and Overheating(OHE),were identified as key risks.By incorporating redundancy into high-risk components such as pumps and batteries,the likelihood of these failures was significantly reduced.For instance,redundant pumps reduced the probability of ELU by 31.88%,while additional batteries decreased the occurrence of FTS by 36.45%.The results underscore the practical benefits of combining FTA and BN for enhancing system reliability,particularly in maritime applications where operational safety and efficiency are critical.This research provides valuable insights for maintenance planning and highlights the importance of redundancy in critical systems,especially as the industry transitions toward more autonomous vessels. 展开更多
关键词 Fault tree analysis bayesian network RELIABILITY REDUNDANCY Internal combustion engine
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A New Non-Parameter Filled Function for Global Optimization Problems 被引量:1
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作者 LIU Jin-zan QU De-qiang 《Chinese Quarterly Journal of Mathematics》 2021年第2期188-195,共8页
In the paper,to solve the global optimization problems,we propose a novel parameter-free filled function.Based on the non-parameter filled function,a new filled function algorithm is designed.In the algorithm,the sele... In the paper,to solve the global optimization problems,we propose a novel parameter-free filled function.Based on the non-parameter filled function,a new filled function algorithm is designed.In the algorithm,the selection and adjustment of parameters can be ignored by the characteristic that the filled function is parameter-free.In addition,in the region lower than the current local minimizer of the objective function,the filled function is continuously differentiable which enables any gradient descent method to be used as a local search method in the algorithm.Through numerical experiments by solving two test problems,the effectiveness of the algorithm is verified. 展开更多
关键词 Global optimization non-parameter filled function Box constraint
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基于Bayesian期望改进控制和Kriging模型的并行代理优化方法 被引量:1
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作者 杜晨 林成龙 +1 位作者 马义中 石雨葳 《计算机集成制造系统》 北大核心 2025年第4期1190-1204,共15页
针对经典期望改进策略因过于贪婪而易于陷入局部最优,以及Kriging模型十分适用于并行优化的特点,提出了基于Kriging模型和Bayesian期望改进控制的并行代理优化方法。实现过程中,Kriging模型在小样本条件下,建立输入与输出见的近似函数... 针对经典期望改进策略因过于贪婪而易于陷入局部最优,以及Kriging模型十分适用于并行优化的特点,提出了基于Kriging模型和Bayesian期望改进控制的并行代理优化方法。实现过程中,Kriging模型在小样本条件下,建立输入与输出见的近似函数关系。所提出的Bayesian期望改进控制策略充分利用Kriging模型对未试验点预测不确定性的度量能力,首先利用经典期望改进策略选取第一个试验点,并将其作为控制参考点;然后,借助所构造的控制函数更新贝叶斯期望改进控制策略,并将新增加试验点作为下个试验点选取的控制参考点。所提策略可以在提升全局探索能力的同时,使新试验点具有良好的空间分布特性。此外,借助控制函数调整方法,构建了两种拓展的Bayesian期望改进控制策略。数值算例及仿真案例结果表明:相比单点填充,Bayesian期望改进控制策略更高效;所提并行代理优化方法在同等精度条件下具有更好的稳健性及更快的收敛速度。 展开更多
关键词 期望改进策略 bayesian期望改进控制 控制函数 KRIGING模型 并行代理优化方法
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基于TOPSIS-Bayesian机场服务质量评价
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作者 李明捷 高嘉悦 《科技和产业》 2025年第2期33-38,共6页
为明确机场服务质量的影响因素及旅客对机场服务质量满意程度,提高机场服务质量,运用逼近理想解排序法(technique for order preference by similarity to an ideal solution,TOPSIS)与贝叶斯网络结合的评估模型,建立大型运输机场服务... 为明确机场服务质量的影响因素及旅客对机场服务质量满意程度,提高机场服务质量,运用逼近理想解排序法(technique for order preference by similarity to an ideal solution,TOPSIS)与贝叶斯网络结合的评估模型,建立大型运输机场服务质量评价指标体系。运用双向推理诊断模型评价机场服务质量,对机场满意度正向推理以及影响指标的反向敏感性诊断。对旅客机场服务质量满意度以及影响因素进行深入研究,并以某大型运输机场为例验证方法的可行性。研究结果表明,旅客对该机场的服务质量满意概率为0.67,一般满意概率为0.21。反向诊断得到行李提取系统、进出机场综合交通与城市连接的便利性、安检服务效率等影响因素敏感性较高。为机场科学制定提升服务质量措施提供理论基础。 展开更多
关键词 运输机场 服务质量 旅客满意度 TOPSIS 贝叶斯网络
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基于Bayesian-Bagging-XGBoost算法的GFRP增强混凝土柱轴向承载力预测
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作者 唐培根 李小亮 +2 位作者 何鑫 马国辉 张祥 《复合材料科学与工程》 北大核心 2025年第9期98-109,共12页
由于钢筋与玻璃纤维增强聚合物(Glass Fiber Reinforced Polymer,GFRP)筋力学特性的差异,GFRP筋增强混凝土柱轴压承载力计算不能简单套用钢筋混凝土柱计算方法。为提高GFRP筋增强混凝土柱轴压承载力预测模型的准确性,以253组试验数据作... 由于钢筋与玻璃纤维增强聚合物(Glass Fiber Reinforced Polymer,GFRP)筋力学特性的差异,GFRP筋增强混凝土柱轴压承载力计算不能简单套用钢筋混凝土柱计算方法。为提高GFRP筋增强混凝土柱轴压承载力预测模型的准确性,以253组试验数据作为极限梯度提升(XGBoost)算法建模的数据基础,并采用Bayesian优化算法、Bagging算法对XGBoost算法进行了优化,以提高模型的预测精度、稳定性和训练效率。采用决定系数(R^(2))、平均绝对误差(MAE)和相对根均方误差(RRSE)等指标对模型进行评价,并将其与现有预测模型进行对比分析。研究发现,Bayesian优化算法和Bagging算法可有效提高模型的训练效率、预测精度。所提出的Bayesian-Bagging-XGBoost模型的R^(2),MAE,RRSE值分别为0.6916,418.1629,0.5553,远优于现有预测模型指标,可为GFRP筋增强混凝土柱的工程应用提供更加准确的参考。 展开更多
关键词 bayesian优化 XGBoost算法 GFRP增强混凝土柱 轴向承载力 预测
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双层耦合非参数Bayesian的遥感图像时空反射率融合
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作者 陈楠 张标 +1 位作者 杨楠 刘洲洲 《测绘通报》 北大核心 2025年第9期45-50,共6页
随着遥感技术的快速发展,获取同时具备高空间和高时间分辨率的遥感图像成为研究热点。传统单一光学传感器因条带宽度与重访周期限制,难以同时满足这两种需求。遥感图像时空反射率融合技术通过结合精细空间分辨率但采集频率低的图像与粗... 随着遥感技术的快速发展,获取同时具备高空间和高时间分辨率的遥感图像成为研究热点。传统单一光学传感器因条带宽度与重访周期限制,难以同时满足这两种需求。遥感图像时空反射率融合技术通过结合精细空间分辨率但采集频率低的图像与粗空间分辨率但采集频率高的图像,有效解决了这一问题。本文提出了一种基于双层时空融合框架的方法,该框架结合跨分辨率注意力机制和非参数Bayesian动态字典学习机制,旨在生成兼具高空间和高时间分辨率的融合图像。试验结果表明,该方法在物候变化和地物突变区域均表现出较高的融合精度和稳健性,相比现有方法能更好地保留光谱信息和空间细节。 展开更多
关键词 遥感图像融合 时空反射率融合 跨分辨率注意力机制 非参数bayesian
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Bayesian Non-Parametric Mixture Model with Application to Modeling Biological Markers
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作者 Mercy K. Peter Levi Mbugua Anthony Wanjoya 《Journal of Data Analysis and Information Processing》 2019年第4期141-152,共12页
The effect of treatment on patient’s outcome can easily be determined through the impact of the treatment on biological events. Observing the treatment for patients for a certain period of time can help in determinin... The effect of treatment on patient’s outcome can easily be determined through the impact of the treatment on biological events. Observing the treatment for patients for a certain period of time can help in determining whether there is any change in the biomarker of the patient. It is important to study how the biomarker changes due to treatment and whether for different individuals located in separate centers can be clustered together since they might have different distributions. The study is motivated by a Bayesian non-parametric mixture model, which is more flexible when compared to the Bayesian Parametric models and is capable of borrowing information across different centers allowing them to be grouped together. To this end, this research modeled Biological markers taking into consideration the Surrogate markers. The study employed the nested Dirichlet process prior, which is easily peaceable on different distributions for several centers, with centers from the same Dirichlet process component clustered automatically together. The study sampled from the posterior by use of Markov chain Monte carol algorithm. The model is illustrated using a simulation study to see how it performs on simulated data. Clearly, from the simulation study it was clear that, the model was capable of clustering data into different clusters. 展开更多
关键词 bayesian non-parametRIC Nested DIRICHLET PROCESS Biomarker Clustering Surrogate MARKERS DIRICHLET PROCESS Markov Chain MONTE Carlo
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A Robust GNSS Navigation Filter Based on Maximum Correntropy Criterion with Variational Bayesian for Adaptivity 被引量:1
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作者 Dah-Jing Jwo Yi Chang Ta-Shun Cho 《Computer Modeling in Engineering & Sciences》 2025年第3期2771-2789,共19页
In this paper,an advanced satellite navigation filter design,referred to as the Variational Bayesian Maximum Correntropy Extended Kalman Filter(VBMCEKF),is introduced to enhance robustness and adaptability in scenario... In this paper,an advanced satellite navigation filter design,referred to as the Variational Bayesian Maximum Correntropy Extended Kalman Filter(VBMCEKF),is introduced to enhance robustness and adaptability in scenarios with non-Gaussian noise and heavy-tailed outliers.The proposed design modifies the extended Kalman filter(EKF)for the global navigation satellite system(GNSS),integrating the maximum correntropy criterion(MCC)and the variational Bayesian(VB)method.This adaptive algorithm effectively reduces non-line-of-sight(NLOS)reception contamination and improves estimation accuracy,particularly in time-varying GNSS measurements.Experimental results show that the proposed method significantly outperforms conventional approaches in estimation accuracy under heavy-tailed outliers and non-Gaussian noise.By combining MCC with VB approximation for real-time noise covariance estimation using fixed-point iteration,the VBMCEKF achieves superior filtering performance in challenging GNSS conditions.The method’s adaptability and precision make it ideal for improving satellite navigation performance in stochastic environments. 展开更多
关键词 Maximum correntropy criterion variational bayesian extended Kalman filter GNSS
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Enhancing reliability in photonuclear cross-section fitting with Bayesian neural networks 被引量:1
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作者 Qian-Kun Sun Yue Zhang +8 位作者 Zi-Rui Hao Hong-Wei Wang Gong-Tao Fan Hang-Hua Xu Long-Xiang Liu Sheng Jin Yu-Xuan Yang Kai-Jie Chen Zhen-Wei Wang 《Nuclear Science and Techniques》 2025年第3期146-156,共11页
This study investigates photonuclear reaction(γ,n)cross-sections using Bayesian neural network(BNN)analysis.After determining the optimal network architecture,which features two hidden layers,each with 50 hidden node... This study investigates photonuclear reaction(γ,n)cross-sections using Bayesian neural network(BNN)analysis.After determining the optimal network architecture,which features two hidden layers,each with 50 hidden nodes,training was conducted for 30,000 iterations to ensure comprehensive data capture.By analyzing the distribution of absolute errors positively correlated with the cross-section for the isotope 159Tb,as well as the relative errors unrelated to the cross-section,we confirmed that the network effectively captured the data features without overfitting.Comparison with the TENDL-2021 Database demonstrated the BNN's reliability in fitting photonuclear cross-sections with lower average errors.The predictions for nuclei with single and double giant dipole resonance peak cross-sections,the accurate determination of the photoneutron reaction threshold in the low-energy region,and the precise description of trends in the high-energy cross-sections further demonstrate the network's generalization ability on the validation set.This can be attributed to the consistency of the training data.By using consistent training sets from different laboratories,Bayesian neural networks can predict nearby unknown cross-sections based on existing laboratory data,thereby estimating the potential differences between other laboratories'existing data and their own measurement results.Experimental measurements of photonuclear reactions on the newly constructed SLEGS beamline will contribute to clarifying the differences in cross-sections within the existing data. 展开更多
关键词 Photoneutron reaction bayesian neural network Machine learning Gamma source SLEGS
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Bayesian-optimized lithology identification via visible and near-infrared spectral data analysis 被引量:1
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作者 Zhenhao Xu Shan Li +2 位作者 Peng Lin Hang Xiang Qianji Li 《Intelligent Geoengineering》 2025年第1期1-13,共13页
Bayesian-optimized lithology identification has important basic geological research significance and engineering application value,and this paper proposes a Bayesian-optimized lithology identification method based on ... Bayesian-optimized lithology identification has important basic geological research significance and engineering application value,and this paper proposes a Bayesian-optimized lithology identification method based on machine learning of rock visible and near-infrared spectral data.First,the rock spectral data are preprocessed using Savitzky-Golay(SG)smoothing to remove the noise of the spectral data;then,the preprocessed rock spectral data are downscaled using Principal Component Analysis(PCA)to reduce the redundancy of the data,optimize the effective discriminative information,and obtain the rock spectral features;finally,a Bayesian-optimized lithology identification model is established based on rock spectral features,optimize the model hyperparameters using Bayesian optimization(BO)algorithm to avoid the combination of hyperparameters falling into the local optimal solution,and output the predicted type of rock,so as to realize the Bayesian-optimized lithology identification.In addition,this paper conducts comparative analysis on models based on Artificial Neural Network(ANN)/Random Forest(RF),dimensionality reduction/full band,and optimization algorithms.It uses the confusion matrix,accuracy,Precison(P),Recall(R)and F_(1)values(F_(1))as the evaluation indexes of model accuracy.The results indicate that the lithology identification model optimized by the BO-ANN after dimensionality reduction achieves an accuracy of up to 99.80%,up to 99.79%and up to 99.79%.Compared with the BO-RF model,it has higher identification accuracy and better stability for each type of rock identification.The experiments and reliability analysis show that the Bayesian-optimized lithology identification method proposed in this paper has good robustness and generalization performance,which is of great significance for realizing fast,accurate and Bayesian-optimized lithology identification in tunnel site. 展开更多
关键词 Lithology identification Rock spectral HYPERSPECTRAL Artificial neural networks bayesian optimization
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Deep Velocity Structure and Tectonic Characteristics of the Pamir Plateau based on Bayesian Inversion 被引量:1
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作者 HAILAI Muguo LIANG Feng +5 位作者 HAN Chen Davlatkhudzha MURODOV FANG Lihua Sherzod ABDULOV YAN Jiayong AN Yanru 《Acta Geologica Sinica(English Edition)》 2025年第6期1556-1574,共19页
The Pamir Plateau,at the northwestern margin of the Tibetan Plateau,is a key region for investigating continental collision and plateau uplifting.To probe its deep structure,we collected seismic data from 263 stations... The Pamir Plateau,at the northwestern margin of the Tibetan Plateau,is a key region for investigating continental collision and plateau uplifting.To probe its deep structure,we collected seismic data from 263 stations across 11 research projects.We applied cross-correlation to noise data and extracted surface wave dispersion data from cross-correlation functions.The extracted dispersion data were subsequently inverted using a 3-D transdimensional Bayesian inversion method(rj-3 DMcMC).The inversion result reveals several crustal low-velocity zones(LVZs).Their formation is likely related to crustal thickening,the exposure of gneiss domes,and thicker sedimentary sequences compared to surrounding areas.In the lower crust and upper mantle,the LVZs in southern Pamir and southeastern Karakoram evolve into high-velocity zones,which expand northeastward with increasing depth.This suggests northward underthrusting of the Indian Plate.We also analyzed the Moho using both the standard deviation of S-wave velocity and the S-wave velocity structure.Results show that significant variations in velocity standard deviation reliably delineate the Moho interface. 展开更多
关键词 ambient noise tomography bayesian inversion crust and mantle structure Western Himalayan syntaxis
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基于冲突代价Bayesian权重的改进PBS多智能体路径规划算法
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作者 钱诚泽 毛剑琳 +3 位作者 李睿褀 周雯娜 龚德正 张进宝 《电子学报》 北大核心 2025年第7期2358-2371,共14页
面向多智能体路径寻找(Multi-Agent Path Finding,MAPF)问题,基于优先级搜索(Priority-Based Search,PBS)算法融合了优先级机制和冲突搜索(Conflict-Based Search,CBS)的节点拓展框架,在路径规划效率方面具有显著优势.然而,PBS算法中对... 面向多智能体路径寻找(Multi-Agent Path Finding,MAPF)问题,基于优先级搜索(Priority-Based Search,PBS)算法融合了优先级机制和冲突搜索(Conflict-Based Search,CBS)的节点拓展框架,在路径规划效率方面具有显著优势.然而,PBS算法中对路径代价优先的贪婪机制会导致算法在优先级树(Priority Tree,PT)拓展过程中冲突消减速度慢.因此,本文提出基于冲突代价Bayesian权重的改进PBS算法IPBS-ccbw(Improved Priority-Based Search with conflict cost bayesian weight).在路径代价的基础上,引入冲突数量构造了基于路径代价和冲突数量的综合指标,并在规划拓展时对子节点的冲突代价权重进行Bayesian更新,以此在冲突数量与路径代价之间进行有效权衡.进一步设计了冲突数据监测和策略性重构机制,避免算法在特定分支上陷入深度搜索陷阱.在Benchmark标准测试地图上的仿真对比实验以及小规模实物实验的结果显示,IPBS-ccbw算法在不同环境下均展现出优越的路径优化能力.与PBS算法相比,在大规模密集场景中,IPBS-ccbw算法展现出更强的冲突消减能力和更高的求解效率.其求解时间可减少27.3%~91.9%,在智能体数量达到最大值时,求解成功率提升幅度可达40%~85%. 展开更多
关键词 多智能体 路径规划 贝叶斯更新 动态权重 冲突消减
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面向运动想象脑电分类的BayesianGCN算法研究
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作者 李亚茹 张悦 +2 位作者 马琛 赵路清 郭一娜 《太原科技大学学报》 2025年第2期113-119,共7页
为了提升运动想象脑机接口任务分类的准确性,充分利用脑电信号的时空特性,构建了贝叶斯图卷积网络。将贝叶斯算法嵌入图卷积神经网络,对网络中的权重进行概率建模,使得贝叶斯图卷积网络能够根据输入信号动态调整权重,以更好地适应不同... 为了提升运动想象脑机接口任务分类的准确性,充分利用脑电信号的时空特性,构建了贝叶斯图卷积网络。将贝叶斯算法嵌入图卷积神经网络,对网络中的权重进行概率建模,使得贝叶斯图卷积网络能够根据输入信号动态调整权重,以更好地适应不同的信号特性,提高模型的分类准确性,泛化性和可解释性。该模型在两个公开脑机接口竞赛数据集上取得的平均分类准确率分别可达97.20%和95.17%,Kappa系数分别可达0.967 9和0.940 0.实验结果表明该方法能有效提高运动想象任务分类精度,且具有较好的泛化性和可解释性。 展开更多
关键词 脑机接口 运动想象 贝叶斯算法 图卷积网络
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A two-step variational Bayesian Monte Carlo approach for model updating under observation uncertainty
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作者 Yanhe Tao Qintao Guo +2 位作者 Jin Zhou Jiaqian Ma Wenxing Ge 《Acta Mechanica Sinica》 2025年第5期175-189,共15页
Engineering tests can yield inaccurate data due to instrument errors,human factors,and environmental interference,introducing uncertainty in numerical model updating.This study employs the probability-box(p-box)method... Engineering tests can yield inaccurate data due to instrument errors,human factors,and environmental interference,introducing uncertainty in numerical model updating.This study employs the probability-box(p-box)method for representing observational uncertainty and develops a two-step approximate Bayesian computation(ABC)framework using time-series data.Within the ABC framework,Euclidean and Bhattacharyya distances are employed as uncertainty quantification metrics to delineate approximate likelihood functions in the initial and subsequent steps,respectively.A novel variational Bayesian Monte Carlo method is introduced to efficiently apply the ABC framework amidst observational uncertainty,resulting in rapid convergence and accurate parameter estimation with minimal iterations.The efficacy of the proposed updating strategy is validated by its application to a shear frame model excited by seismic wave and an aviation pump force sensor for thermal output analysis.The results affirm the efficiency,robustness,and practical applicability of the proposed method. 展开更多
关键词 Model updating Approximate bayesian computation Observation uncertainty Bhattacharyya distance Thermal output Variational bayesian
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Continuous Bayesian probability estimator in predictions of nuclear charge radii
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作者 Jian Liu Kai-Zhong Tan +4 位作者 Lei Wang Wan-Qing Gao Tian-Shuai Shang Jian Li Chang Xu 《Nuclear Science and Techniques》 2025年第11期283-293,共11页
Recently,machine learning has become a powerful tool for predicting nuclear charge radius RC,providing novel insights into complex physical phenomena.This study employs a continuous Bayesian probability(CBP)estimator ... Recently,machine learning has become a powerful tool for predicting nuclear charge radius RC,providing novel insights into complex physical phenomena.This study employs a continuous Bayesian probability(CBP)estimator and Bayesian model averaging(BMA)to optimize the predictions of RCfrom sophisticated theoretical models.The CBP estimator treats the residual between the theoretical and experimental values of RCas a continuous variable and derives its posterior probability density function(PDF)from Bayesian theory.The BMA method assigns weights to models based on their predictive performance for benchmark nuclei,thereby accounting for the unique strengths of each model.In global optimization,the CBP estimator improved the predictive accuracy of the three theoretical models by approximately 60%.The extrapolation analyses consistently achieved an improvement rate of approximately 45%,demonstrating the robustness of the CBP estimator.Furthermore,the combination of the CBP and BMA methods reduces the standard deviation to below 0.02 fm,effectively reproducing the pronounced shell effects on RCof the Ca and Sr isotope chains.The studies in this paper propose an efficient method to accurately describe RCof unknown nuclei,with potential applications in research on other nuclear properties. 展开更多
关键词 Machine learning Nuclear charge radii Continuous bayesian probability estimator bayesian model averaging
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Hybrid quantum–classical multi-agent decision-making framework based on hierarchical Bayesian networks in the noisy intermediate-scale quantum era
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作者 Hao Shi Chenghao Han +1 位作者 Peng Wang Ming Zhang 《Chinese Physics B》 2025年第12期61-74,共14页
Although quantum Bayesian networks provide a promising paradigm for multi-agent decision-making,their practical application faces two challenges in the noisy intermediate-scale quantum(NISQ)era.Limited qubit resources... Although quantum Bayesian networks provide a promising paradigm for multi-agent decision-making,their practical application faces two challenges in the noisy intermediate-scale quantum(NISQ)era.Limited qubit resources restrict direct application to large-scale inference tasks.Additionally,no quantum methods are currently available for multi-agent collaborative decision-making.To address these,we propose a hybrid quantum–classical multi-agent decision-making framework based on hierarchical Bayesian networks,comprising two novel methods.The first one is a hybrid quantum–classical inference method based on hierarchical Bayesian networks.It decomposes large-scale hierarchical Bayesian networks into modular subnetworks.The inference for each subnetwork can be performed on NISQ devices,and the intermediate results are converted into classical messages for cross-layer transmission.The second one is a multi-agent decision-making method using the variational quantum eigensolver(VQE)in the influence diagram.This method models the collaborative decision-making with the influence diagram and encodes the expected utility of diverse actions into a Hamiltonian and subsequently determines the intra-group optimal action efficiently.Experimental validation on the IonQ quantum simulator demonstrates that the hierarchical method outperforms the non-hierarchical method at the functional inference level,and the VQE method can obtain the optimal strategy exactly at the collaborative decision-making level.Our research not only extends the application of quantum computing to multi-agent decision-making but also provides a practical solution for the NISQ era. 展开更多
关键词 quantum bayesian networks multi-agent decision-making hybrid quantum–classical algorithms hierarchical bayesian networks
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Spatio-Temporal Pattern and Socio-economic Influencing Factors of Tuberculosis Incidence in Guangdong Province:A Bayesian Spatiotemporal Analysis
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作者 Huizhong Wu Xing Li +7 位作者 Jiawen Wang Ronghua Jian Jianxiong Hu Yijun Hu Yiting Xu Jianpeng Xiao Aiqiong Jin Liang Chen 《Biomedical and Environmental Sciences》 2025年第7期819-828,共10页
Objective To investigate the spatiotemporal patterns and socioeconomic factors influencing the incidence of tuberculosis(TB)in the Guangdong Province between 2010 and 2019.Method Spatial and temporal variations in TB ... Objective To investigate the spatiotemporal patterns and socioeconomic factors influencing the incidence of tuberculosis(TB)in the Guangdong Province between 2010 and 2019.Method Spatial and temporal variations in TB incidence were mapped using heat maps and hierarchical clustering.Socioenvironmental influencing factors were evaluated using a Bayesian spatiotemporal conditional autoregressive(ST-CAR)model.Results Annual incidence of TB in Guangdong decreased from 91.85/100,000 in 2010 to 53.06/100,000in 2019.Spatial hotspots were found in northeastern Guangdong,particularly in Heyuan,Shanwei,and Shantou,while Shenzhen,Dongguan,and Foshan had the lowest rates in the Pearl River Delta.The STCAR model showed that the TB risk was lower with higher per capita Gross Domestic Product(GDP)[Relative Risk(RR),0.91;95%Confidence Interval(CI):0.86–0.98],more the ratio of licensed physicians and physician(RR,0.94;95%CI:0.90-0.98),and higher per capita public expenditure(RR,0.94;95%CI:0.90–0.97),with a marginal effect of population density(RR,0.86;95%CI:0.86–1.00).Conclusion The incidence of TB in Guangdong varies spatially and temporally.Areas with poor economic conditions and insufficient healthcare resources are at an increased risk of TB infection.Strategies focusing on equitable health resource distribution and economic development are the key to TB control. 展开更多
关键词 TUBERCULOSIS bayesian Social-economic factor Spatio-temporal model
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Projections of esophageal cancer incidence trend in Jiangsu Province,China:a Bayesian modeling study
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作者 Weigang Miao Yuanyuan Feng +4 位作者 Bijia Jiang Yanan Wan Xikang Fan Renqiang Han Jinyi Zhou 《Journal of the National Cancer Center》 2025年第2期149-155,共7页
Objective:Esophageal cancer has made a great contribution to the cancer burden in Jiangsu Province,East China.This study was aimed at reporting esophageal cancer incidence trend in 2009-2019 and its prediction to 2030... Objective:Esophageal cancer has made a great contribution to the cancer burden in Jiangsu Province,East China.This study was aimed at reporting esophageal cancer incidence trend in 2009-2019 and its prediction to 2030.Methods:The burden of esophageal cancer in Jiangsu in 2019 was estimated using 54 cancer registries’data selected from Jiangsu Cancer Registry.Incident cases of 16 cancer registries were applied for the temporal trend from 2009 to 2019.The burden of esophageal cancer by 2030 was projected using the Bayesian age-period-cohort(BAPC)model.Results:About 24,886 new cases of esophageal cancer(17,233 males and 7,653 females)occurred in Jiangsu in 2019.Rural regions of Jiangsu had the highest incidence rate.The age-standardized incidence rate(ASIR,per 100,000 population)of esophageal cancer in Jiangsu decreased from 27.72 per 100,000 in 2009 to 14.18 per 100,000 in 2019.The BAPC model showed that the ASIR would decline from 13.01 per 100,000 in 2020 to 4.88 per 100,000 in 2030.Conclusions:According to the data,esophageal cancer incidence rates were predicted to decline until 2030,yet the disease burden is still significant in Jiangsu.The existing approaches to prevention and control are effective and need to be maintained. 展开更多
关键词 Esophageal cancer INCIDENCE bayesian method PREDICTION
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Bayesian-based Full Waveform Inversion
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作者 Huai-shan Liu Yu-zhao Lin +2 位作者 Lei Xing He-hao Tang Jing-hao Li 《Applied Geophysics》 2025年第1期1-11,231,共12页
Full waveform inversion methods evaluate the properties of subsurface media by minimizing the misfit between synthetic and observed data.However,these methods omit measurement errors and physical assumptions in modeli... Full waveform inversion methods evaluate the properties of subsurface media by minimizing the misfit between synthetic and observed data.However,these methods omit measurement errors and physical assumptions in modeling,resulting in several problems in practical applications.In particular,full waveform inversion methods are very sensitive to erroneous observations(outliers)that violate the Gauss–Markov theorem.Herein,we propose a method for addressing spurious observations or outliers.Specifically,we remove outliers by inverting the synthetic data using the local convexity of the Gaussian distribution.To achieve this,we apply a waveform-like noise model based on a specific covariance matrix definition.Finally,we build an inversion problem based on the updated data,which is consistent with the wavefield reconstruction inversion method.Overall,we report an alternative optimization inversion problem for data containing outliers.The proposed method is robust because it uses uncertainties.This method enables accurate inversion,even when based on noisy models or a wrong wavelet. 展开更多
关键词 INVERSION bayesian inference theory covariance matrix
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