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Anti-symmetric sampled grating quantum cascade laser for mode selection
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作者 郭强强 张锦川 +6 位作者 程凤敏 卓宁 翟慎强 刘俊岐 王利军 刘舒曼 刘峰奇 《Chinese Physics B》 SCIE EI CAS CSCD 2023年第3期270-275,共6页
For mode selection in a quantum cascade laser(QCL),we demonstrate an anti-symmetric sampled grating(ASG).The wavelength of the-1-th mode of this laser has been blue-shifted more than 75 nm(~10 cm^(-1))compared with th... For mode selection in a quantum cascade laser(QCL),we demonstrate an anti-symmetric sampled grating(ASG).The wavelength of the-1-th mode of this laser has been blue-shifted more than 75 nm(~10 cm^(-1))compared with that of an ordinary sampled grating laser with an emission wavelength of approximately 8.6μm,when the periodicities within both the base grating and the sample grating are kept constant.Under this condition,an improvement in the continuous tuning capability of the QCL array is ensured.The ASG structure is fabricated in holographic exposure and optical photolithography,thereby enhancing its flexibility,repeatability,and cost-effectiveness.The wavelength modulation capability of the two channels of the grating is insensitive to the variations in channel size,assuming that the overall waveguide width remains constant.The output wavelength can be tailored freely within a certain range by adjusting the width of the ridge and the material of the cladding layer. 展开更多
关键词 sample grating tilted grating quantum cascade laser mode selection
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基于主客观环流分型的强降水数值预报MODE检验方法及其在2019年暖季东北地区的应用
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作者 齐铎 崔晓鹏 +4 位作者 陈力强 黄丽君 刘松涛 卜文惠 王承伟 《大气科学》 CSCD 北大核心 2024年第3期1113-1130,共18页
本文构建了基于主客观环流分型的强降水数值预报空间检验(MODE)方法框架,并利用该框架对欧洲中期天气预报中心全球模式(ECMWF)和中国气象局区域中尺度数值天气预报模式(CMA_MESO)的2019年暖季东北地区强降水预报进行检验。结果表明,201... 本文构建了基于主客观环流分型的强降水数值预报空间检验(MODE)方法框架,并利用该框架对欧洲中期天气预报中心全球模式(ECMWF)和中国气象局区域中尺度数值天气预报模式(CMA_MESO)的2019年暖季东北地区强降水预报进行检验。结果表明,2019年暖季东北地区54个强降水日的环流型可分为:西风槽型(15个)、副热带高压影响型(13个)、急流型(5个)、西部(12个)和东部冷涡型(9个)。其中,西风槽型和急流型以区域性强降水为主,模式对其强降水发生与否的预报能力强,TS评分较高;西部、东部冷涡型强降水的局地性强,模式对其强降水发生与否的预报能力差,TS评分低;副热带高压影响型也以区域性强降水为主,模式对其强降水发生与否的预报能力也比较强,但是对其强降水质心位置、强度、面积等属性预报偏差较大,TS评分也相对较低。另外,从两种模式预报性能对比看,CMA_MESO强降水强度和面积预报较实况普遍偏强,虽然其预报的TS评分一般高于ECMWF,但其对强降水预报的空报率也都比ECMWF大,对强降水的属性预报偏差一致性一般也低于ECMWF,其预报的可订正性整体上不及ECMWF。 展开更多
关键词 主客观融合环流分型 东北冷涡客观识别 强降水 数值预报 mode检验
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Fuzzy BC-k-modes:一种分类矩阵对象数据的聚类算法
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作者 李顺勇 余曼 王改变 《计算机应用与软件》 北大核心 2023年第1期287-297,共11页
传统的聚类算法主要对具有单值属性的数据进行聚类研究,针对矩阵对象数据的研究较少,提出一种新的fuzzy between-cluster k-modes(简称Fuzzy BC-k-modes)聚类算法。在Fuzzy BC-k-modes算法中,采用增加簇间信息(不同类中的对象到其他类... 传统的聚类算法主要对具有单值属性的数据进行聚类研究,针对矩阵对象数据的研究较少,提出一种新的fuzzy between-cluster k-modes(简称Fuzzy BC-k-modes)聚类算法。在Fuzzy BC-k-modes算法中,采用增加簇间信息(不同类中的对象到其他类中心的距离)去修正目标函数,在对修正的目标函数寻求局部最优解时,提出隶属度矩阵的更新公式。最后,在四个真实数据集上验证了Fuzzy BC-k-modes算法的有效性,并且分析了模糊因子与隶属度间的关系。 展开更多
关键词 簇间信息 分类矩阵对象数据 聚类 Fuzzy BC-k-modes算法
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Signal classification method based on data mining formulti-mode radar 被引量:9
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作者 qiang guo pulong nan jian wan 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第5期1010-1017,共8页
For the multi-mode radar working in the modern electronicbattlefield, different working states of one single radar areprone to being classified as multiple emitters when adoptingtraditional classification methods to p... For the multi-mode radar working in the modern electronicbattlefield, different working states of one single radar areprone to being classified as multiple emitters when adoptingtraditional classification methods to process intercepted signals,which has a negative effect on signal classification. A classificationmethod based on spatial data mining is presented to address theabove challenge. Inspired by the idea of spatial data mining, theclassification method applies nuclear field to depicting the distributioninformation of pulse samples in feature space, and digs out thehidden cluster information by analyzing distribution characteristics.In addition, a membership-degree criterion to quantify the correlationamong all classes is established, which ensures classificationaccuracy of signal samples. Numerical experiments show that thepresented method can effectively prevent different working statesof multi-mode emitter from being classified as several emitters,and achieve higher classification accuracy. 展开更多
关键词 multi-mode radar signal classification data mining nuclear field cloud model membership.
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Exploring the Sample Quality Using Rough Sets Theory for the Supervised Classification of Remotely Sensed Imagery 被引量:1
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作者 GE Yong BAI Hexiang +1 位作者 LI Sanping LI Deyu 《Geo-Spatial Information Science》 2008年第2期95-102,共8页
在遥远地察觉到的形象的监督分类进程,样品的数量是象过去常评估图象分类的钥匙一样影响图象分类的精确性的重要因素之一。一般来说,样品根据优先的知识,经验和更高的分辨率图象被获得。与样品和一样的采样模型的一样的尺寸,训练样... 在遥远地察觉到的形象的监督分类进程,样品的数量是象过去常评估图象分类的钥匙一样影响图象分类的精确性的重要因素之一。一般来说,样品根据优先的知识,经验和更高的分辨率图象被获得。与样品和一样的采样模型的一样的尺寸,训练样本数据的几个集合能被获得。在这,集合,集合反映它完善光谱特征并且保证仅仅在分类的精确性被估计了以后,分类的精确性能被知道。在分类前,为指导并且优化作为结果的分类过程测量并且估计样品的质量将因此是有意义的研究。基于不平的集合,然后,为样品质量的一个新测量索引被建议。实验数据在 1999 年 8 月 8 日是中国黄河三角洲的陆地卫星 TM 形象。实验比较 Bhattacharrya 距离矩阵和纯净索引 &#916; 和 &#916; <SUB > X </SUB > 在样品质量上基于 5 样品数据并且也的不平的集合理论分析它的效果。 展开更多
关键词 监视分级 样品质量 测绘技术 遥控技术
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MCBC-SMOTE:A Majority Clustering Model for Classification of Imbalanced Data
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作者 Jyoti Arora Meena Tushir +4 位作者 Keshav Sharma Lalit Mohan Aman Singh Abdullah Alharbi Wael Alosaimi 《Computers, Materials & Continua》 SCIE EI 2022年第12期4801-4817,共17页
Datasets with the imbalanced class distribution are difficult to handle with the standard classification algorithms.In supervised learning,dealing with the problem of class imbalance is still considered to be a challe... Datasets with the imbalanced class distribution are difficult to handle with the standard classification algorithms.In supervised learning,dealing with the problem of class imbalance is still considered to be a challenging research problem.Various machine learning techniques are designed to operate on balanced datasets;therefore,the state of the art,different undersampling,over-sampling and hybrid strategies have been proposed to deal with the problem of imbalanced datasets,but highly skewed datasets still pose the problem of generalization and noise generation during resampling.To overcome these problems,this paper proposes amajority clusteringmodel for classification of imbalanced datasets known as MCBC-SMOTE(Majority Clustering for balanced Classification-SMOTE).The model provides a method to convert the problem of binary classification into a multi-class problem.In the proposed algorithm,the number of clusters for themajority class is calculated using the elbow method and the minority class is over-sampled as an average of clustered majority classes to generate a symmetrical class distribution.The proposed technique is cost-effective,reduces the problem of noise generation and successfully disables the imbalances present in between and within classes.The results of the evaluations on diverse real datasets proved to provide better classification results as compared to state of the art existing methodologies based on several performance metrics. 展开更多
关键词 Imbalance class problem classification SMOTE K-MEANS CLUSTERING sampling
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Sampled-data modeling and dynamical effect of output-capacitor time-constant for valley voltage-mode controlled buck-boost converter 被引量:4
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作者 周述晗 周国华 +2 位作者 曾绍桓 冷敏瑞 徐顺刚 《Chinese Physics B》 SCIE EI CAS CSCD 2017年第11期515-525,共11页
By analyzing the output voltage ripple of a buck-boost converter with large equivalent series resistance(ESR) of output capacitor, one valley voltage-mode controller for buck-boost converter is proposed. Considering... By analyzing the output voltage ripple of a buck-boost converter with large equivalent series resistance(ESR) of output capacitor, one valley voltage-mode controller for buck-boost converter is proposed. Considering the fact that the increasing and decreasing slopes of the inductor current are assumed to be constant during each switching cycle, an especial sampleddata model of valley voltage-mode controlled buck-boost converter is established. Based on this model, the dynamical effect of an output-capacitor time-constant on the valley voltage-mode controlled buck-boost converter is revealed and analyzed via the bifurcation diagrams, the movements of eigenvalues, the Lyapunov exponent spectra, the boundary equations,and the operating-state regions. It is found that with gradual reduction of output-capacitor time-constant, the buck-boost converter in continuous conduction mode(CCM) shows the evolutive dynamic behavior from period-1 to period-2, period-4, period-8, chaos, and invalid state. The stability boundary and the invalidated boundary are derived theoretically by stability analysis, where the stable state of valley voltage-mode controlled buck-boost converter can enter into an unstable state, and the converter can shift from the operation region to a forbidden region. These results verified by time-domain waveforms and phase portraits of both simulation and experiment indicate that the sampled-data model is correct and the time constant of the output capacitor is a critical factor for valley voltage-mode controlled buck-boost converter, which has a significant effect on the dynamics as well as control stability. 展开更多
关键词 buck-boost converter valley voltage-mode control sampled-data modeling dynamics
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Short-Term Wind Power Prediction Based on ICEEMDAN-SE-LSTM Neural Network Model with Classifying Seasonal 被引量:1
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作者 Shumin Sun Peng Yu +3 位作者 Jiawei Xing Yan Cheng Song Yang Qian Ai 《Energy Engineering》 EI 2023年第12期2761-2782,共22页
Wind power prediction is very important for the economic dispatching of power systems containing wind power.In this work,a novel short-term wind power prediction method based on improved complete ensemble empirical mo... Wind power prediction is very important for the economic dispatching of power systems containing wind power.In this work,a novel short-term wind power prediction method based on improved complete ensemble empirical mode decomposition with adaptive noise(ICEEMDAN)and(long short-term memory)LSTM neural network is proposed and studied.First,the original data is prepossessed including removing outliers and filling in the gaps.Then,the random forest algorithm is used to sort the importance of each meteorological factor and determine the input climate characteristics of the forecast model.In addition,this study conducts seasonal classification of the annual data where ICEEMDAN is adopted to divide the original wind power sequence into numerous modal components according to different seasons.On this basis,sample entropy is used to calculate the complexity of each component and reconstruct them into trend components,oscillation components,and random components.Then,these three components are input into the LSTM neural network,respectively.Combined with the predicted values of the three components,the overall power prediction results are obtained.The simulation shows that ICEEMDAN-SE-LSTM achieves higher prediction accuracy ranging from 1.57%to 9.46%than other traditional models,which indicates the reliability and effectiveness of the proposed method for power prediction. 展开更多
关键词 Wind forecasting ICEEMDAN long short-term memory seasonal classification sample entropy
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Exponential synchronization of complex dynamical networks with Markovian jumping parameters using sampled-data and mode-dependent probabilistic time-varying delays 被引量:2
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作者 R.Rakkiyappan N.Sakthivel S.Lakshmanan 《Chinese Physics B》 SCIE EI CAS CSCD 2014年第2期49-63,共15页
In this paper, the problem of exponential synchronization of complex dynamical networks with Markovian jumping parameters using sampled-data and Mode-dependent probabilistic time-varying coupling delays is investigate... In this paper, the problem of exponential synchronization of complex dynamical networks with Markovian jumping parameters using sampled-data and Mode-dependent probabilistic time-varying coupling delays is investigated. The sam- pling period is assumed to be time-varying and bounded. The information of probability distribution of the time-varying delay is considered and transformed into parameter matrices of the transferred complex dynamical network model. Based on the condition, the design method of the desired sampled data controller is proposed. By constructing a new Lyapunov functional with triple integral terms, delay-distribution-dependent exponential synchronization criteria are derived in the form of linear matrix inequalities. Finally, two numerical examples are given to illustrate the effectiveness of the proposed methods. 展开更多
关键词 complex networks exponential synchronization mode-dependent time-varying delays linear ma- trix inequalities sampled-data control
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Inductor Current Sampled Feedback Control of Chaos in Current-Mode Boost Converter 被引量:2
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作者 Bo-Cheng Bao Jian-Ping Xu Yan Liang 《Journal of Electronic Science and Technology of China》 2008年第1期52-55,共4页
A chaos control strategy for chaotic current-mode boost converter is presented by using inductor current sampled feedback control technique.The quantitative analysis of control mechanism is performed by establishing a... A chaos control strategy for chaotic current-mode boost converter is presented by using inductor current sampled feedback control technique.The quantitative analysis of control mechanism is performed by establishing a discrete alterative map of the controlled system.The stability criterion,feedback gain,and corresponding critical duty ratio are obtained from the eigenvalue of the map.The simulation results verify the t heoretical analysis results of the control strategy. 展开更多
关键词 Control of chaos current-mode boost converter inductor current sampled feedback stabilitycriterion.
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Assessment of typhoon storm surge disaster scale based on expansion model
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作者 Guilin LIU Xiuxiu NONG +3 位作者 Yi KOU Fang WU Daniel ZHAO Zongbing YU 《Journal of Oceanology and Limnology》 SCIE CAS CSCD 2023年第2期518-531,共14页
The South China Sea suffers strongly from the typhoon storm surge disasters in China,and its northern coastal areas are facing severe risks.Therefore,it is necessary and urgent to establish an assessment system for ra... The South China Sea suffers strongly from the typhoon storm surge disasters in China,and its northern coastal areas are facing severe risks.Therefore,it is necessary and urgent to establish an assessment system for rating typhoon storm surge disaster.We constructed an effective and reliable rating assessment system for typhoon storm surge disaster based on the theories of over-threshold,distribution function family,and composite extreme value.The over-threshold sample was used as the basis of data analysis,the composite extreme value expansion model was used to derive the design water increment,and then the disaster level was delineated based on the return period level.The results of the extreme value model comparison show that the Weibull-Pareto distribution is more suitable than the classical extreme value distribution for fitting the over-threshold samples.The results of the return period projection are relatively stable based on different analysis samples.Taking the 10 typhoon storm surges as examples,they caused landfall in the Guangdong area in the past 10 years.The results of the assessment ranking indicate that the risk levels based on the return period levels obtained from different distributions are generally consistent.When classifying low-risk areas,the classification criteria of the State Oceanic Administration,China(SOA,2012)are more conservative.In the high-risk areas,the results of the assessment ranking based on return period are more consistent with those of the SOA. 展开更多
关键词 risk classification South China Sea typhoon storm surge extreme value expansion over threshold sampling
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Multiwavelength Actively Mode-locked Fiber Laser with a Double-ring Configuration and Integrated Cascaded Sampled Fiber Bragg Gratings
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作者 LONG Xiao-bo YANG Jian-liang 《Semiconductor Photonics and Technology》 CAS 2008年第2期85-89,共5页
A modified multiwavelength actively mode-locked fiber ring laser is proposed and experimentally demonstrated. In this kind of laser, stable multiwavelengths lasing is achieved by integrating cascaded sampled fiber Bra... A modified multiwavelength actively mode-locked fiber ring laser is proposed and experimentally demonstrated. In this kind of laser, stable multiwavelengths lasing is achieved by integrating cascaded sampled fiber Bragg gratings(SFBGs) into the laser cavity. To implement actively mode-locking technique, a double-ring cavity configuration is used to assure that the cavity lengths for all wavelengths lasing are identical. Thus, simultaneous mode locking of all wavelengths has been successfully achieved by using the same mode-locking signal. 展开更多
关键词 布拉格光栅 光纤激光器 锁定模式 多波长
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New Thinking of Traditional Industry Development under the New Economic Condition——Classification of the Industry by the Management Mode of Nike
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作者 Xiao Wan Jingjing Ran 《Chinese Business Review》 2005年第3期69-71,共3页
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基于CEEMD-SE的CNN&LSTM-GRU短期风电功率预测 被引量:1
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作者 杨国华 祁鑫 +4 位作者 贾睿 刘一峰 蒙飞 马鑫 邢潇文 《中国电力》 CSCD 北大核心 2024年第2期55-61,共7页
为进一步提升短期风电功率的预测精度,提出了一种基于互补集合经验模态分解-样本熵(complementary ensemble empirical mode decomposition-sample entropy,CEEMD-SE)的卷积神经网络(convolutional neural network,CNN)和长短期记忆-门... 为进一步提升短期风电功率的预测精度,提出了一种基于互补集合经验模态分解-样本熵(complementary ensemble empirical mode decomposition-sample entropy,CEEMD-SE)的卷积神经网络(convolutional neural network,CNN)和长短期记忆-门控循环单元(longshorttermmemory-gatedrecurrentunit,LSTM-GRU)的短期风电功率预测模型。首先,利用互补集合经验模态分解将原始风电功率序列分解为若干本征模态函数(intrinsic mode function,IMF)分量和一个残差(residual,RES)分量,利用样本熵算法将相近的分量进行重构;其次,搭建卷积神经网络和长短期记忆网络的并行网络结构,提取数据的局部特征和时序特征,并将特征融合后输入门控循环单元网络中进行学习预测;最后,通过算例进行验证,结果表明采用该模型后预测精度得到了有效提升,其均方根误差降低了15.06%、平均绝对误差降低了15.22%、决定系数提高了1.91%。 展开更多
关键词 短期风电功率预测 互补集合经验模态分解 样本熵 长短期记忆网络 门控循环单元
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ADASYN与类别逆比例加权法在阿尔茨海默病不平衡数据中的应用
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作者 杨慧 易付良 +7 位作者 陈杜荣 秦瑶 韩红娟 崔靖 白文琳 马艺菲 张荣 余红梅 《中国卫生统计》 CSCD 北大核心 2024年第2期175-180,共6页
目的利用自适应合成抽样(adaptive synthetic sampling,ADASYN)与类别逆比例加权法处理类别不平衡数据,结合分类器构建模型对阿尔茨海默病(alzheimer′s disease,AD)患者疾病进程进行分类预测。方法数据源自阿尔茨海默病神经影像学计划(... 目的利用自适应合成抽样(adaptive synthetic sampling,ADASYN)与类别逆比例加权法处理类别不平衡数据,结合分类器构建模型对阿尔茨海默病(alzheimer′s disease,AD)患者疾病进程进行分类预测。方法数据源自阿尔茨海默病神经影像学计划(Alzheimer′s disease neuroimaging initiative,ADNI),经随机森林填补缺失值,弹性网络筛选特征子集后,利用ADASYN与类别逆比例加权法处理类别不平衡数据。分别结合随机森林(random forest,RF)、支持向量机(support vector machine,SVM)构建四种模型:ADASYN-RF、ADASYN-SVM、加权随机森林(weighted random forest,WRF)、加权支持向量机(weighted support vector machine,WSVM),与RF、SVM比较分类性能。模型评价指标为宏观平均精确率(macro-average of precision,macro-P)、宏观平均召回率(macro-average of recall,macro-R)、宏观平均F1值(macro-average of F1-score,macro-F1)、准确率(accuracy,ACC)、Kappa值和AUC(area under the ROC curve)。结果ADASYN-RF的分类性能最优(Kappa值为0.938,AUC为0.980),ADASYN-SVM次之。利用ADASYN-RF预测得到的重要分类特征分别为CDRSB、LDELTOTAL、MMSE,在临床上均可得到证实。结论ADASYN与类别逆比例加权法都能辅助提升分类器性能,但ADASYN算法更优。 展开更多
关键词 类别不平衡 ADASYN 加权法 阿尔茨海默病 分类
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融合二连通模体结构信息的节点分类算法
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作者 郑文萍 葛慧琳 +1 位作者 刘美麟 杨贵 《计算机应用》 CSCD 北大核心 2024年第5期1464-1470,共7页
节点表示学习将图结构数据信息编码到低维的潜在空间中,在节点分类、聚类、链路预测等机器学习任务中被广泛应用。在复杂网络中,节点与节点之间不仅存在直接相连的低阶结构,也存在以特殊连接模式形成的高阶结构,称为模体。提出一种融合... 节点表示学习将图结构数据信息编码到低维的潜在空间中,在节点分类、聚类、链路预测等机器学习任务中被广泛应用。在复杂网络中,节点与节点之间不仅存在直接相连的低阶结构,也存在以特殊连接模式形成的高阶结构,称为模体。提出一种融合二连通模体结构信息的节点分类算法(FMI),利用节点间高阶二连通模体信息学习节点表示,完成节点分类任务。首先,统计网络中的二连通模体,利用其中信息提出一个节点重要性的度量指标——模体比值。根据模体比值计算采样概率进行邻域采样;构造一个带权辅助图以融合网络节点连接的低阶关系与高阶关系,对节点进行加权邻域聚合以得到节点表示。在5个数据集Cora、Citeseer、Pubmed、Wiki和DBLP上执行节点分类任务,与5种经典基准算法进行对比,所提算法FMI在准确度和F1-分数等指标上表现良好。 展开更多
关键词 节点表示 二连通模体 邻域采样 邻域聚合 节点分类
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融合注意力机制卷积神经网络的扬声器异常声分类
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作者 周静雷 王晓明 李丽敏 《西安工程大学学报》 CAS 2024年第2期101-108,共8页
针对扬声器异常声非线性、非平稳且易受外部噪声干扰,以及因特征冗余而导致扬声器异常声识别率偏低的问题,提出一种基于变分模态分解(variational mode decomposition, VMD)和一维卷积循环注意力网络(1DCNN-BiLSTM-Attention)相结合的... 针对扬声器异常声非线性、非平稳且易受外部噪声干扰,以及因特征冗余而导致扬声器异常声识别率偏低的问题,提出一种基于变分模态分解(variational mode decomposition, VMD)和一维卷积循环注意力网络(1DCNN-BiLSTM-Attention)相结合的扬声器异常声分类方法。首先,采集不同类型异常声信号,采用VMD对异常声信号进行分解并提取扬声器异常声特征,构建标签化的初始数据;其次,将特征数据输入至1DCNN-BiLSTM网络中进行初始化特征提取,利用注意力机制自适应优化网络对异常声特征的学习权重,提升网络对特征鉴别能力,并优化Dropout抑制网络在训练过程中存在的过拟合问题,构成1DCNN-BiLSTM-Attention分类网络;最后,将所提方法应用于扬声器异常声分类中。实验结果表明:该方法可以有效提取到扬声器异常声中的关键特征,平均分类准确率为99.17%,与VGG16、RF和DCNN相比,其准确率分别提高了13.14%、0.56%,12.34%。 展开更多
关键词 异常声分类 变分模态分解 卷积神经网络 注意力机制
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基于虚拟样本伪标签生成的高光谱图像分类
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作者 谢福鼎 雷潇涵 《辽宁师范大学学报(自然科学版)》 CAS 2024年第1期86-92,共7页
半监督高光谱图像分类的精度一般随着标记像素数的增加而提高.然而,标签样本的获得费时费力,且依赖于专家知识.针对这个问题,提出了一种通过少量标签样本生成具有伪标签的虚拟样本新方法.基于数学中的凸集理论,所提出的方法利用少量的... 半监督高光谱图像分类的精度一般随着标记像素数的增加而提高.然而,标签样本的获得费时费力,且依赖于专家知识.针对这个问题,提出了一种通过少量标签样本生成具有伪标签的虚拟样本新方法.基于数学中的凸集理论,所提出的方法利用少量的训练样本可以生成任意多的带有伪标签的虚拟样本,有效地扩大了训练样本集,明显改善了半监督分类器的分类结果.为了验证所提方法的有效性,在Indian Pines和Pavia University两个常用的实际高光谱数据集上进行了广泛测试.实验结果表明,利用所提出的方法在分类具有少量标签样本的高光谱图像时,3个评价分类结果的指标值均有明显提升. 展开更多
关键词 高光谱图像 虚拟样本 伪标签 半监督分类 凸集
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数字平台生态系统治理——理论逻辑、行动框架与模式划分
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作者 焦豪 王林栋 《山东大学学报(哲学社会科学版)》 北大核心 2024年第4期117-130,共14页
数字平台生态系统的持续发展取决于其平台架构设计和治理规则的有效匹配。基于平台的治理规则和治理架构之间的动态镜像关系,从理论逻辑、行动框架和模式划分等方面对数字平台生态系统治理进行分析,结果发现:首先,数字平台生态系统治理... 数字平台生态系统的持续发展取决于其平台架构设计和治理规则的有效匹配。基于平台的治理规则和治理架构之间的动态镜像关系,从理论逻辑、行动框架和模式划分等方面对数字平台生态系统治理进行分析,结果发现:首先,数字平台生态系统治理是平台所有者基于治理架构设计创建规则来管理平台参与者的一系列活动组合。在治理过程中,治理主体主要面临着决策权集中与分散的平衡、平台边界开放与封闭的取舍两个关键问题;其次,治理主体、治理目标、治理架构和治理规则是数字平台生态系统治理的四个基本要素,四者相互作用共同组成实现数字平台生态系统可持续性的行动框架;最后,基于平台决策权分散还是集中,以及平台边界是封闭还是开放两个维度,数字平台生态系统治理可以划分为专断型治理、引导型治理、合约型治理和自由型治理四类模式。 展开更多
关键词 数字平台生态系统 治理 理论逻辑 行动框架 模式划分
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融合选择性稀疏采样的细粒度图像分类
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作者 孙红 陈玉娟 宋冬豪 《小型微型计算机系统》 CSCD 北大核心 2024年第6期1460-1465,共6页
常用的细粒度分类方法通过提取局部信息学习细粒度特征,容易忽视周围环境因素影响问题,造成分类精度下降.针对这一问题提出了一个简单有效的框架,称为选择性稀疏采样.通过类峰值响应产生稀疏注意定位有信息的对象部分,根据图像内容选择... 常用的细粒度分类方法通过提取局部信息学习细粒度特征,容易忽视周围环境因素影响问题,造成分类精度下降.针对这一问题提出了一个简单有效的框架,称为选择性稀疏采样.通过类峰值响应产生稀疏注意定位有信息的对象部分,根据图像内容选择动态数量的稀疏注意,生成判别性和补充性两个分支进行视觉表示,使得特征部分和全局信息相辅相成.对于容易产生混淆的部分,引入了一个“梯度增强”损失,只关注每个样本的混淆类,为补充性分支提供更多的细节特征.通过实验结果表明,该方法在常用数据集的基准测试中分别达到了88.6%,92.8%和94.8%的精确度,验证了该方法的有效性. 展开更多
关键词 细粒度图像分类 选择稀疏采样 类峰值响应 梯度增强 卷积神经网络
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