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Design of Polynomial Fuzzy Neural Network Classifiers Based on Density Fuzzy C-Means and L2-Norm Regularization
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作者 Shaocong Xue Wei Huang +1 位作者 Chuanyin Yang Jinsong Wang 《国际计算机前沿大会会议论文集》 2019年第1期594-596,共3页
In this paper, polynomial fuzzy neural network classifiers (PFNNCs) is proposed by means of density fuzzy c-means and L2-norm regularization. The overall design of PFNNCs was realized by means of fuzzy rules that come... In this paper, polynomial fuzzy neural network classifiers (PFNNCs) is proposed by means of density fuzzy c-means and L2-norm regularization. The overall design of PFNNCs was realized by means of fuzzy rules that come in form of three parts, namely premise part, consequence part and aggregation part. The premise part was developed by density fuzzy c-means that helps determine the apex parameters of membership functions, while the consequence part was realized by means of two types of polynomials including linear and quadratic. L2-norm regularization that can alleviate the overfitting problem was exploited to estimate the parameters of polynomials, which constructed the aggregation part. Experimental results of several data sets demonstrate that the proposed classifiers show higher classification accuracy in comparison with some other classifiers reported in the literature. 展开更多
关键词 POlYNOMIAl FUZZY neural network ClASSIFIERS Density FUZZY clustering l2-norm regularization FUZZY rules
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L(d,1)-labeling of regular tilings
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作者 戴本球 宋增民 《Journal of Southeast University(English Edition)》 EI CAS 2005年第1期115-118,共4页
L(d, 1)-labeling is a kind of graph coloring problem from frequency assignment in radio networks, in which adjacent nodes must receive colors that are at least d apart while nodes at distance two from each other must ... L(d, 1)-labeling is a kind of graph coloring problem from frequency assignment in radio networks, in which adjacent nodes must receive colors that are at least d apart while nodes at distance two from each other must receive different colors. We focus on L(d, 1)-labeling of regular tilings for d≥3 since the cases d=0, 1 or 2 have been researched by Calamoneri and Petreschi. For all three kinds of regular tilings, we give their L (d, 1)-labeling numbers for any integer d≥3. Therefore, combined with the results given by Calamoneri and Petreschi, the L(d, 1)-labeling numbers of regular tilings for any nonnegative integer d may be determined completely. 展开更多
关键词 Graph theory Radio communication
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Super-resolution least-squares prestack Kirchhoff depth migration using the L_0-norm
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作者 Wu Shao-Jiang Wang Yi-Bo +1 位作者 Ma Yue and Chang Xu 《Applied Geophysics》 SCIE CSCD 2018年第1期69-77,148,149,共11页
Least-squares migration (LSM) is applied to image subsurface structures and lithology by minimizing the objective function of the observed seismic and reverse-time migration residual data of various underground refl... Least-squares migration (LSM) is applied to image subsurface structures and lithology by minimizing the objective function of the observed seismic and reverse-time migration residual data of various underground reflectivity models. LSM reduces the migration artifacts, enhances the spatial resolution of the migrated images, and yields a more accurate subsurface reflectivity distribution than that of standard migration. The introduction of regularization constraints effectively improves the stability of the least-squares offset. The commonly used regularization terms are based on the L2-norm, which smooths the migration results, e.g., by smearing the reflectivities, while providing stability. However, in exploration geophysics, reflection structures based on velocity and density are generally observed to be discontinuous in depth, illustrating sparse reflectance. To obtain a sparse migration profile, we propose the super-resolution least-squares Kirchhoff prestack depth migration by solving the L0-norm-constrained optimization problem. Additionally, we introduce a two-stage iterative soft and hard thresholding algorithm to retrieve the super-resolution reflectivity distribution. Further, the proposed algorithm is applied to complex synthetic data. Furthermore, the sensitivity of the proposed algorithm to noise and the dominant frequency of the source wavelet was evaluated. Finally, we conclude that the proposed method improves the spatial resolution and achieves impulse-like reflectivity distribution and can be applied to structural interpretations and complex subsurface imaging. 展开更多
关键词 SUPER-RESOlUTION lEAST-SQUARES Kirchhoff depth migration l0-norm regularization
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图着色和标号问题的蚁群优化算法 被引量:4
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作者 林妍 吴瑾 樊锁海 《数学的实践与认识》 CSCD 北大核心 2012年第17期182-191,共10页
对图着色问题的最大最小蚁群算法进行了改进,测试结果表明算法有效可行.在此基础上,分别设计了求解图条件着色和标号问题的相应蚁群优化算法,并对中国地图的条件着色、三正则图的条件着色、广义Petersen图的条件着色和标号问题进行了求... 对图着色问题的最大最小蚁群算法进行了改进,测试结果表明算法有效可行.在此基础上,分别设计了求解图条件着色和标号问题的相应蚁群优化算法,并对中国地图的条件着色、三正则图的条件着色、广义Petersen图的条件着色和标号问题进行了求解优化,改进和完善了目前理论研究的结论. 展开更多
关键词 图着色 条件着色 蚁群算法 三正则图 广义PETERSEN图 l(2 1)标号
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