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[matlabpsobp

Description: pso优化BP算法,别人写的东东,加入数据后可运行-pso BP optimization algorithm, written by the Eastern others, joined the operational data
Platform: | Size: 2048 | Author: yanwuyuan | Hits:

[matlabGA-PSO

Description: PSO(粒子群算法)作为添加算子改进GA (遗传算法).-PSO (PSO), as added Operator improved genetic algorithm (GA).
Platform: | Size: 1024 | Author: 何峰 | Hits:

[AI-NN-PRImprovedSVM

Description: 将遗传算法(GA)与传统SVM算法结合,构造出一种参数最优的进化SVM(GA2SVM),SVM 模型采用径向基函数(RBF)作为核函数,利用格雷码编码方式对SVM算法的模型参数进行遗传编码和优化搜索,将搜索到的优化结果作为SVM 的最终模型参数。-Genetic algorithm (GA) combined with the traditional SVM algorithm, a kind of tectonic evolution of the optimal parameters of SVM (GA2SVM), SVM model using Radial Basis Function (RBF) as kernel function, the use of Gray code encoding algorithm of the SVM model parameters of genetic coding and optimization of search, will search for the optimal results as the final SVM model parameters.
Platform: | Size: 179200 | Author: zhaoxiufen | Hits:

[AI-NN-PRpso-svm

Description: 利用PSO优化SVM,利用分组式训练方法提高算法速度-PSO to optimize the use of SVM, the use of packet-style training methods improve algorithm speed
Platform: | Size: 111616 | Author: zhangqing | Hits:

[DocumentsPSO-SVM

Description: 改进PSO-SVM在说话人识别中的应用。通过对粒子群优化算法中惯性权重和全局最优值 的分析,提出了一种根据迭代次数而自适应变化的惯性权重的粒子群优化方法-Improvement in the PSO-SVM speaker recognition applications. Through particle swarm optimization algorithm in the inertia weight and the analysis of the global optimum value, a number of iterations in accordance with changes in the adaptive inertia weight particle swarm optimization method
Platform: | Size: 315392 | Author: 彭伟 | Hits:

[AI-NN-PRlibsvm-mat-2[1].89-3

Description: svm多分类器,包括多分类和GA算法和PSO算法优化的SVM-svm multi-classifier, including the multi-classification and GA algorithm and PSO algorithm for optimization of SVM
Platform: | Size: 494592 | Author: 何同学 | Hits:

[AI-NN-PRpso-svm

Description: 这是一个用pso优化SVM中的惩罚参数C和核参数g的MATLAB源码,简单易学-This is an optimization of SVM with the pso in the penalty parameter C and kernel parameter g of the MATLAB source code, easy to learn
Platform: | Size: 1024 | Author: yyifang | Hits:

[matlabPSO_GA_SVM

Description: 利用遗传算法GA和粒子群算法PSO对SVM进行优化-GA genetic algorithm and particle swarm optimization PSO to optimize the SVM
Platform: | Size: 285696 | Author: caoji | Hits:

[Other06725452

Description: This work investigates the practical application of support vector machine (SVM) to power transformer condition assessment. Partiuclarly, this paper proposes to integrate the SVM algorithm with two heuristic optimization algorithms which are particle swarm optimization algorithm (PSO) and genetic algorithm optimization (GA). These two optimization algorothms are used for efficiently and effectively determine the optimal parameters for SVM. The resulatant two hybrid algorithms, i.e. SVM-PSO and SVM-GA can improve the performances of the original SVM algorithm on classifying the incipient faults in power transformers. Extensive case studies and statistic comparison among the original SVM, SVM-PSO, and SVM-GA over multiple datasets are also provided. Calculation results may demonstrate the effectiveness and applicability of the two hybrid algorithms in improving the classification accuracy of SVM for condition assessment of power transformer.
Platform: | Size: 985088 | Author: pse | Hits:

[Software Engineering39378

Description: This work investigates the practical application of support vector machine (SVM) to power transformer condition assessment. Partiuclarly, this paper proposes to integrate the SVM algorithm with two heuristic optimization algorithms which are particle swarm optimization algorithm (PSO) and genetic algorithm optimization (GA). These two optimization algorothms are used for efficiently and effectively determine the optimal parameters for SVM. The resulatant two hybrid algorithms, i.e. SVM-PSO and SVM-GA can improve the performances of the original SVM algorithm on classifying the incipient faults in power transformers. Extensive case studies and statistic comparison among the original SVM, SVM-PSO, and SVM-GA over multiple datasets are also provided. Calculation results may demonstrate the effectiveness and applic
Platform: | Size: 1890304 | Author: pse | Hits:

[Software EngineeringYang_nature_book_part

Description: This work investigates the practical application of support vector machine (SVM) to power transformer condition assessment. Partiuclarly, this paper proposes to integrate the SVM algorithm with two heuristic optimization algorithms which are particle swarm optimization algorithm (PSO) and genetic algorithm optimization (GA). These two optimization algorothms are used for efficiently and effectively determine the optimal parameters for SVM. The resulatant two hybrid algorithms, i.e. SVM-PSO and SVM-GA can improve the performances of the original SVM algorithm on classifying the incipient faults in power transformers. Extensive case studies and statistic comparison among the original SVM, SVM-PSO, and SVM-GA over multiple datasets are also provided. Calculation results may demonstrate the effectiveness and applicability of the two hybrid algorit
Platform: | Size: 930816 | Author: pse | Hits:

[Software Engineering39326

Description: This work investigates the practical application of support vector machine (SVM) to power transformer condition assessment. Partiuclarly, this paper proposes to integrate the SVM algorithm with two heuristic optimization algorithms which are particle swarm optimization algorithm (PSO) and genetic algorithm optimization (GA). These two optimization algorothms are used for efficiently and effectively determine the optimal parameters for SVM. The resulatant two hybrid algorithms, i.e. SVM-PSO and SVM-GA can improve the performances of the original SVM algorithm on classifying the incipient faults in power transformers. Extensive case studies and statistic comparison among the original SVM, SVM-PSO, and SVM-GA over multiple datasets are also provided. Calculation results may demonstrate the effectiveness and applicability of the two hybrid algorithms in improving the classification accuracy of SVM for condition
Platform: | Size: 670720 | Author: pse | Hits:

[AI-NN-PRGA-PSO

Description: 遗传算法和粒子群算法以及网格搜索法优化神经网络SVM的高斯核参数和惩罚参数-Optimization of Genetic Algorithm Neural Network SVM Gaussian kernel parameters and penalty parameter
Platform: | Size: 208896 | Author: 陈静 | Hits:

[DataMiningSVM_GUI_3.1[mcode]

Description: faruto编写的基于libsvm3.1的SVM_GUI,可用于SVM分类及相关回归分析,已经集成了GA及PSO参数寻优算法及PCA算法,提供的是GUI版本及与之对应的源码版本-SVM_GUI and the program of SVM_Code,base on the version of the Libsvm 3.1,using the GA and PSO algorithm to improve
Platform: | Size: 72704 | Author: 张强 | Hits:

[Mathimatics-Numerical algorithmsSVM_Code_GUI

Description: faruto编写的基于libsvm3.1的SVM_GUI,可用于SVM分类及相关回归分析,已经集成了GA及PSO参数寻优算法及PCA算法,提供的是GUI版本及与之对应的源码版本-SVM_GUI and the program of SVM_Code,base on the version of the Libsvm 3.1,using the GA and PSO algorithm to improve
Platform: | Size: 1466368 | Author: 张强 | Hits:

[matlabPSO-SVM

Description: 将改进的粒子群算法和GA与SVM相结合,通过参数寻优构建新模型完成对空气质量指数的预测(The improved particle swarm optimization and genetic algorithm are combined with SVM. The prediction of air quality index (AQI) is completed by constructing a new model by parameter optimization.)
Platform: | Size: 19456 | Author: 心静2279 | Hits:

[Other神经网络入门13课源码

Description: 神经网络入门13课源码 第一课 MATLAB入门基础 第二课 MATLAB进阶与提高 第三课 BP神经网络 第四课 RBF、GRNN和PNN神经网络 第五课 竞争神经网络与SOM神经网络 第六课 支持向量机( Support Vector Machine, SVM ) 第七课 极限学习机( Extreme Learning Machine, ELM ) 第八课 决策树与随机森林 第九课 遗传算法( Genetic Algorithm, GA ) 第十课 粒子群优化( Particle Swarm Optimization, PSO )算法 第十一课 蚁群算法( Ant Colony Algorithm, ACA ) 第十二课 模拟退火算法( Simulated Annealing, SA ) 第十三课 降维与特征选择(Source code of 13 courses of neural network introduction)
Platform: | Size: 4372480 | Author: 1234567845432 | Hits:

[Special Effects改进svm

Description: phog方法提取图像特征,svm支持向量机进行分类,分别有GA遗传算法和PSO粒子群优化算法进行寻优。(Phog method extracted image features, SVM support vector machine classification, respectively, GA genetic algorithm and PSO particle swarm optimization algorithm for optimization.)
Platform: | Size: 31901696 | Author: 隋易帝 | Hits:

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