文件名称:pvm_code
- 所属分类:
- 人工智能/神经网络/遗传算法
- 资源属性:
- [Matlab] [源码]
- 上传时间:
- 2012-11-26
- 文件大小:
- 6.31mb
- 下载次数:
- 0次
- 提 供 者:
- deng*****
- 相关连接:
- 无
- 下载说明:
- 别用迅雷下载,失败请重下,重下不扣分!
介绍说明--下载内容均来自于网络,请自行研究使用
PVM is a fast supvervised leanring algorithm who combine dimensioin reduction and neural network training.
I have prepared the code (including six algorithms KPVM, EL M/SVD, BP/SVD and BPVM, and one dataset "Face") and put them in one zip file "pvm_code.zip", you can unzip it and run "Face_mean.m" function in Matlab environment . Before carried out experiments, please include “DimReduce” and “IncPACK” package (in the pvm_code folder)in the Matlab path setting. You will see Avarage Training time, Avarage Testing Time, Avarage Training Accuracy and Avarage Testing Accuracy of 50 trials. Because some dataset is large even they are zipped, so we just upload one dataset "Face". Other dataset can be downloaded from UCI website. According the parameter settings listed in Table 2 and Table 9, you can get the experimental results. But because the dataset is randomly split in each trial, the result may be slightly different. -I have prepared the code (including six algorithms KPVM, ELM, ELM/SVD, BP/SVD and BPVM, and one dataset "Face") and put them in one zip file "pvm_code.zip", you can unzip it and run "Face_mean.m" function in Matlab environment . Before carried out experiments, please include “DimReduce” and “IncPACK” package (in the pvm_code folder)in the Matlab path setting. You will see Avarage Training time, Avarage Testing Time, Avarage Training Accuracy and Avarage Testing Accuracy of 50 trials. Because some dataset is large even they are zipped, so we just upload one dataset "Face". Other dataset can be downloaded from UCI website. According the parameter settings listed in Table 2 and Table 9, you can get the experimental results. But because the dataset is randomly split in each trial, the result may be slightly different.
I have prepared the code (including six algorithms KPVM, EL M/SVD, BP/SVD and BPVM, and one dataset "Face") and put them in one zip file "pvm_code.zip", you can unzip it and run "Face_mean.m" function in Matlab environment . Before carried out experiments, please include “DimReduce” and “IncPACK” package (in the pvm_code folder)in the Matlab path setting. You will see Avarage Training time, Avarage Testing Time, Avarage Training Accuracy and Avarage Testing Accuracy of 50 trials. Because some dataset is large even they are zipped, so we just upload one dataset "Face". Other dataset can be downloaded from UCI website. According the parameter settings listed in Table 2 and Table 9, you can get the experimental results. But because the dataset is randomly split in each trial, the result may be slightly different. -I have prepared the code (including six algorithms KPVM, ELM, ELM/SVD, BP/SVD and BPVM, and one dataset "Face") and put them in one zip file "pvm_code.zip", you can unzip it and run "Face_mean.m" function in Matlab environment . Before carried out experiments, please include “DimReduce” and “IncPACK” package (in the pvm_code folder)in the Matlab path setting. You will see Avarage Training time, Avarage Testing Time, Avarage Training Accuracy and Avarage Testing Accuracy of 50 trials. Because some dataset is large even they are zipped, so we just upload one dataset "Face". Other dataset can be downloaded from UCI website. According the parameter settings listed in Table 2 and Table 9, you can get the experimental results. But because the dataset is randomly split in each trial, the result may be slightly different.
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下载文件列表
pvm_code
........\BP.m
........\BPSVD.m
........\BPVM.m
........\DimReduce
........\.........\EuDist2.m
........\.........\IsoP.m
........\.........\KPCA.m
........\.........\LDA.m
........\.........\LGE.m
........\.........\LPP.m
........\.........\LSDA.m
........\.........\Learning a.m
........\.........\MFA.m
........\.........\NPE.m
........\.........\OLGE.m
........\.........\OLPP.m
........\.........\Orthogonal Laplacianfaces for Face Recognition.m
........\.........\PCA.m
........\.........\Tensor Subspace Analysis.m
........\.........\TensorLGE.m
........\.........\TensorLPP.m
........\.........\constructKernel.m
........\.........\constructM.m
........\.........\constructW.m
........\.........\dijkstra.dll
........\.........\未下载.doc
........\.........\说明.doc
........\ELM.m
........\ELMSVD.m
........\IncPACK
........\.......\DemoSeqkl.m
........\.......\clamp.m
........\.......\seqkl.m
........\.......\seqkl_disp2.m
........\.......\seqkl_restart.m
........\.......\seqkl_sda.m
........\.......\seqkl_sdb.m
........\.......\seqkl_stat.m
........\.......\seqkl_stdpass.m
........\.......\seqkl_update.m
........\.......\width.m
........\KPVM_IncPACK.m
........\face_data.m
........\face_mean.m
........\face_test
........\geninv.m
........\p.mat