net_lm_sigmoid_16.txt
上传用户:guanx8y8
上传日期:2007-07-30
资源大小:326k
文件大小:4k
源码类别:
人工智能/神经网络
开发平台:
Visual C++
- ## 样本的输入层的数目: ##
- 8
- ## 样本的隐含层的数目: ##
- 16
- ## 样本的输出层的数目: ##
- 1
- ## 训练网络所采用的神经网络算法: ##
- 0
- ## 网络中使用的函数的索引值: ##
- 2
- ## 输入层到隐含层的权值矩阵 ##
- -0.5215422233972622 -1.0405939289268549 -0.2806018151022972 0.5426643291889387 0.5078727633418680 0.6807115374346709 -0.0555001355372568 0.6395059434984600
- 0.9334929430214390 -0.6467866389045992 -0.6500849326513749 0.0387765958970571 -0.1466992636509180 0.1742936531282840 -0.3766926743859030 -2.1263419617002057
- 0.9779765958797670 -0.7416393986330502 -0.4702883663943964 -0.0200576056555077 -0.0925641274727188 -0.0202044891792851 -0.3212562685892291 -1.6534196295196133
- 0.0308971986340014 -0.1746234178230572 0.0555845925076605 0.2085495311070889 0.0228543028739844 0.1979870488024491 0.0370914137458179 0.2049483205555183
- 0.9147356098746311 0.6374530626026369 -0.2131588542041736 0.4288405123250410 0.1125625053429897 0.5571094517823023 -0.3546386526104706 0.3764033973814512
- 1.8790777286937321 -0.2667498650650697 0.1373214235478724 -0.1750537600700010 0.0929872353425144 -0.2744845076747345 0.1121744970105214 -0.2633376780090545
- 0.3641812272254685 0.0156065872884350 0.0616863021191434 0.6538426649702711 0.9853565767537488 1.3683891475047540 0.4483755733151397 0.0043995795004997
- -0.0126512682501700 -0.6091747424677450 -0.0255056183344098 -0.1288287433236206 -0.0170389780698992 -0.1262809305658444 -0.0233084131861256 -0.1252076662234888
- -1.1641975942057410 0.7874099134487534 -0.0527900438350203 0.2383288316034443 0.5549863557846571 0.4942676815708375 -0.0555092938677055 0.4769079464121561
- 0.3924720379537772 -0.4067690639229706 1.1351450999825667 -0.3861062233654913 -1.5187645769833533 0.3841154203600182 0.8624130187374414 1.1930782042787622
- 0.0076087087376530 0.0623385971505753 -0.0143739155013608 -0.0930028735678798 -0.0153040795917815 -0.0938097206430281 -0.0147293040353408 -0.0925401500322408
- -0.0052768508830857 0.7004281305263189 0.0328332326636389 0.1638660583456754 0.0276619136140507 0.1623207190124439 0.0292024626854133 0.1648355457063817
- 0.0054785333294525 -0.9238373762920544 -0.0016438175832775 0.0214019160511506 0.0083444561810835 0.0231839673949871 0.0025832549949055 0.0214263794533518
- 1.3970610441901534 0.5906367509768723 -0.2379886475455792 0.4623568261923024 0.3082857504259428 0.6923839246612838 -0.4196446198926910 0.5064955740248780
- 1.8545890841406132 0.6258253280963055 -0.2290603438082973 0.4311461151680554 0.2520886299809797 0.6081191199106377 -0.4205937581496633 0.4285333597920515
- -1.0741095890253578 -0.6493411722296878 0.2144476416800629 -0.4245008937765050 -0.1140166248613109 -0.5490885510740753 0.3631958574855230 -0.3683668754976004
- ## 隐含层的阀值矩阵 ##
- -0.1002831598747657
- 0.2518863886799819
- 0.1835591431104390
- -2.0060990986758371
- 0.0161947819641849
- 0.3286831818002249
- 0.0361204931640625
- -0.5801512406299189
- 0.9508638142473360
- 0.9927483043636042
- -0.8853701987492699
- -2.7305993088536802
- -0.1706290269507230
- -0.1178590244974150
- -0.1620251141751556
- 0.0096720840376792
- ## 隐含层到输出层的权值矩阵 ##
- 0.0009323994954074 -0.0022291801590837 0.0036395834743509 -0.3856061862174862 -0.3370695228374089 0.0077825956571264 -0.0002170638111569 1.1009111234056390 -0.0081119980576590 0.0002183492923227 -2.5772469556838171 2.3680639609983318 -0.5760725305472232 0.0496181282691147 -0.0707315728489010 -0.3509086166104439
- ## 输出层的阀值矩阵 ##
- 0.6351304012458499