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simpleLSTM

于 2019-01-11 发布 文件大小:649KB
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下载积分: 1 下载次数: 7

代码说明:

  该程序是一段简单 的LSTM程序,是基于matlab的,容易理解和学习(This program is a simple LSTM program based on matlab, and very easy to understand and learn.)

文件列表:

LSTM-MATLAB-master\aStart.m, 1053 , 2015-12-28
LSTM-MATLAB-master\batch_cell_lstm.m, 8858 , 2015-12-28
LSTM-MATLAB-master\batch_equal_nomask_lstm.m, 8905 , 2015-12-28
LSTM-MATLAB-master\clientLoadDataMinibatchNomask_ref.m, 1229 , 2015-12-28
LSTM-MATLAB-master\data\genadding.m, 2527 , 2015-12-28
LSTM-MATLAB-master\dependence\computeNumericalGradient.m, 1171 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\entries, 2022 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\prop-base\slaveRun.sh.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\addpath_tica.m.svn-base, 749 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\java2matlab.m.svn-base, 1937 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\matlab2java.m.svn-base, 1724 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\README.svn-base, 17793 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\serverRef.m.svn-base, 1759 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\setup_paths.m.svn-base, 838 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\slaveRandSeed.m.svn-base, 182 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\slaveRef.m.svn-base, 1428 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\slaveRefDelete.m.svn-base, 361 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\slaveRun.m.svn-base, 666 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\.svn\text-base\slaveRun.sh.svn-base, 2037 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\.svn\entries, 1176 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\.svn\text-base\emulateSlaveProcessRequest.m.svn-base, 982 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\.svn\text-base\getReply.m.svn-base, 1090 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\.svn\text-base\rpc.m.svn-base, 3504 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\.svn\text-base\rpcsum.m.svn-base, 560 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\.svn\text-base\sendRequest.m.svn-base, 672 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\.svn\text-base\Server.m.svn-base, 7443 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\emulateSlaveProcessRequest.m, 982 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\getReply.m, 1090 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\rpc.m, 3504 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\rpcsum.m, 560 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\sendRequest.m, 672 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Server\Server.m, 7443 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\.svn\entries, 1013 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\.svn\text-base\getRequest.m.svn-base, 488 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\.svn\text-base\hook.m.svn-base, 1213 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\.svn\text-base\processRequest.m.svn-base, 2284 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\.svn\text-base\sendReply.m.svn-base, 284 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\.svn\text-base\Slave.m.svn-base, 1372 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\getRequest.m, 488 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\hook.m, 1213 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\processRequest.m, 2284 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\sendReply.m, 284 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\@Slave\Slave.m, 1372 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\addpath_tica.m, 749 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\.svn\entries, 594 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\.svn\text-base\slaveLoadCifar.m.svn-base, 1846 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\.svn\text-base\slaveLoadTinyBatch.m.svn-base, 260 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\slaveLoadCifar.m, 1846 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\slaveLoadTinyBatch.m, 260 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\entries, 2296 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\annotations.txt.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\compute_hash_function.m.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\fast_str2num.m.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\loadGroundTruth.m.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\loadTinyImages.m.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\read_tiny_big_binary.m.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\read_tiny_big_metadata.m.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\read_tiny_binary_big_core.c.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\read_tiny_binary_gist_core.c.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\read_tiny_gist_binary.m.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\read_tiny_metadata_big_core.c.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\prop-base\README.txt.svn-base, 30 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\annotations.txt.svn-base, 450593 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\compute_hash_function.m.svn-base, 273 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\fast_str2num.m.svn-base, 128 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\loadGroundTruth.m.svn-base, 397 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\loadTinyImages.m.svn-base, 958 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\read_tiny_big_binary.m.svn-base, 3578 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\read_tiny_big_metadata.m.svn-base, 5760 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\read_tiny_binary_big_core.c.svn-base, 2900 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\read_tiny_binary_gist_core.c.svn-base, 2868 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\read_tiny_gist_binary.m.svn-base, 3272 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\read_tiny_metadata_big_core.c.svn-base, 5575 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\.svn\text-base\README.txt.svn-base, 5682 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\annotations.txt, 450593 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\compute_hash_function.m, 273 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\fast_str2num.m, 128 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\loadGroundTruth.m, 397 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\loadTinyImages.m, 958 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\read_tiny_big_binary.m, 3578 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\read_tiny_big_metadata.m, 5760 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\read_tiny_binary_big_core.c, 2900 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\read_tiny_binary_gist_core.c, 2868 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\read_tiny_gist_binary.m, 3272 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\read_tiny_metadata_big_core.c, 5575 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\dataloader\tiny\README.txt, 5682 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\java2matlab.m, 1937 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\matlab2java.m, 1724 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\entries, 5827 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\lbfgsC.mexa64.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\lbfgsC.mexglx.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\lbfgsC.mexmac.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\lbfgsC.mexmaci.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\lbfgsC.mexmaci64.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\lbfgsC.mexw32.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\lbfgsC.mexw64.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\mcholC.mexmaci64.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\mcholC.mexw32.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\prop-base\mcholC.mexw64.svn-base, 53 , 2015-12-28
LSTM-MATLAB-master\dependence\matlabserver_r1\minFunc\.svn\text-base\ArmijoBacktrack.m.svn-base, 3204 , 2015-12-28

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