From a9161f30b6950dde3f801e13ab9678cb0a7f4bed Mon Sep 17 00:00:00 2001 From: Hans-Christoph Steiner Date: Fri, 29 Dec 2006 17:39:56 +0000 Subject: changed to follow help file standard svn path=/trunk/externals/ann/; revision=7100 --- helps/ann_mlp-help.pd | 400 ++++++++++++++++++++++++++++++++++++++++++++++++++ 1 file changed, 400 insertions(+) create mode 100755 helps/ann_mlp-help.pd (limited to 'helps/ann_mlp-help.pd') diff --git a/helps/ann_mlp-help.pd b/helps/ann_mlp-help.pd new file mode 100755 index 0000000..6f59c27 --- /dev/null +++ b/helps/ann_mlp-help.pd @@ -0,0 +1,400 @@ +#N canvas 99 68 846 456 12; +#N canvas 181 295 627 328 creation 0; +#X obj 52 235 outlet; +#X msg 49 10 create; +#X msg 72 68 create 2 1; +#X msg 81 97 create 3 1; +#X msg 93 128 create 3 2; +#X msg 59 38 create 3 2 3 3 1 0.7; +#X text 121 7 create with default values; +#X text 236 38 specifying all; +#X text 166 68 2 inputs 1 output; +#X text 176 99 3 inputs 1 output; +#X text 189 128 3 inputs 2 output; +#X text 159 222 TIP:don't set the layers param too high; +#X text 158 179 params: num_input \, num_output \, num_layers \, num_neurons_hidden +\, connection_rate \, learning_rate; +#X connect 1 0 0 0; +#X connect 2 0 0 0; +#X connect 3 0 0 0; +#X connect 4 0 0 0; +#X connect 5 0 0 0; +#X restore 93 68 pd creation examples; +#N canvas 136 60 728 356 run 0; +#X obj 90 219 outlet; +#X msg 123 69 0 1; +#X msg 124 92 1 0; +#X msg 125 115 1 1; +#X msg 126 140 0 0; +#X text 40 17 now you can run your nn passing it a list with inputs +; +#X text 169 70 send a list of data and watch the console for output +; +#X text 39 35 the output is sent as a list of float; +#X text 184 134 these inputs are good for a nn like the one in example1 +directory; +#X connect 1 0 0 0; +#X connect 2 0 0 0; +#X connect 3 0 0 0; +#X connect 4 0 0 0; +#X restore 107 180 pd run the net; +#N canvas 0 0 619 610 other 0; +#X obj 43 401 outlet; +#X msg 102 37 train; +#X msg 103 63 run; +#X msg 152 37 setmode 0; +#X msg 153 63 setmode 1; +#X text 249 40 set training/running mode; +#X text 247 63 training mode currently not implemented; +#N canvas 265 255 690 335 training 0; +#X obj 71 288 outlet; +#X msg 82 195 FANN_TRAIN_INCREMENTAL; +#X msg 82 216 FANN_TRAIN_BATCH; +#X msg 81 238 FANN_TRAIN_RPROP; +#X msg 81 258 FANN_TRAIN_QUICKPROP; +#X text 40 28 you can set the training algorithm simply sending a message +with the name of the algorithm chosen. possible values are: FANN_TRAIN_INCREMENTAL +FANN_TRAIN_BATCH FANN_TRAIN_RPROP FANN_TRAIN_QUICKPROP the default +is: FANN_TRAIN_RPROP see the FANN manual for details on each algorithm: +http://fann.sourceforge.net/html/r1996.html; +#X connect 1 0 0 0; +#X connect 2 0 0 0; +#X connect 3 0 0 0; +#X connect 4 0 0 0; +#X restore 150 153 pd training algorithm; +#X text 360 175 some advanced param; +#N canvas 371 92 698 395 training 0; +#X obj 52 230 outlet; +#X msg 69 118 desired_error 0.01; +#X msg 79 146 max_iterations 500000; +#X msg 90 178 iterations_between_reports 1000; +#X text 58 28 you can change training parameters. see FANN manual for +details (http://fann.sourceforge.net); +#X connect 1 0 0 0; +#X connect 2 0 0 0; +#X connect 3 0 0 0; +#X restore 151 179 pd training params; +#N canvas 371 92 694 391 activation 0; +#X obj 49 335 outlet; +#X text 40 28 you can set ti output activation algorithm passing a +message to nn. see the FANN manual for description of the algorithms +; +#X msg 69 118 set_activation_function_output FANN_THRESHOLD; +#X msg 83 139 set_activation_function_output FANN_THRESHOLD_SYMMETRIC +; +#X msg 95 163 set_activation_function_output FANN_LINEAR; +#X msg 98 184 set_activation_function_output FANN_SIGMOID; +#X msg 106 206 set_activation_function_output FANN_SIGMOID_STEPWISE +; +#X msg 108 233 set_activation_function_output FANN_SIGMOID_SYMMETRIC +; +#X msg 115 256 set_activation_function_output FANN_SIGMOID_SYMMETRIC_STEPWISE +; +#X connect 2 0 0 0; +#X connect 3 0 0 0; +#X connect 4 0 0 0; +#X connect 5 0 0 0; +#X connect 6 0 0 0; +#X connect 7 0 0 0; +#X connect 8 0 0 0; +#X restore 150 203 pd activation algorithm; +#X msg 151 287 details; +#X text 229 285 details on the current nn; +#X msg 145 333 help; +#X connect 1 0 0 0; +#X connect 2 0 0 0; +#X connect 3 0 0 0; +#X connect 4 0 0 0; +#X connect 7 0 0 0; +#X connect 9 0 0 0; +#X connect 10 0 0 0; +#X connect 11 0 0 0; +#X connect 13 0 0 0; +#X restore 128 258 pd other commands; +#N canvas 0 0 653 513 save 0; +#X obj 39 264 outlet; +#X msg 64 20 filename test.net; +#X msg 66 46 save; +#X msg 82 103 load; +#X text 221 19 set the filename; +#X text 214 42 save the net to the file; +#X text 138 104 you can reload it too; +#X text 144 182 nn can be loaded from a file at creation time simply +passing the filename as argument; +#X msg 68 71 save test.net; +#X msg 93 130 load test.net; +#X text 144 217 like [ann_mlp test.net]; +#X connect 1 0 0 0; +#X connect 2 0 0 0; +#X connect 3 0 0 0; +#X connect 8 0 0 0; +#X connect 9 0 0 0; +#X restore 118 218 pd save the net; +#X text 270 66 create a nn; +#X text 244 179 run your net; +#X text 258 215 save your net; +#N canvas 0 0 712 542 tips 0; +#X text 51 84 for better performances inputs value should be normalized +\, all input should have the same range (if one input has a larger +range it will be more "important"). the range of each input should +be 0 centered. so [-1 \, 1] is good [-2 \, 2] is good \, [0 \, 1] not +so good [1 \, 2] is bad. the range sould not be too small ([-0.1 \, +0.1] is bad).; +#X text 41 19 TIPS; +#X text 41 56 inputs; +#X text 39 211 outputs; +#X text 50 235 each class of outputs should have its own output value: +don't use the same output for 2 meanings \, use 2 outputs intead \, +1 for each.; +#X restore 156 303 pd tips; +#X text 270 353 an interface to fann classes (http://fann.sourceforge.net) +; +#X text 272 371 by Davide Morelli - info@davidemorelli.it; +#N canvas 468 204 580 411 train 0; +#X obj 32 241 outlet; +#N canvas 0 0 458 308 train 0; +#N canvas 8 48 990 509 build 0; +#X obj 65 417 textfile; +#X msg 190 337 clear; +#N canvas 0 0 462 312 alternate 0; +#X obj 103 117 + 1; +#X obj 70 119 f 0; +#X obj 70 171 sel 0 1; +#X obj 70 146 mod 2; +#X msg 95 90 0; +#X obj 68 31 inlet; +#X obj 140 40 inlet; +#X obj 140 63 bang; +#X obj 68 55 bang; +#X obj 65 205 outlet; +#X obj 125 206 outlet; +#X text 59 6 bang; +#X text 139 18 reset to 0 without bang; +#X connect 0 0 1 1; +#X connect 1 0 0 0; +#X connect 1 0 3 0; +#X connect 2 0 9 0; +#X connect 2 1 10 0; +#X connect 3 0 2 0; +#X connect 4 0 1 1; +#X connect 5 0 8 0; +#X connect 6 0 7 0; +#X connect 7 0 4 0; +#X connect 8 0 1 0; +#X restore 58 227 pd alternate; +#X obj 24 81 bng 15 250 50 0 empty empty write-once 0 -6 0 8 -262144 +-1 -1; +#X obj 341 183 bng 15 250 50 0 empty empty reset 0 -6 0 8 -262144 -1 +-1; +#N canvas 0 0 466 316 inputs 0; +#X obj 61 153 pack s f f; +#X obj 63 200 pack f f; +#X obj 61 176 unpack s f f; +#X msg 66 223 add \$1 \$2; +#X obj 66 257 outlet; +#X text 120 258 to textfile; +#X obj 24 42 inlet; +#X text 23 22 bang; +#X text 66 77 here go the inputs; +#X obj 94 52 r input1; +#X obj 163 52 r input2; +#X connect 0 0 2 0; +#X connect 1 0 3 0; +#X connect 2 1 1 0; +#X connect 2 2 1 1; +#X connect 3 0 4 0; +#X connect 6 0 0 0; +#X connect 9 0 0 1; +#X connect 10 0 0 2; +#X restore 58 306 pd inputs; +#N canvas 0 0 466 316 outputs 0; +#X obj 61 153 pack s f f; +#X obj 63 200 pack f f; +#X obj 61 176 unpack s f f; +#X msg 66 223 add \$1 \$2; +#X obj 66 257 outlet; +#X text 120 258 to textfile; +#X obj 24 42 inlet; +#X text 23 22 bang; +#X text 66 77 here go the outputs; +#X obj 91 51 r output1; +#X obj 166 51 r output2; +#X connect 0 0 2 0; +#X connect 1 0 3 0; +#X connect 2 1 1 0; +#X connect 2 2 1 1; +#X connect 3 0 4 0; +#X connect 6 0 0 0; +#X connect 9 0 0 1; +#X connect 10 0 0 2; +#X restore 149 284 pd outputs; +#X obj 230 223 f 0; +#X obj 260 223 + 1; +#X obj 239 257 nbx 5 14 -1e+037 1e+037 0 0 empty empty how_many_patterns +0 -6 0 10 -262144 -1 -1 0 256; +#X text 156 406 todo: write header (a line at the beginning of file +with 3 int: how many tests \, num_input \, num_output); +#X obj 122 190 delay 50; +#X obj 115 159 metro 100; +#X floatatom 259 72 5 100 5000 2 msec_between_snapshots - -; +#X obj 127 80 tgl 15 0 empty empty toggle_on-off 0 -6 0 8 -262144 -1 +-1 0 1; +#X obj 219 189 / 2; +#X obj 260 16 loadbang; +#X msg 260 36 100; +#X msg 326 342 write test.txt cr; +#X text 293 224 comment; +#N canvas 262 68 647 603 README 0; +#X text 67 432 please help me getting this patch more usable: - how +to add a line at the very beginning of a text file after i have filled +it? - how to manage inputs and outputs of different sized without forcing +the user to edit the patch?; +#X text 9 63 how to use: 1) modify [pd inputs] and [ps outputs] inserting +[r] objects to receive input data \, and modify [pack]s to handle the +right number of inputs 2) do the same with [pd outputs] 3) click on +reset 4) toggle ON and start collecting data 5) when you are ready +toggle OFF 6) edit [write filename cr( with the actual filename you +want for your training data (always keep the cr after the filename) +7) open the file with training data 8) add a line at the beginning +and write 3 integers: the 1st is the number of training patterns written +(see "how many patterns" number box) \, the 2nd is how many inputs +your ann has \, the 3th is how many outputs e.g. i collected 100 training +snapshots \, for a ann with 10 ins and 2 outs I write: 100 10 2 at +the very beginning of the file now the training file is ready and can +be read from nn via train-on-file command; +#X text 9 7 this tricky sub-patch is usefull to write a file to train +ann and is intended to be used with the nn external; +#X restore 25 16 pd README; +#X text 479 210 by davide morelli info@davidemorelli.it; +#X text 106 14 <--readme!; +#X text 242 283 <--edit here!; +#X text 142 308 <--edit here!; +#X text 429 86 usage: read [pd README] \, edit [pd inputs] and [pd +outputs] \, toggle on and record inputs and outputs \, toggle off when +ready \, write to a file \, edit the file adding a line at the beginning +(see REAMDE); +#X connect 1 0 0 0; +#X connect 2 0 5 0; +#X connect 2 1 6 0; +#X connect 2 1 7 0; +#X connect 3 0 11 0; +#X connect 3 0 2 0; +#X connect 4 0 2 1; +#X connect 4 0 1 0; +#X connect 5 0 0 0; +#X connect 6 0 0 0; +#X connect 7 0 8 0; +#X connect 7 0 9 0; +#X connect 8 0 7 1; +#X connect 11 0 2 0; +#X connect 12 0 11 0; +#X connect 12 0 2 0; +#X connect 13 0 12 1; +#X connect 13 0 15 0; +#X connect 14 0 12 0; +#X connect 15 0 11 1; +#X connect 16 0 17 0; +#X connect 17 0 13 0; +#X connect 18 0 0 0; +#X restore 86 42 pd build training file; +#X msg 88 74 train-on-file test.txt; +#X text 285 45 build a training file; +#X text 287 74 train the nn with the training file; +#X obj 56 139 outlet; +#X connect 1 0 4 0; +#X restore 79 103 pd train you net using a train file; +#N canvas 120 72 892 558 train 0; +#X obj 55 487 outlet; +#X msg 60 31 train; +#X text 126 33 1- set the train mode; +#X text 192 120 be shure you provide the correct numbers of inputs +and outputs; +#X obj 168 202 pack s f f f; +#X obj 197 248 pack f f f; +#X obj 168 225 unpack s f f f; +#X msg 190 464 run; +#X obj 198 170 tgl 15 0 empty empty in1 0 -6 0 8 -262144 -1 -1 0 1 +; +#X obj 228 170 tgl 15 0 empty empty in2 0 -6 0 8 -262144 -1 -1 0 1 +; +#X obj 259 170 tgl 15 0 empty empty output 0 -6 0 8 -262144 -1 -1 0 +1; +#X obj 148 169 bng 15 250 50 0 empty empty train! 0 -6 0 8 -262144 +-1 -1; +#X text 312 160 set inputs and output value \, then send the list clicking +on the "train!" bang; +#X msg 316 261 create 2 1; +#X text 227 464 3- when you are ready switch again to run mode before +exiting; +#X text 315 226 NOTE1: before training with this example you should +have created a nn with 2 ins and 1 out with a command like:; +#N canvas 255 158 517 436 autotrain 0; +#X obj 89 286 outlet; +#X obj 85 87 metro 10; +#X obj 85 38 tgl 15 0 empty empty toggle_training 0 -6 0 8 -262144 +-1 -1 0 1; +#X msg 101 192 0 0 0; +#X msg 126 215 0 1 1; +#X msg 82 168 1 0 1; +#X msg 150 244 1 1 1; +#X obj 82 112 random 4; +#X obj 83 138 sel 0 1 2 3; +#X obj 226 125 f 0; +#X obj 256 124 + 1; +#X floatatom 226 149 8 0 0 0 - - -; +#X text 113 36 <--train OR untile mse is low enough; +#X text 143 51 (you must be in train mode); +#X connect 1 0 7 0; +#X connect 1 0 9 0; +#X connect 2 0 1 0; +#X connect 3 0 0 0; +#X connect 4 0 0 0; +#X connect 5 0 0 0; +#X connect 6 0 0 0; +#X connect 7 0 8 0; +#X connect 8 0 5 0; +#X connect 8 1 3 0; +#X connect 8 2 4 0; +#X connect 8 3 6 0; +#X connect 9 0 10 0; +#X connect 9 0 11 0; +#X connect 10 0 9 1; +#X restore 224 363 pd autotrain OR; +#X text 172 101 2a)- build a list with inputs and desired output; +#X text 336 291 NOTE2: while training the right outlet gives you the +mean square error after each training pattern. continue training until +mse is low enough.; +#X text 221 383 2b) use autotrain for the OR function; +#X connect 1 0 0 0; +#X connect 4 0 6 0; +#X connect 5 0 0 0; +#X connect 6 1 5 0; +#X connect 6 2 5 1; +#X connect 6 3 5 2; +#X connect 7 0 0 0; +#X connect 8 0 4 1; +#X connect 9 0 4 2; +#X connect 10 0 4 3; +#X connect 11 0 4 0; +#X connect 13 0 0 0; +#X connect 16 0 0 0; +#X restore 68 50 pd train it on the fly; +#X text 62 5 there are 2 ways to train your net; +#X text 253 47 on the fly is simpler; +#X text 88 128 with a trainfile the net could be more accurate; +#X connect 1 0 0 0; +#X connect 2 0 0 0; +#X restore 115 119 pd train; +#X text 190 118 train a nn; +#X obj 103 345 print mse; +#X obj 52 373 print out; +#X obj 52 313 ann_mlp; +#X text 9 2 ann_mlp: multi layer perceptrons neural networks in PD +; +#X connect 0 0 14 0; +#X connect 1 0 14 0; +#X connect 2 0 14 0; +#X connect 3 0 14 0; +#X connect 10 0 14 0; +#X connect 14 0 13 0; +#X connect 14 1 12 0; -- cgit v1.2.1