X-Git-Url: https://www.fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=test-dagnn.lua;h=5b266da3ea9e03a6b837f63022ee65b9eecc4198;hb=e6516772e13dd5424f0a1b7e2063a7417614844c;hp=434f662ae37b4bee93bc36ebf8177095d11455a6;hpb=e5030cca047eed4b8c5db172fc52e893b1b1d843;p=dagnn.git diff --git a/test-dagnn.lua b/test-dagnn.lua index 434f662..5b266da 100755 --- a/test-dagnn.lua +++ b/test-dagnn.lua @@ -1,10 +1,75 @@ #!/usr/bin/env luajit +--[[ + + Copyright (c) 2016 Idiap Research Institute, http://www.idiap.ch/ + Written by Francois Fleuret + + This file is free software: you can redistribute it and/or modify + it under the terms of the GNU General Public License version 3 as + published by the Free Software Foundation. + + It is distributed in the hope that it will be useful, but WITHOUT + ANY WARRANTY; without even the implied warranty of MERCHANTABILITY + or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public + License for more details. + + You should have received a copy of the GNU General Public License + along with this file. If not, see . + +]]-- + require 'torch' require 'nn' require 'dagnn' +function checkGrad(model, criterion, input, target) + local params, gradParams = model:getParameters() + + local epsilon = 1e-5 + + local output = model:forward(input) + local loss = criterion:forward(output, target) + local gradOutput = criterion:backward(output, target) + gradParams:zero() + model:backward(input, gradOutput) + local analyticalGradParam = gradParams:clone() + + for i = 1, params:size(1) do + local x = params[i] + + params[i] = x - epsilon + local output0 = model:forward(input) + local loss0 = criterion:forward(output0, target) + + params[i] = x + epsilon + local output1 = model:forward(input) + local loss1 = criterion:forward(output1, target) + + params[i] = x + + local ana = analyticalGradParam[i] + local num = (loss1 - loss0) / (2 * epsilon) + local err + + if num == ana then + err = 0 + else + err = torch.abs(num - ana) / torch.abs(num) + end + + print( + 'CHECK ' + .. err + .. ' checkGrad ' .. i + .. ' analytical ' .. ana + .. ' numerical ' .. num + ) + end + +end + function printTensorTable(t) if torch.type(t) == 'table' then for i, t in pairs(t) do @@ -20,39 +85,58 @@ end torch.setdefaulttensortype('torch.DoubleTensor') torch.manualSeed(2) +-- +--> c ----> e --+ +-- / / \ +-- / / \ +-- input --> a --> b ---> d ----+ g --> output +-- \ / +-- \ / +-- +--> f ---+ + a = nn.Linear(10, 10) b = nn.ReLU() c = nn.Linear(10, 3) d = nn.Linear(10, 3) e = nn.CMulTable() -f = nn.Linear(3, 2) +f = nn.Linear(3, 3) +g = nn.CAddTable() --- a -----> b ---> c ----> e --- --- \ / --- \--> d ---/ --- \ --- \---> f --- +model = nn.DAG() -g = nn.DAG() +model:addEdge(a, b) +model:addEdge(b, c) +model:addEdge(b, d) +model:addEdge(c, e) +model:addEdge(d, e) +model:addEdge(d, f) +model:addEdge(e, g) +model:addEdge(f, g) -g:addEdge(c, e) -g:addEdge(a, b) -g:addEdge(d, e) -g:addEdge(b, c) -g:addEdge(b, d) -g:addEdge(d, f) - -g:setInput({a}) -g:setOutput({e, f}) - -g:print() +model:setInput(a) +model:setOutput(g) input = torch.Tensor(3, 10):uniform() -output = g:updateOutput({input}) +print('******************************************************************') +print('** updateOutput **************************************************') +print('******************************************************************') + +output = model:updateOutput(input):clone() printTensorTable(output) ----------------------------------------------------------------------- +print('******************************************************************') +print('** updateGradInput ***********************************************') +print('******************************************************************') + +gradInput = model:updateGradInput(input, output) + +printTensorTable(gradInput) + +print('******************************************************************') +print('** checkGrad *****************************************************') +print('******************************************************************') + +output:uniform() -gradInput = g:updateGradInput({ input }, output) +checkGrad(model, nn.MSECriterion(), input, output)