Example #1
0
    def __init__(self,
                 inputDim,
                 convFilterNum,
                 convFilterDim,
                 convImageSize,
                 poolFilterDim,
                 poolImageSize,
                 hiddenDim,
                 outputDim,
                 seed=1):

        #畳み込み+プーリング付き3層ニューラルネット
        self.inputLayer = layer.InputLayer(inputDim)
        self.convLayer = layer.ConvolutionalLayer(convFilterNum, convFilterDim,
                                                  convImageSize,
                                                  self.inputLayer, seed)
        self.poolLayer = layer.PoolingLayer(poolFilterDim, poolImageSize,
                                            self.convLayer)
        self.hiddenLayer = layer.HiddenLayer(hiddenDim, self.poolLayer, seed)
        self.outputLayer = layer.OutputLayer(outputDim, self.hiddenLayer, seed)

        self.hiddenLayer.setActivator(util.relu)
        self.hiddenLayer.setBackPropagator(learning.backPropReLU)

        # 正解データ
        self.answer = np.zeros(outputDim)
Example #2
0
    def __init__(self, inputDim, hiddenDim, outputDim, seed=1):

        # 三層ニューラルネットワーク
        self.inputLayer = layer.InputLayer(inputDim)
        self.hiddenLayer = layer.HiddenLayer(hiddenDim, self.inputLayer, seed)
        self.outputLayer = layer.OutputLayer(outputDim, self.hiddenLayer, seed)
        # 正解データ
        self.answer = np.zeros(outputDim)
Example #3
0
    def __init__(self, inputDim, hiddenDim, outputDim, seed=1):

        # 三層ニューラルネットワーク
        self.inputLayer = layer.InputLayer(inputDim)
        self.hiddenLayer = layer.HiddenLayer(hiddenDim, self.inputLayer, seed)
        self.outputLayer = layer.OutputLayer(outputDim, self.hiddenLayer, seed)

        self.hiddenLayer.setActivator(util.relu)
        self.hiddenLayer.setBackPropagator(learning.backPropReLU)

        # 正解データ
        self.answer = np.zeros(outputDim)
Example #4
0
 def __init__(self, layers):
     # 输入一个list,存放每一个hiddenLayer的节点数
     self.network = []
     self.network.append(layer.InputLayer())  # 输入层
     i = 0
     while i < len(layers):
         self.network.append(
             layer.HiddenLayer(layers[i], self.network[i], None))
         i = i + 1
     self.network.append(layer.OutputLayer(self.network[i]))
     i = 0
     while i < len(self.network) - 1:
         self.network[i].next_layer = self.network[i + 1]
         if i != 0:
             self.network[i].initialize()  # 对中间层重新进行初始化
         i = i + 1
     self.network[-1].initialize()
Example #5
0
import ioex
import layer
import util

print("### task1 ###")

# 入出力準備
inputM = ioex.InputManager()
outputM = ioex.OutputManager()
testingData = inputM.getMnistTestingData()

# 3層ニューラルネットワーク
inputLayer = layer.InputLayer(28 * 28)
hiddenLayer = layer.HiddenLayer(50, inputLayer, 1, 1)
outputLayer = layer.OutputLayer(10, hiddenLayer, 1, 1)

# ニューラルネットワークの設定
#outputLayer.setActivator(util.correctedSoftmax)

#入出力
loop = True
while (loop):
    # 入力
    targetNum = inputM.selectNumber()
    sample = testingData.getSingleData(targetNum)
    inputLayer.setInput(sample.getImage())

    # 出力
    result = outputLayer.calculate()
    outputM.printMaxLikelihood(result)
    print(result)
Example #6
0
 def _set_layers(self):
     last_layer = self.depth - 1
     self.layers.append(layer.InputLayer(self.form[0]))
     for i in range(1, last_layer):
         self.layers.append(layer.HiddenLayer(self.form[i], [], []))
     self.layers.append(layer.OutputLayer(self.form[last_layer], [], []))
Example #7
0
def inputToHiddenTest():
    inputLayer = inputLayerTest()
    hiddenLayer = layer.HiddenLayer(9, inputLayer)
    hiddenLayer.setWeight(SAMPLE_WEIGHT)
    hiddenLayer.setShift(SAMPLE_SHIFT)
    print(hiddenLayer.calculate())
Example #8
0
def hiddenLayerTest():
    prev = layer.Layer(10)
    hiddenLayer = layer.HiddenLayer(5, prev)
    hiddenLayer.confirmParameters()
Example #9
0
import net
import layer
import random
import neuron
import sys
import time

print "Initialising the training data (golden standard)"
netInputVector = [[0.05, 0.1], [0.1, 0.2]]
netOutputVector = [[0.01, 0.99], [0.04, 0.99]]

print "Setting up the net"
net = net.Net()
inputLayer = layer.InputLayer(2, net, neuron.SigmoidNeuron)
net.setInputLayer(inputLayer)
hiddenLayer1 = layer.HiddenLayer(3, net, neuron.SigmoidNeuron)
net.addHiddenLayer(hiddenLayer1)
hiddenLayer2 = layer.HiddenLayer(5, net, neuron.SigmoidNeuron)
net.addHiddenLayer(hiddenLayer2)
outputLayer = layer.OutputLayer(2, net, neuron.SigmoidNeuron)
net.setOutputLayer(outputLayer)

print "Training the net"
#for index in range(0, len(netInputVector)):
#	net.inputLayer.setActivationVector(netInputVector[index])
#	net.perform()
#	error = net.outputLayer.error(netOutputVector[index])
#	epoch = 1
#	while error > 0.01:
#		net.backpropagate(netOutputVector[index])
#		net.perform()
Example #10
0
def test_hidden_layer():

    print "Testing hidden layer..."

    for k in xrange(5):
        print "Layer %i..." % k

        # random parameters
        input_dim = np.random.randint(1, 100)
        output_dim = np.random.randint(1, 100)
        bias = np.random.randint(2)
        activation = 'tanh' if np.random.randint(2) else 'sigmoid'

        # hidden layer
        hidden_layer = layer.HiddenLayer(input_dim, output_dim, bias,
                                         activation, 'test')

        for i in xrange(20):
            print "%i" % i,

            # tests for dimension 1, 2, 3 and 4
            if i % 4 == 0:
                input = T.vector('input_test')
                input_value = np.random.rand(input_dim).astype(floatX)
            elif i % 4 == 1:
                input = T.matrix('input_test')
                input_value = np.random.rand(
                    np.random.randint(100),
                    input_dim
                ).astype(floatX)
            elif i % 4 == 2:
                input = T.tensor3('input_test')
                input_value = np.random.rand(
                    np.random.randint(50),
                    np.random.randint(50),
                    input_dim
                ).astype(floatX)
            else:
                input = T.tensor4('input_test')
                input_value = np.random.rand(
                    np.random.randint(20),
                    np.random.randint(20),
                    np.random.randint(20),
                    input_dim
                ).astype(floatX)

            output = hidden_layer.link(input)

            expected_value = np.dot(
                input_value,
                hidden_layer.weights.get_value()
            )
            if bias:
                expected_value += hidden_layer.bias.get_value()
            if activation == 'tanh':
                expected_value = np.tanh(expected_value)
            else:
                expected_value = expit(expected_value)

            assert expected_value.shape == input_value.shape[:-1] + (output_dim,)
            np.testing.assert_array_almost_equal(
                output.eval({input: input_value}),
                expected_value
            )

        print "OK"

    print "All tests ran successfully for Hidden Layer."