Reputation: 1498
I have a neural network model that is created in convnet.js that I have to define using Keras. Does anyone have an idea how can I do that?
neural = {
net : new convnetjs.Net(),
layer_defs : [
{type:'input', out_sx:4, out_sy:4, out_depth:1},
{type:'fc', num_neurons:25, activation:"regression"},
{type:'regression', num_neurons:5}
],
neuralDepth: 1
}
this is what I could do so far. I cannot ve sure if it's correct.
#---Build Model-----
model = models.Sequential()
# Input - Layer
model.add(layers.Dense(4, activation = "relu", input_shape=(4,)))
# Hidden - Layers
model.add(layers.Dense(25, activation = "relu"))
model.add(layers.Dense(5, activation = "relu"))
# Output- Layer
model.add(layers.Dense(1, activation = "linear"))
model.summary()
# Compile Model
model.compile(loss= "mean_squared_error" , optimizer="adam", metrics=["mean_squared_error"])
Upvotes: 1
Views: 144
Reputation: 191
From the Convnet.js doc : "your last layer must be a loss layer ('softmax' or 'svm' for classification, or 'regression' for regression)." Also : "Create a regression layer which takes a list of targets (arbitrary numbers, not necessarily a single discrete class label as in softmax/svm) and backprops the L2 Loss."
It's unclear. I suspect "regression" layer is just another layer of Dense (Fully connected) neurons. The 'regression' word probably refers to linear activity. So, no 'relu' this time ?
Anyway, it would probably look something like (no sequential mode):
from keras.layers import Dense
from keras.models import Model
my_input = Input(shape = (4, ))
x = Dense(25, activation='relu')(x)
x = Dense(4)(x)
my_model = Model(input=my_input, output=x, loss='mse', metrics='mse')
my_model.compile(optimizer=Adam(LEARNING_RATE), loss='binary_crossentropy', metrics=['mse'])
After reading a bit of the docs, the convnet.js seems like a nice project. It would be much better with somebody with neural network knowledge on board.
Upvotes: 1