I want to train a neural network in tensorflow with a max-margin loss function using one negative sample per positive sample:
max(0,1 -pos_score +neg_score)
What I'm currently doing is this: The network takes three inputs: input1, and then one positive example input2_pos and one negative example input2_neg. (These are indices to a word embeddings layer.) The network is supposed to calculate a score that expresses how related two examples are. Here's a simplified version of my code:
input1 = tf.placeholder(dtype=tf.int32, shape=[batch_size])
input2_pos = tf.placeholder(dtype=tf.int32, shape=[batch_size])
input2_neg = tf.placeholder(dtype=tf.int32, shape=[batch_size])
# f is a neural network outputting a score
pos_score = f(input1,input2_pos)
neg_score = f(input1,input2_neg)
cost = tf.maximum(0., 1. -pos_score +neg_score)
optimizer= tf.train.GradientDescentOptimizer(learning_rate).minimize(cost)
What I see when I run this, is that like this the network just learns which input holds the positive example - it always predicts a similar score along the lines of:
pos_score = 0.9965983
neg_score = 0.00341663
How can I structure the variables/training so that the network learns the task instead?
I want just one network that takes two inputs and calculates a score expressing the correlation between them, and train it with max-margin loss.
Calculating scores for positive and negative separately does not seem like an option to me, since then it won't backpropagate properly. Another option seems to be randomizing inputs - but then for the loss function I need to know which example is the positive one - inputting that as another parameter would give away the solution again?
Any ideas?