# TensorFlow: Performing this loss computation

My question and problem is stated below the two blocks of code.

# Loss Function

``````def loss(labels, logits, sequence_lengths, label_lengths, logit_lengths):
scores = []
for i in xrange(runner.batch_size):
sequence_length = sequence_lengths[i]
for j in xrange(length):
label_length = label_lengths[i, j]
logit_length = logit_lengths[i, j]

# get top k indices <==> argmax_k(labels[i, j, 0, :], label_length)
top_labels = np.argpartition(labels[i, j, 0, :], -label_length)[-label_length:]
top_logits = np.argpartition(logits[i, j, 0, :], -logit_length)[-logit_length:]

scores.append(edit_distance(top_labels, top_logits))

return np.mean(scores)

# Levenshtein distance
def edit_distance(s, t):
n = s.size
m = t.size
d = np.zeros((n+1, m+1))
d[:, 0] = np.arrange(n+1)
d[0, :] = np.arrange(n+1)

for j in xrange(1, m+1):
for i in xrange(1, n+1):
if s[i] == t[j]:
d[i, j] = d[i-1, j-1]
else:
d[i, j] = min(d[i-1, j] + 1,
d[i, j-1] + 1,
d[i-1, j-1] + 1)

return d[m, n]
``````

# Being used in

I've tried to flatten my code so that everything is happening in one place. Let me know if there are typos/points of confusion.

``````sequence_lengths_placeholder = tf.placeholder(tf.int64, shape=(batch_size))
labels_placeholder = tf.placeholder(tf.float32, shape=(batch_size, max_feature_length, label_size))
label_lengths_placeholder = tf.placeholder(tf.int64, shape=(batch_size, max_feature_length))
loss_placeholder = tf.placeholder(tf.float32, shape=(1))

logit_W = tf.Variable(tf.zeros([lstm_units, label_size]))
logit_b = tf.Variable(tf.zeros([label_size]))

length_W = tf.Variable(tf.zeros([lstm_units, max_length]))
length_b = tf.Variable(tf.zeros([max_length]))

lstm = rnn_cell.BasicLSTMCell(lstm_units)
stacked_lstm = rnn_cell.MultiRNNCell([lstm] * layer_count)

rnn_out, state = rnn.rnn(stacked_lstm, features, dtype=tf.float32, sequence_length=sequence_lengths_placeholder)

logits = tf.concat(1, [tf.reshape(tf.matmul(t, logit_W) + logit_b, [batch_size, 1, 2, label_size]) for t in rnn_out])

logit_lengths = tf.concat(1, [tf.reshape(tf.matmul(t, length_W) + length_b, [batch_size, 1, max_length]) for t in rnn_out])

global_step = tf.Variable(0, name='global_step', trainable=False)
train_op = optimizer.minimize(loss_placeholder, global_step=global_step)

...
...
# Inside training loop

np_labels, np_logits, sequence_lengths, label_lengths, logit_lengths = sess.run([labels_placeholder, logits, sequence_lengths_placeholder, label_lengths_placeholder, logit_lengths], feed_dict=feed_dict)
loss = loss(np_labels, np_logits, sequence_lengths, label_lengths, logit_lengths)
_ = sess.run([train_op], feed_dict={loss_placeholder: loss})
``````

# My issue

The issue is that this is returning the error:

``````  File "runner.py", line 63, in <module>
train_op = optimizer.minimize(loss_placeholder, global_step=global_step)
File "/usr/local/lib/python2.7/dist-packages/tensorflow/python/training/optimizer.py", line 188, in minimize
name=name)
File "/usr/local/lib/python2.7/dist-packages/tensorflow/python/training/optimizer.py", line 277, in apply_gradients

ValueError: No gradients provided for any variable: <all my variables>
``````

So I assume that this is TensorFlow complaining that it can't compute the gradients of my loss because the loss is performed by numpy, outside the scope of TF.

So naturally to fix that I would try and implement this in TensorFlow. The issue is, my `logit_lengths` and `label_lengths` are both Tensors, so when I try and access a single element, I'm returned a Tensor of shape []. This is an issue when I'm trying to use `tf.nn.top_k()` which takes an `Int` for its `k` parameter.

Another issue with that is my `label_lengths` is a Placeholder and since my `loss` value need to be defined before the `optimizer.minimize(loss)` call, I also get an error that says a value needs to be passed for the placeholder.

I'm just wondering how I could try and implement this loss function. Or if I'm missing something obvious.

Edit: After some further reading I see that usually losses like the one I describe are used in validation and in training a surrogate loss that minimizes in the same place as the true loss is used. Does anyone know what surrogate loss is used for an edit distance based scenario like mine?

• In `np_labels, np_logits, sequence_lengths, label_lengths, logit_lengths = sess.run([labels_placeholder, logits, sequence_lengths_placeholder, label_lengths_placeholder, logit_lengths], feed_dict=feed_dict) ` what is your `feed_dict`? You should not have placeholders in the fetches list for session.run. – Saurabh Saxena Oct 11 '16 at 7:22
• @TheMyth The feed_dict actually stores the placeholder values. That's definitely a redundancy, but I think I did that to make the code more succinct for SO. – Aidan Gomez Oct 12 '16 at 16:53