Tensorflow tutorials include the use of
tf.expand_dims to add a "batch dimension" to a tensor. I have read the docs for this function but it still is rather mysterious to me. Does anyone know exactly under what circumstances this must be used?
My code is below. My intent is to calculate a loss based on the distance between the predicted and actual bins. (E.g. if
predictedBin = 10 and
truthBin = 7 then
binDistanceLoss = 3).
batch_size = tf.size(truthValues_placeholder) labels = tf.expand_dims(truthValues_placeholder, 1) predictedBin = tf.argmax(logits) binDistanceLoss = tf.abs(tf.sub(labels, logits))
In this case, do I need to apply
binDistanceLoss? Thanks in advance.