TL;DR
The accuracy function tf.metrics.accuracy calculates how often predictions matches labels based on two local variables it creates: total
and count
, that are used to compute the frequency with which logits
matches labels
.
acc, acc_op = tf.metrics.accuracy(labels=tf.argmax(labels, 1),
predictions=tf.argmax(logits,1))
print(sess.run([acc, acc_op]))
print(sess.run([acc]))
# Output
#[0.0, 0.66666669]
#[0.66666669]
- acc (accuracy): simply returns the metrics using
total
and count
, doesnt update the metrics.
- acc_op (update up): updates the metrics.
To understand why the acc returns 0.0
, go through the details below.
Details using a simple example:
logits = tf.placeholder(tf.int64, [2,3])
labels = tf.Variable([[0, 1, 0], [1, 0, 1]])
acc, acc_op = tf.metrics.accuracy(labels=tf.argmax(labels, 1),
predictions=tf.argmax(logits,1))
Initialize the variables:
Since metrics.accuracy
creates two local variables total
and count
, we need to call local_variables_initializer()
to initialize them.
sess = tf.Session()
sess.run(tf.local_variables_initializer())
sess.run(tf.global_variables_initializer())
stream_vars = [i for i in tf.local_variables()]
print(stream_vars)
#[<tf.Variable 'accuracy/total:0' shape=() dtype=float32_ref>,
# <tf.Variable 'accuracy/count:0' shape=() dtype=float32_ref>]
Understanding update ops and accuracy calculation:
print('acc:',sess.run(acc, {logits:[[0,1,0],[1,0,1]]}))
#acc: 0.0
print('[total, count]:',sess.run(stream_vars))
#[total, count]: [0.0, 0.0]
The above returns 0.0 for accuracy as total
and count
are zeros, inspite of giving matching inputs.
print('ops:', sess.run(acc_op, {logits:[[0,1,0],[1,0,1]]}))
#ops: 1.0
print('[total, count]:',sess.run(stream_vars))
#[total, count]: [2.0, 2.0]
With the new inputs, the accuracy is calculated when the update op is called. Note: since all the logits and labels match, we get accuracy of 1.0 and the local variables total
and count
actually give total correctly predicted
and the total comparisons made
.
Now we call accuracy
with the new inputs (not the update ops):
print('acc:', sess.run(acc,{logits:[[1,0,0],[0,1,0]]}))
#acc: 1.0
Accuracy call doesnt update the metrics with the new inputs, it just returns the value using the two local variables. Note: the logits and labels dont match in this case. Now calling update ops again:
print('op:',sess.run(acc_op,{logits:[[0,1,0],[0,1,0]]}))
#op: 0.75
print('[total, count]:',sess.run(stream_vars))
#[total, count]: [3.0, 4.0]
The metrics are updated to new inputs
For more information on how to use the metrics during training and how to reset them during validation, can be found here.