View source on GitHub |
Adds a pairwise-errors-squared loss to the training procedure. (deprecated)
tf.contrib.losses.mean_pairwise_squared_error(
predictions, labels=None, weights=1.0, scope=None
)
Unlike mean_squared_error
, which is a measure of the differences between
corresponding elements of predictions
and labels
,
mean_pairwise_squared_error
is a measure of the differences between pairs of
corresponding elements of predictions
and labels
.
For example, if labels
=[a, b, c] and predictions
=[x, y, z], there are
three pairs of differences are summed to compute the loss:
loss = [ ((a-b) - (x-y)).^2 + ((a-c) - (x-z)).^2 + ((b-c) - (y-z)).^2 ] / 3
Note that since the inputs are of size [batch_size, d0, ... dN], the
corresponding pairs are computed within each batch sample but not across
samples within a batch. For example, if predictions
represents a batch of
16 grayscale images of dimension [batch_size, 100, 200], then the set of pairs
is drawn from each image, but not across images.
weights
acts as a coefficient for the loss. If a scalar is provided, then
the loss is simply scaled by the given value. If weights
is a tensor of size
[batch_size], then the total loss for each sample of the batch is rescaled
by the corresponding element in the weights
vector.
Args | |
---|---|
predictions
|
The predicted outputs, a tensor of size [batch_size, d0, .. dN]
where N+1 is the total number of dimensions in predictions .
|
labels
|
The ground truth output tensor, whose shape must match the shape of
the predictions tensor.
|
weights
|
Coefficients for the loss a scalar, a tensor of shape [batch_size]
or a tensor whose shape matches predictions .
|
scope
|
The scope for the operations performed in computing the loss. |
Returns | |
---|---|
A scalar Tensor representing the loss value.
|
Raises | |
---|---|
ValueError
|
If the shape of predictions doesn't match that of labels or
if the shape of weights is invalid.
|