tf.compat.v1.nn.sufficient_statistics
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Calculate the sufficient statistics for the mean and variance of x
.
tf.compat.v1.nn.sufficient_statistics( x, axes, shift=None, keep_dims=None, name=None, keepdims=None )
These sufficient statistics are computed using the one pass algorithm on an input that's optionally shifted. See: https://en.wikipedia.org/wiki/Algorithms_for_calculating_variance#Computing_shifted_data
For example:
t = [[1, 2, 3], [4, 5, 6]]
sufficient_statistics(t, [1])
(<tf.Tensor: shape=(), dtype=int32, numpy=3>, <tf.Tensor: shape=(2,),
dtype=int32, numpy=array([ 6, 15], dtype=int32)>, <tf.Tensor: shape=(2,),
dtype=int32, numpy=array([14, 77], dtype=int32)>, None)
sufficient_statistics(t, [-1])
(<tf.Tensor: shape=(), dtype=int32, numpy=3>, <tf.Tensor: shape=(2,),
dtype=int32, numpy=array([ 6, 15], dtype=int32)>, <tf.Tensor: shape=(2,),
dtype=int32, numpy=array([14, 77], dtype=int32)>, None)
Args |
x | A Tensor . |
axes | Array of ints. Axes along which to compute mean and variance. As in Python, the axes can also be negative numbers. A negative axis is interpreted as counting from the end of the rank, i.e., axis + rank(values)-th dimension. |
shift | A Tensor containing the value by which to shift the data for numerical stability, or None if no shift is to be performed. A shift close to the true mean provides the most numerically stable results. |
keep_dims | produce statistics with the same dimensionality as the input. |
name | Name used to scope the operations that compute the sufficient stats. |
keepdims | Alias for keep_dims. |
Returns |
Four Tensor objects of the same type as x : - the count (number of elements to average over).
- the (possibly shifted) sum of the elements in the array.
- the (possibly shifted) sum of squares of the elements in the array.
- the shift by which the mean must be corrected or None if
shift is None. |