# Copyright 2015 The TensorFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================== """Operations often used for initializing tensors. All variable initializers returned by functions in this file should have the following signature: def _initializer(shape, dtype=dtypes.float32, partition_info=None): Args: shape: List of `int` representing the shape of the output `Tensor`. Some initializers may also be able to accept a `Tensor`. dtype: (Optional) Type of the output `Tensor`. partition_info: (Optional) variable_scope._PartitionInfo object holding additional information about how the variable is partitioned. May be `None` if the variable is not partitioned. Returns: A `Tensor` of type `dtype` and `shape`. """ from __future__ import absolute_import from __future__ import division from __future__ import print_function import math import numpy as np from tensorflow.python.framework import constant_op from tensorflow.python.framework import dtypes from tensorflow.python.ops import array_ops from tensorflow.python.ops import gen_linalg_ops from tensorflow.python.ops import linalg_ops_impl from tensorflow.python.ops import math_ops from tensorflow.python.ops import random_ops from tensorflow.python.util import deprecation from tensorflow.python.util.deprecation import deprecated from tensorflow.python.util.deprecation import deprecated_arg_values from tensorflow.python.util.tf_export import tf_export @tf_export("keras.initializers.Initializer") class Initializer(object): """Initializer base class: all initializers inherit from this class. """ def __call__(self, shape, dtype=None, partition_info=None): raise NotImplementedError def get_config(self): """Returns the configuration of the initializer as a JSON-serializable dict. Returns: A JSON-serializable Python dict. """ return {} @classmethod def from_config(cls, config): """Instantiates an initializer from a configuration dictionary. Example: ```python initializer = RandomUniform(-1, 1) config = initializer.get_config() initializer = RandomUniform.from_config(config) ``` Args: config: A Python dictionary. It will typically be the output of `get_config`. Returns: An Initializer instance. """ return cls(**config) @tf_export("keras.initializers.Zeros", "initializers.zeros", "zeros_initializer", "keras.initializers.zeros") class Zeros(Initializer): """Initializer that generates tensors initialized to 0.""" def __init__(self, dtype=dtypes.float32): self.dtype = dtypes.as_dtype(dtype) def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype return array_ops.zeros(shape, dtype) def get_config(self): return {"dtype": self.dtype.name} @tf_export("keras.initializers.Ones", "initializers.ones", "ones_initializer", "keras.initializers.ones") class Ones(Initializer): """Initializer that generates tensors initialized to 1.""" def __init__(self, dtype=dtypes.float32): self.dtype = dtypes.as_dtype(dtype) def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype return array_ops.ones(shape, dtype) def get_config(self): return {"dtype": self.dtype.name} @tf_export("keras.initializers.Constant", "initializers.constant", "constant_initializer", "keras.initializers.constant") class Constant(Initializer): """Initializer that generates tensors with constant values. The resulting tensor is populated with values of type `dtype`, as specified by arguments `value` following the desired `shape` of the new tensor (see examples below). The argument `value` can be a constant value, or a list of values of type `dtype`. If `value` is a list, then the length of the list must be less than or equal to the number of elements implied by the desired shape of the tensor. In the case where the total number of elements in `value` is less than the number of elements required by the tensor shape, the last element in `value` will be used to fill the remaining entries. If the total number of elements in `value` is greater than the number of elements required by the tensor shape, the initializer will raise a `ValueError`. Args: value: A Python scalar, list or tuple of values, or a N-dimensional numpy array. All elements of the initialized variable will be set to the corresponding value in the `value` argument. dtype: The data type. verify_shape: Boolean that enables verification of the shape of `value`. If `True`, the initializer will throw an error if the shape of `value` is not compatible with the shape of the initialized tensor. Raises: TypeError: If the input `value` is not one of the expected types. Examples: The following example can be rewritten using a numpy.ndarray instead of the `value` list, even reshaped, as shown in the two commented lines below the `value` list initialization. ```python >>> import numpy as np >>> import tensorflow as tf >>> value = [0, 1, 2, 3, 4, 5, 6, 7] >>> # value = np.array(value) >>> # value = value.reshape([2, 4]) >>> init = tf.constant_initializer(value) >>> print('fitting shape:') >>> with tf.Session(): >>> x = tf.get_variable('x', shape=[2, 4], initializer=init) >>> x.initializer.run() >>> print(x.eval()) fitting shape: [[ 0. 1. 2. 3.] [ 4. 5. 6. 7.]] >>> print('larger shape:') >>> with tf.Session(): >>> x = tf.get_variable('x', shape=[3, 4], initializer=init) >>> x.initializer.run() >>> print(x.eval()) larger shape: [[ 0. 1. 2. 3.] [ 4. 5. 6. 7.] [ 7. 7. 7. 7.]] >>> print('smaller shape:') >>> with tf.Session(): >>> x = tf.get_variable('x', shape=[2, 3], initializer=init) ValueError: Too many elements provided. Needed at most 6, but received 8 >>> print('shape verification:') >>> init_verify = tf.constant_initializer(value, verify_shape=True) >>> with tf.Session(): >>> x = tf.get_variable('x', shape=[3, 4], initializer=init_verify) TypeError: Expected Tensor's shape: (3, 4), got (8,). ``` """ def __init__(self, value=0, dtype=dtypes.float32, verify_shape=False): if not (np.isscalar(value) or isinstance(value, (list, tuple, np.ndarray))): raise TypeError( "Invalid type for initial value: %s (expected Python scalar, list or " "tuple of values, or numpy.ndarray)." % type(value)) self.value = value self.dtype = dtypes.as_dtype(dtype) self._verify_shape = verify_shape def __call__(self, shape, dtype=None, partition_info=None, verify_shape=None): if dtype is None: dtype = self.dtype if verify_shape is None: verify_shape = self._verify_shape return constant_op.constant( self.value, dtype=dtype, shape=shape, verify_shape=verify_shape) def get_config(self): # We don't include `verify_shape` for compatibility with Keras. # `verify_shape` should be passed as an argument to `__call__` rather # than as a constructor argument: conceptually it isn't a property # of the initializer. return {"value": self.value, "dtype": self.dtype.name} @tf_export("initializers.random_uniform", "random_uniform_initializer") class RandomUniform(Initializer): """Initializer that generates tensors with a uniform distribution. Args: minval: A python scalar or a scalar tensor. Lower bound of the range of random values to generate. maxval: A python scalar or a scalar tensor. Upper bound of the range of random values to generate. Defaults to 1 for float types. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. """ def __init__(self, minval=0, maxval=None, seed=None, dtype=dtypes.float32): self.minval = minval self.maxval = maxval self.seed = seed self.dtype = dtypes.as_dtype(dtype) def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype return random_ops.random_uniform( shape, self.minval, self.maxval, dtype, seed=self.seed) def get_config(self): return { "minval": self.minval, "maxval": self.maxval, "seed": self.seed, "dtype": self.dtype.name } @tf_export("initializers.random_normal", "random_normal_initializer") class RandomNormal(Initializer): """Initializer that generates tensors with a normal distribution. Args: mean: a python scalar or a scalar tensor. Mean of the random values to generate. stddev: a python scalar or a scalar tensor. Standard deviation of the random values to generate. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. Only floating point types are supported. """ def __init__(self, mean=0.0, stddev=1.0, seed=None, dtype=dtypes.float32): self.mean = mean self.stddev = stddev self.seed = seed self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype return random_ops.random_normal( shape, self.mean, self.stddev, dtype, seed=self.seed) def get_config(self): return { "mean": self.mean, "stddev": self.stddev, "seed": self.seed, "dtype": self.dtype.name } @tf_export("initializers.truncated_normal", "truncated_normal_initializer") class TruncatedNormal(Initializer): """Initializer that generates a truncated normal distribution. These values are similar to values from a `random_normal_initializer` except that values more than two standard deviations from the mean are discarded and re-drawn. This is the recommended initializer for neural network weights and filters. Args: mean: a python scalar or a scalar tensor. Mean of the random values to generate. stddev: a python scalar or a scalar tensor. Standard deviation of the random values to generate. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. Only floating point types are supported. """ def __init__(self, mean=0.0, stddev=1.0, seed=None, dtype=dtypes.float32): self.mean = mean self.stddev = stddev self.seed = seed self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype return random_ops.truncated_normal( shape, self.mean, self.stddev, dtype, seed=self.seed) def get_config(self): return { "mean": self.mean, "stddev": self.stddev, "seed": self.seed, "dtype": self.dtype.name } @tf_export("initializers.uniform_unit_scaling", "uniform_unit_scaling_initializer") @deprecation.deprecated_endpoints("uniform_unit_scaling_initializer") class UniformUnitScaling(Initializer): """Initializer that generates tensors without scaling variance. When initializing a deep network, it is in principle advantageous to keep the scale of the input variance constant, so it does not explode or diminish by reaching the final layer. If the input is `x` and the operation `x * W`, and we want to initialize `W` uniformly at random, we need to pick `W` from [-sqrt(3) / sqrt(dim), sqrt(3) / sqrt(dim)] to keep the scale intact, where `dim = W.shape[0]` (the size of the input). A similar calculation for convolutional networks gives an analogous result with `dim` equal to the product of the first 3 dimensions. When nonlinearities are present, we need to multiply this by a constant `factor`. See [Sussillo et al., 2014](https://arxiv.org/abs/1412.6558) ([pdf](http://arxiv.org/pdf/1412.6558.pdf)) for deeper motivation, experiments and the calculation of constants. In section 2.3 there, the constants were numerically computed: for a linear layer it's 1.0, relu: ~1.43, tanh: ~1.15. Args: factor: Float. A multiplicative factor by which the values will be scaled. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. Only floating point types are supported. """ @deprecated(None, "Use tf.initializers.variance_scaling instead with distribution=" "uniform to get equivalent behavior.") def __init__(self, factor=1.0, seed=None, dtype=dtypes.float32): self.factor = factor self.seed = seed self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype scale_shape = shape if partition_info is not None: scale_shape = partition_info.full_shape input_size = 1.0 # Estimating input size is not possible to do perfectly, but we try. # The estimate, obtained by multiplying all dimensions but the last one, # is the right thing for matrix multiply and convolutions (see above). for dim in scale_shape[:-1]: input_size *= float(dim) # Avoid errors when initializing zero-size tensors. input_size = max(input_size, 1.0) max_val = math.sqrt(3 / input_size) * self.factor return random_ops.random_uniform( shape, -max_val, max_val, dtype, seed=self.seed) def get_config(self): return {"factor": self.factor, "seed": self.seed, "dtype": self.dtype.name} @tf_export("keras.initializers.VarianceScaling", "initializers.variance_scaling", "variance_scaling_initializer") @deprecation.deprecated_endpoints("variance_scaling_initializer") class VarianceScaling(Initializer): """Initializer capable of adapting its scale to the shape of weights tensors. With `distribution="truncated_normal" or "untruncated_normal"`, samples are drawn from a truncated/untruncated normal distribution with a mean of zero and a standard deviation (after truncation, if used) `stddev = sqrt(scale / n)` where n is: - number of input units in the weight tensor, if mode = "fan_in" - number of output units, if mode = "fan_out" - average of the numbers of input and output units, if mode = "fan_avg" With `distribution="uniform"`, samples are drawn from a uniform distribution within [-limit, limit], with `limit = sqrt(3 * scale / n)`. Args: scale: Scaling factor (positive float). mode: One of "fan_in", "fan_out", "fan_avg". distribution: Random distribution to use. One of "normal", "uniform". seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. Only floating point types are supported. Raises: ValueError: In case of an invalid value for the "scale", mode" or "distribution" arguments. """ @deprecated_arg_values( None, "`normal` is a deprecated alias for `truncated_normal`", distribution="normal") def __init__(self, scale=1.0, mode="fan_in", distribution="truncated_normal", seed=None, dtype=dtypes.float32): if scale <= 0.: raise ValueError("`scale` must be positive float.") if mode not in {"fan_in", "fan_out", "fan_avg"}: raise ValueError("Invalid `mode` argument:", mode) distribution = distribution.lower() if distribution not in {"normal", "uniform", "truncated_normal", "untruncated_normal"}: raise ValueError("Invalid `distribution` argument:", distribution) self.scale = scale self.mode = mode self.distribution = distribution self.seed = seed self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype scale = self.scale scale_shape = shape if partition_info is not None: scale_shape = partition_info.full_shape fan_in, fan_out = _compute_fans(scale_shape) if self.mode == "fan_in": scale /= max(1., fan_in) elif self.mode == "fan_out": scale /= max(1., fan_out) else: scale /= max(1., (fan_in + fan_out) / 2.) if self.distribution == "normal" or self.distribution == "truncated_normal": # constant taken from scipy.stats.truncnorm.std(a=-2, b=2, loc=0., scale=1.) stddev = math.sqrt(scale) / .87962566103423978 return random_ops.truncated_normal( shape, 0.0, stddev, dtype, seed=self.seed) elif self.distribution == "untruncated_normal": stddev = math.sqrt(scale) return random_ops.random_normal( shape, 0.0, stddev, dtype, seed=self.seed) else: limit = math.sqrt(3.0 * scale) return random_ops.random_uniform( shape, -limit, limit, dtype, seed=self.seed) def get_config(self): return { "scale": self.scale, "mode": self.mode, "distribution": self.distribution, "seed": self.seed, "dtype": self.dtype.name } @tf_export("keras.initializers.Orthogonal", "initializers.orthogonal", "orthogonal_initializer", "keras.initializers.orthogonal") @deprecation.deprecated_endpoints("orthogonal_initializer") class Orthogonal(Initializer): """Initializer that generates an orthogonal matrix. If the shape of the tensor to initialize is two-dimensional, it is initialized with an orthogonal matrix obtained from the QR decomposition of a matrix of random numbers drawn from a normal distribution. If the matrix has fewer rows than columns then the output will have orthogonal rows. Otherwise, the output will have orthogonal columns. If the shape of the tensor to initialize is more than two-dimensional, a matrix of shape `(shape[0] * ... * shape[n - 2], shape[n - 1])` is initialized, where `n` is the length of the shape vector. The matrix is subsequently reshaped to give a tensor of the desired shape. Args: gain: multiplicative factor to apply to the orthogonal matrix seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. """ def __init__(self, gain=1.0, seed=None, dtype=dtypes.float32): self.gain = gain self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) self.seed = seed def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype # Check the shape if len(shape) < 2: raise ValueError("The tensor to initialize must be " "at least two-dimensional") # Flatten the input shape with the last dimension remaining # its original shape so it works for conv2d num_rows = 1 for dim in shape[:-1]: num_rows *= dim num_cols = shape[-1] flat_shape = (num_cols, num_rows) if num_rows < num_cols else (num_rows, num_cols) # Generate a random matrix a = random_ops.random_normal(flat_shape, dtype=dtype, seed=self.seed) # Compute the qr factorization q, r = gen_linalg_ops.qr(a, full_matrices=False) # Make Q uniform d = array_ops.diag_part(r) q *= math_ops.sign(d) if num_rows < num_cols: q = array_ops.matrix_transpose(q) return self.gain * array_ops.reshape(q, shape) def get_config(self): return {"gain": self.gain, "seed": self.seed, "dtype": self.dtype.name} class ConvolutionDeltaOrthogonal(Initializer): """Initializer that generates a delta orthogonal kernel for ConvNets. The shape of the tensor must have length 3, 4 or 5. The number of input filters must not exceed the number of output filters. The center pixels of the tensor form an orthogonal matrix. Other pixels are set to be zero. See algorithm 2 in [Xiao et al., 2018]: https://arxiv.org/abs/1806.05393 Args: gain: Multiplicative factor to apply to the orthogonal matrix. Default is 1. The 2-norm of an input is multiplied by a factor of 'sqrt(gain)' after applying this convolution. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. """ def __init__(self, gain=1.0, seed=None, dtype=dtypes.float32): self.gain = gain self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) self.seed = seed def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype # Check the shape if len(shape) < 3 or len(shape) > 5: raise ValueError("The tensor to initialize must be at least " "three-dimensional and at most five-dimensional") if shape[-2] > shape[-1]: raise ValueError("In_filters cannot be greater than out_filters.") # Generate a random matrix a = random_ops.random_normal([shape[-1], shape[-1]], dtype=dtype, seed=self.seed) # Compute the qr factorization q, r = gen_linalg_ops.qr(a, full_matrices=False) # Make Q uniform d = array_ops.diag_part(r) q *= math_ops.sign(d) q = q[:shape[-2], :] q *= math_ops.sqrt(math_ops.cast(self.gain, dtype=dtype)) if len(shape) == 3: weight = array_ops.scatter_nd([[(shape[0]-1)//2]], array_ops.expand_dims(q, 0), shape) elif len(shape) == 4: weight = array_ops.scatter_nd([[(shape[0]-1)//2, (shape[1]-1)//2]], array_ops.expand_dims(q, 0), shape) else: weight = array_ops.scatter_nd([[(shape[0]-1)//2, (shape[1]-1)//2, (shape[2]-1)//2]], array_ops.expand_dims(q, 0), shape) return weight def get_config(self): return {"gain": self.gain, "seed": self.seed, "dtype": self.dtype.name} class ConvolutionOrthogonal(Initializer): """Initializer that generates orthogonal kernel for ConvNets. Base class used to construct 1D, 2D and 3D orthogonal kernels for convolution. Args: gain: multiplicative factor to apply to the orthogonal matrix. Default is 1. The 2-norm of an input is multiplied by a factor of 'sqrt(gain)' after applying this convolution. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. """ def __init__(self, gain=1.0, seed=None, dtype=dtypes.float32): self.gain = gain self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) self.seed = seed def __call__(self, shape, dtype=None, partition_info=None): raise NotImplementedError def get_config(self): return {"gain": self.gain, "seed": self.seed, "dtype": self.dtype.name} # Helper functions. def _orthogonal_matrix(self, n): """Construct an n x n orthogonal matrix. Args: n: Dimension. Returns: A n x n orthogonal matrix. """ a = random_ops.random_normal([n, n], dtype=self.dtype, seed=self.seed) if self.seed: self.seed += 1 q, r = gen_linalg_ops.qr(a) d = array_ops.diag_part(r) # make q uniform q *= math_ops.sign(d) return q def _symmetric_projection(self, n): """Compute a n x n symmetric projection matrix. Args: n: Dimension. Returns: A n x n symmetric projection matrix, i.e. a matrix P s.t. P=P*P, P=P^T. """ q = self._orthogonal_matrix(n) # randomly zeroing out some columns mask = math_ops.cast(random_ops.random_normal([n], seed=self.seed) > 0, self.dtype) if self.seed: self.seed += 1 c = math_ops.multiply(q, mask) return math_ops.matmul(c, array_ops.matrix_transpose(c)) class ConvolutionOrthogonal2D(ConvolutionOrthogonal): """Initializer that generates a 2D orthogonal kernel for ConvNets. The shape of the tensor must have length 4. The number of input filters must not exceed the number of output filters. The orthogonality(==isometry) is exact when the inputs are circular padded. There are finite-width effects with non-circular padding (e.g. zero padding). See algorithm 1 in [Xiao et al., 2018]: https://arxiv.org/abs/1806.05393 Args: gain: Multiplicative factor to apply to the orthogonal matrix. Default is 1. This has the effect of scaling the output 2-norm by a factor of `sqrt(gain)`. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. """ def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype if len(shape) != 4: raise ValueError("The tensor to initialize must be four-dimensional") if shape[-2] > shape[-1]: raise ValueError("In_filters cannot be greater than out_filters.") if shape[0] != shape[1]: raise ValueError("Kernel sizes must be equal.") kernel = self._orthogonal_kernel(shape[0], shape[2], shape[3]) kernel *= math_ops.sqrt(math_ops.cast(self.gain, dtype=dtype)) return kernel def _dict_to_tensor(self, x, k1, k2): """Convert a dictionary to a tensor. Args: x: A k1 * k2 dictionary. k1: First dimension of x. k2: Second dimension of x. Returns: A k1 * k2 tensor. """ return array_ops.stack([array_ops.stack([x[i, j] for j in range(k2)]) for i in range(k1)]) def _block_orth(self, p1, p2): """Construct a 2 x 2 kernel. Used to construct orthgonal kernel. Args: p1: A symmetric projection matrix. p2: A symmetric projection matrix. Returns: A 2 x 2 kernel [[p1p2, p1(1-p2)], [(1-p1)p2, (1-p1)(1-p2)]]. Raises: ValueError: If the dimensions of p1 and p2 are different. """ if p1.shape.as_list() != p2.shape.as_list(): raise ValueError("The dimension of the matrices must be the same.") n = p1.shape.as_list()[0] kernel2x2 = {} eye = linalg_ops_impl.eye(n, dtype=self.dtype) kernel2x2[0, 0] = math_ops.matmul(p1, p2) kernel2x2[0, 1] = math_ops.matmul(p1, (eye - p2)) kernel2x2[1, 0] = math_ops.matmul((eye - p1), p2) kernel2x2[1, 1] = math_ops.matmul((eye - p1), (eye - p2)) return kernel2x2 def _matrix_conv(self, m1, m2): """Matrix convolution. Args: m1: A k x k dictionary, each element is a n x n matrix. m2: A l x l dictionary, each element is a n x n matrix. Returns: (k + l - 1) * (k + l - 1) dictionary each element is a n x n matrix. Raises: ValueError: if the entries of m1 and m2 are of different dimensions. """ n = (m1[0, 0]).shape.as_list()[0] if n != (m2[0, 0]).shape.as_list()[0]: raise ValueError("The entries in matrices m1 and m2 " "must have the same dimensions!") k = int(np.sqrt(len(m1))) l = int(np.sqrt(len(m2))) result = {} size = k + l - 1 # Compute matrix convolution between m1 and m2. for i in range(size): for j in range(size): result[i, j] = array_ops.zeros([n, n], self.dtype) for index1 in range(min(k, i + 1)): for index2 in range(min(k, j + 1)): if (i - index1) < l and (j - index2) < l: result[i, j] += math_ops.matmul(m1[index1, index2], m2[i - index1, j - index2]) return result def _orthogonal_kernel(self, ksize, cin, cout): """Construct orthogonal kernel for convolution. Args: ksize: Kernel size. cin: Number of input channels. cout: Number of output channels. Returns: An [ksize, ksize, cin, cout] orthogonal kernel. Raises: ValueError: If cin > cout. """ if cin > cout: raise ValueError("The number of input channels cannot exceed " "the number of output channels.") orth = self._orthogonal_matrix(cout)[0:cin, :] if ksize == 1: return array_ops.expand_dims(array_ops.expand_dims(orth, 0), 0) p = self._block_orth(self._symmetric_projection(cout), self._symmetric_projection(cout)) for _ in range(ksize - 2): temp = self._block_orth(self._symmetric_projection(cout), self._symmetric_projection(cout)) p = self._matrix_conv(p, temp) for i in range(ksize): for j in range(ksize): p[i, j] = math_ops.matmul(orth, p[i, j]) return self._dict_to_tensor(p, ksize, ksize) class ConvolutionOrthogonal1D(ConvolutionOrthogonal): """Initializer that generates a 1D orthogonal kernel for ConvNets. The shape of the tensor must have length 3. The number of input filters must not exceed the number of output filters. The orthogonality(==isometry) is exact when the inputs are circular padded. There are finite-width effects with non-circular padding (e.g. zero padding). See algorithm 1 in [Xiao et al., 2018]: https://arxiv.org/abs/1806.05393 Args: gain: Multiplicative factor to apply to the orthogonal matrix. Default is 1. The 2-norm of an input is multiplied by a factor of 'sqrt(gain)' after applying this convolution. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. """ def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype if len(shape) != 3: raise ValueError("The tensor to initialize must be three-dimensional") if shape[-2] > shape[-1]: raise ValueError("In_filters cannot be greater than out_filters.") kernel = self._orthogonal_kernel(shape[0], shape[-2], shape[-1]) kernel *= math_ops.sqrt(math_ops.cast(self.gain, dtype=dtype)) return kernel def _dict_to_tensor(self, x, k): """Convert a dictionary to a tensor. Args: x: A dictionary of length k. k: Dimension of x. Returns: A tensor with the same dimension. """ return array_ops.stack([x[i] for i in range(k)]) def _block_orth(self, projection_matrix): """Construct a kernel. Used to construct orthgonal kernel. Args: projection_matrix: A symmetric projection matrix of size n x n. Returns: [projection_matrix, (1 - projection_matrix)]. """ n = projection_matrix.shape.as_list()[0] kernel = {} eye = linalg_ops_impl.eye(n, dtype=self.dtype) kernel[0] = projection_matrix kernel[1] = eye - projection_matrix return kernel def _matrix_conv(self, m1, m2): """Matrix convolution. Args: m1: A dictionary of length k, each element is a n x n matrix. m2: A dictionary of length l, each element is a n x n matrix. Returns: (k + l - 1) dictionary each element is a n x n matrix. Raises: ValueError: Ff the entries of m1 and m2 are of different dimensions. """ n = (m1[0]).shape.as_list()[0] if n != (m2[0]).shape.as_list()[0]: raise ValueError("The entries in matrices m1 and m2 " "must have the same dimensions!") k = len(m1) l = len(m2) result = {} size = k + l - 1 # Compute matrix convolution between m1 and m2. for i in range(size): result[i] = array_ops.zeros([n, n], self.dtype) for index in range(min(k, i + 1)): if (i - index) < l: result[i] += math_ops.matmul(m1[index], m2[i - index]) return result def _orthogonal_kernel(self, ksize, cin, cout): """Construct orthogonal kernel for convolution. Args: ksize: Kernel size. cin: Number of input channels. cout: Number of output channels. Returns: An [ksize, ksize, cin, cout] orthogonal kernel. Raises: ValueError: If cin > cout. """ if cin > cout: raise ValueError("The number of input channels cannot exceed " "the number of output channels.") orth = self._orthogonal_matrix(cout)[0:cin, :] if ksize == 1: return array_ops.expand_dims(orth, 0) p = self._block_orth(self._symmetric_projection(cout)) for _ in range(ksize - 2): temp = self._block_orth(self._symmetric_projection(cout)) p = self._matrix_conv(p, temp) for i in range(ksize): p[i] = math_ops.matmul(orth, p[i]) return self._dict_to_tensor(p, ksize) class ConvolutionOrthogonal3D(ConvolutionOrthogonal): """Initializer that generates a 3D orthogonal kernel for ConvNets. The shape of the tensor must have length 5. The number of input filters must not exceed the number of output filters. The orthogonality(==isometry) is exact when the inputs are circular padded. There are finite-width effects with non-circular padding (e.g. zero padding). See algorithm 1 [Xiao et al., 2018] in: https://arxiv.org/abs/1806.05393 Args: gain: Multiplicative factor to apply to the orthogonal matrix. Default is 1. The 2-norm of an input is multiplied by a factor of 'sqrt(gain)' after applying this convolution. seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. """ def __call__(self, shape, dtype=None, partition_info=None): if dtype is None: dtype = self.dtype if len(shape) != 5: raise ValueError("The tensor to initialize must be five-dimensional") if shape[-2] > shape[-1]: raise ValueError("In_filters cannot be greater than out_filters.") if shape[0] != shape[1] or shape[0] != shape[2]: raise ValueError("Kernel sizes must be equal.") kernel = self._orthogonal_kernel(shape[0], shape[-2], shape[-1]) kernel *= math_ops.sqrt(math_ops.cast(self.gain, dtype=dtype)) return kernel def _dict_to_tensor(self, x, k1, k2, k3): """Convert a dictionary to a tensor. Args: x: A k1 * k2 dictionary. k1: First dimension of x. k2: Second dimension of x. k3: Third dimension of x. Returns: A k1 * k2 * k3 tensor. """ return array_ops.stack([array_ops.stack( [array_ops.stack([x[i, j, k] for k in range(k3)]) for j in range(k2)]) for i in range(k1)]) def _block_orth(self, p1, p2, p3): """Construct a 3 x 3 kernel. Used to construct orthgonal kernel. Args: p1: A symmetric projection matrix. p2: A symmetric projection matrix. p3: A symmetric projection matrix. Returns: A 2 x 2 x 2 kernel. Raises: ValueError: If the dimensions of p1, p2 and p3 are different. """ p1_shape = p1.shape.as_list() if p1_shape != p2.shape.as_list() or p1_shape != p3.shape.as_list(): raise ValueError("The dimension of the matrices must be the same.") n = p1_shape[0] eye = linalg_ops_impl.eye(n, dtype=self.dtype) kernel2x2x2 = {} def matmul(p1, p2, p3): return math_ops.matmul(math_ops.matmul(p1, p2), p3) def cast(i, p): """Return p or (1-p).""" return i * p + (1-i) * (eye - p) for i in [0, 1]: for j in [0, 1]: for k in [0, 1]: kernel2x2x2[i, j, k] = matmul(cast(i, p1), cast(j, p2), cast(k, p3)) return kernel2x2x2 def _matrix_conv(self, m1, m2): """Matrix convolution. Args: m1: is a k x k x k dictionary, each element is a n x n matrix. m2: is a l x l x l dictionary, each element is a n x n matrix. Returns: (k + l - 1) x (k + l - 1) x (k + l - 1) dictionary each element is a n x n matrix. Raises: ValueError: if the entries of m1 and m2 are of different dimensions. """ n = (m1[0, 0, 0]).shape.as_list()[0] if n != (m2[0, 0, 0]).shape.as_list()[0]: raise ValueError("The entries in matrices m1 and m2 " "must have the same dimensions!") k = int(np.cbrt(len(m1))) l = int(np.cbrt(len(m2))) result = {} size = k + l - 1 # Compute matrix convolution between m1 and m2. for i in range(size): for j in range(size): for r in range(size): result[i, j, r] = array_ops.zeros([n, n], self.dtype) for index1 in range(min(k, i + 1)): for index2 in range(min(k, j + 1)): for index3 in range(min(k, r + 1)): if (i - index1) < l and (j - index2) < l and (r - index3) < l: result[i, j, r] += math_ops.matmul(m1[index1, index2, index3], m2[i - index1, j - index2, r - index3]) return result def _orthogonal_kernel(self, ksize, cin, cout): """Construct orthogonal kernel for convolution. Args: ksize: Kernel size. cin: Number of input channels. cout: Number of output channels. Returns: An [ksize, ksize, ksize, cin, cout] orthogonal kernel. Raises: ValueError: If cin > cout. """ if cin > cout: raise ValueError("The number of input channels cannot exceed " "the number of output channels.") orth = self._orthogonal_matrix(cout)[0:cin, :] if ksize == 1: return array_ops.expand_dims( array_ops.expand_dims( array_ops.expand_dims(orth, 0), 0), 0) p = self._block_orth(self._symmetric_projection(cout), self._symmetric_projection(cout), self._symmetric_projection(cout)) for _ in range(ksize - 2): temp = self._block_orth(self._symmetric_projection(cout), self._symmetric_projection(cout), self._symmetric_projection(cout)) p = self._matrix_conv(p, temp) for i in range(ksize): for j in range(ksize): for k in range(ksize): p[i, j, k] = math_ops.matmul(orth, p[i, j, k]) return self._dict_to_tensor(p, ksize, ksize, ksize) @tf_export("keras.initializers.Identity", "initializers.identity", "keras.initializers.identity") class Identity(Initializer): """Initializer that generates the identity matrix. Only use for 2D matrices. Args: gain: Multiplicative factor to apply to the identity matrix. dtype: The type of the output. """ def __init__(self, gain=1.0, dtype=dtypes.float32): self.gain = gain self.dtype = _assert_float_dtype(dtypes.as_dtype(dtype)) def __call__(self, shape, dtype=None, partition_info=None): full_shape = shape if partition_info is None else partition_info.full_shape if len(full_shape) != 2: raise ValueError( "Identity matrix initializer can only be used for 2D matrices.") if dtype is None: dtype = self.dtype initializer = linalg_ops_impl.eye(*full_shape, dtype=dtype) if partition_info is not None: initializer = array_ops.slice(initializer, partition_info.var_offset, shape) return self.gain * initializer def get_config(self): return {"gain": self.gain, "dtype": self.dtype.name} @tf_export("glorot_uniform_initializer", "keras.initializers.glorot_uniform", "initializers.glorot_uniform") class GlorotUniform(VarianceScaling): """The Glorot uniform initializer, also called Xavier uniform initializer. It draws samples from a uniform distribution within [-limit, limit] where `limit` is `sqrt(6 / (fan_in + fan_out))` where `fan_in` is the number of input units in the weight tensor and `fan_out` is the number of output units in the weight tensor. Reference: http://jmlr.org/proceedings/papers/v9/glorot10a/glorot10a.pdf Args: seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. Only floating point types are supported. """ def __init__(self, seed=None, dtype=dtypes.float32): super(GlorotUniform, self).__init__( scale=1.0, mode="fan_avg", distribution="uniform", seed=seed, dtype=dtype) def get_config(self): return { "seed": self.seed, "dtype": self.dtype.name } @tf_export("glorot_normal_initializer", "keras.initializers.glorot_normal", "initializers.glorot_normal") @deprecation.deprecated_endpoints("glorot_normal_initializer") class GlorotNormal(VarianceScaling): """The Glorot normal initializer, also called Xavier normal initializer. It draws samples from a truncated normal distribution centered on 0 with `stddev = sqrt(2 / (fan_in + fan_out))` where `fan_in` is the number of input units in the weight tensor and `fan_out` is the number of output units in the weight tensor. Reference: http://jmlr.org/proceedings/papers/v9/glorot10a/glorot10a.pdf Args: seed: A Python integer. Used to create random seeds. See `tf.set_random_seed` for behavior. dtype: The data type. Only floating point types are supported. """ def __init__(self, seed=None, dtype=dtypes.float32): super(GlorotNormal, self).__init__( scale=1.0, mode="fan_avg", distribution="truncated_normal", seed=seed, dtype=dtype) def get_config(self): return { "seed": self.seed, "dtype": self.dtype.name } # Aliases. # pylint: disable=invalid-name zeros_initializer = Zeros ones_initializer = Ones constant_initializer = Constant random_uniform_initializer = RandomUniform random_normal_initializer = RandomNormal truncated_normal_initializer = TruncatedNormal uniform_unit_scaling_initializer = UniformUnitScaling variance_scaling_initializer = VarianceScaling glorot_uniform_initializer = GlorotUniform glorot_normal_initializer = GlorotNormal orthogonal_initializer = Orthogonal identity_initializer = Identity convolutional_delta_orthogonal = ConvolutionDeltaOrthogonal convolutional_orthogonal_1d = ConvolutionOrthogonal1D convolutional_orthogonal_2d = ConvolutionOrthogonal2D convolutional_orthogonal_3d = ConvolutionOrthogonal3D # pylint: enable=invalid-name @tf_export("keras.initializers.lecun_normal", "initializers.lecun_normal") def lecun_normal(seed=None): """LeCun normal initializer. It draws samples from a truncated normal distribution centered on 0 with `stddev = sqrt(1 / fan_in)` where `fan_in` is the number of input units in the weight tensor. Arguments: seed: A Python integer. Used to seed the random generator. Returns: An initializer. References: - [Self-Normalizing Neural Networks](https://arxiv.org/abs/1706.02515) - [Efficient Backprop](http://yann.lecun.com/exdb/publis/pdf/lecun-98b.pdf) """ return VarianceScaling( scale=1., mode="fan_in", distribution="truncated_normal", seed=seed) @tf_export("keras.initializers.lecun_uniform", "initializers.lecun_uniform") def lecun_uniform(seed=None): """LeCun uniform initializer. It draws samples from a uniform distribution within [-limit, limit] where `limit` is `sqrt(3 / fan_in)` where `fan_in` is the number of input units in the weight tensor. Arguments: seed: A Python integer. Used to seed the random generator. Returns: An initializer. References: LeCun 98, Efficient Backprop, http://yann.lecun.com/exdb/publis/pdf/lecun-98b.pdf """ return VarianceScaling( scale=1., mode="fan_in", distribution="uniform", seed=seed) @tf_export("keras.initializers.he_normal", "initializers.he_normal") def he_normal(seed=None): """He normal initializer. It draws samples from a truncated normal distribution centered on 0 with `stddev = sqrt(2 / fan_in)` where `fan_in` is the number of input units in the weight tensor. Arguments: seed: A Python integer. Used to seed the random generator. Returns: An initializer. References: He et al., http://arxiv.org/abs/1502.01852 """ return VarianceScaling( scale=2., mode="fan_in", distribution="truncated_normal", seed=seed) @tf_export("keras.initializers.he_uniform", "initializers.he_uniform") def he_uniform(seed=None): """He uniform variance scaling initializer. It draws samples from a uniform distribution within [-limit, limit] where `limit` is `sqrt(6 / fan_in)` where `fan_in` is the number of input units in the weight tensor. Arguments: seed: A Python integer. Used to seed the random generator. Returns: An initializer. References: He et al., http://arxiv.org/abs/1502.01852 """ return VarianceScaling( scale=2., mode="fan_in", distribution="uniform", seed=seed) # Utility functions. def _compute_fans(shape): """Computes the number of input and output units for a weight shape. Args: shape: Integer shape tuple or TF tensor shape. Returns: A tuple of scalars (fan_in, fan_out). """ if len(shape) < 1: # Just to avoid errors for constants. fan_in = fan_out = 1 elif len(shape) == 1: fan_in = fan_out = shape[0] elif len(shape) == 2: fan_in = shape[0] fan_out = shape[1] else: # Assuming convolution kernels (2D, 3D, or more). # kernel shape: (..., input_depth, depth) receptive_field_size = 1. for dim in shape[:-2]: receptive_field_size *= dim fan_in = shape[-2] * receptive_field_size fan_out = shape[-1] * receptive_field_size return fan_in, fan_out def _assert_float_dtype(dtype): """Validate and return floating point type based on `dtype`. `dtype` must be a floating point type. Args: dtype: The data type to validate. Returns: Validated type. Raises: ValueError: if `dtype` is not a floating point type. """ if not dtype.is_floating: raise ValueError("Expected floating point type, got %s." % dtype) return dtype