#!/usr/bin/env python3
import math
import torch
from linear_operator.operators import KroneckerProductLinearOperator
from gpytorch.kernels.matern_kernel import MaternKernel
sqrt5 = math.sqrt(5)
five_thirds = 5.0 / 3.0
[docs]class Matern52KernelGrad(MaternKernel):
r"""
Computes a covariance matrix of the Matern52 kernel that models the covariance
between the values and partial derivatives for inputs :math:`\mathbf{x_1}`
and :math:`\mathbf{x_2}`.
See :class:`gpytorch.kernels.Kernel` for descriptions of the lengthscale options.
.. note::
This kernel does not have an `outputscale` parameter. To add a scaling parameter,
decorate this kernel with a :class:`gpytorch.kernels.ScaleKernel`.
.. note::
A perfect shuffle permutation is applied after the calculation of the matrix blocks
in order to match the MutiTask ordering.
The Matern52 kernel is defined as
.. math::
k(r) = (1 + \sqrt{5}r + \frac{5}{3} r^2) \exp(- \sqrt{5}r)
where :math:`r` is defined as
.. math::
r(\mathbf{x}^m , \mathbf{x}^n) = \sqrt{\sum_d{\frac{(x^m_d - x^n_d)^2}{l^2_d}}}
The first gradient block containing :math:`\frac{\partial k}{\partial x^n_i}` is defined as
.. math::
\frac{\partial k}{\partial x^n_i} = \frac{5}{3} \left( 1 + \sqrt{5}r \right) \exp(- \sqrt{5}r) \left(\frac{x^m_i - x^n_i}{l^2_i} \right)
The second gradient block containing :math:`\frac{\partial k}{\partial x^m_j}` is defined as
.. math::
\frac{\partial k}{\partial x^m_j} = - \frac{5}{3} \left( 1 + \sqrt{5}r \right) \exp(- \sqrt{5}r) \left(\frac{x^m_j - x^n_j}{l^2_j} \right)
The Hessian block containing :math:`\frac{\partial^2 k}{\partial x^m_j \partial x^n_i}` is defined as
.. math::
\frac{\partial^2 k}{\partial x^m_j \partial x^n_i} = - \frac{5}{3} \exp(- \sqrt{5}r) \left[ 5\left(\frac{x^m_i - x^n_i}{l^2_i} \right) \left( \frac{x^m_j - x^n_j}{l^2_j} \right) - \frac{\delta_{ij}}{l^2_i} \left( 1 + \sqrt{5}r \right) \right]
The derivations can be found `here <https://github.com/cornellius-gp/gpytorch/pull/2512>`__.
:param ard_num_dims: Set this if you want a separate lengthscale for each input
dimension. It should be `d` if x1 is a `n x d` matrix. (Default: `None`.)
:param batch_shape: Set this if you want a separate lengthscale for each batch of input
data. It should be :math:`B_1 \times \ldots \times B_k` if :math:`\mathbf x1` is
a :math:`B_1 \times \ldots \times B_k \times N \times D` tensor.
:param active_dims: Set this if you want to compute the covariance of only
a few input dimensions. The ints corresponds to the indices of the
dimensions. (Default: `None`.)
:param lengthscale_prior: Set this if you want to apply a prior to the
lengthscale parameter. (Default: `None`)
:param lengthscale_constraint: Set this if you want to apply a constraint
to the lengthscale parameter. (Default: `Positive`.)
:param eps: The minimum value that the lengthscale can take (prevents
divide by zero errors). (Default: `1e-6`.)
:ivar torch.Tensor lengthscale: The lengthscale parameter. Size/shape of parameter depends on the
ard_num_dims and batch_shape arguments.
Example:
>>> x = torch.randn(10, 5)
>>> # Non-batch: Simple option
>>> covar_module = gpytorch.kernels.ScaleKernel(gpytorch.kernels.Matern52KernelGrad())
>>> covar = covar_module(x) # Output: LinearOperator of size (60 x 60), where 60 = n * (d + 1)
>>>
>>> batch_x = torch.randn(2, 10, 5)
>>> # Batch: Simple option
>>> covar_module = gpytorch.kernels.ScaleKernel(gpytorch.kernels.Matern52KernelGrad())
>>> # Batch: different lengthscale for each batch
>>> covar_module = gpytorch.kernels.ScaleKernel(gpytorch.kernels.Matern52KernelGrad(batch_shape=torch.Size([2]))) # noqa: E501
>>> covar = covar_module(x) # Output: LinearOperator of size (2 x 60 x 60)
"""
def __init__(self, **kwargs):
# remove nu in case it was set
kwargs.pop("nu", None)
super(Matern52KernelGrad, self).__init__(nu=2.5, **kwargs)
def forward(self, x1, x2, diag=False, **params):
lengthscale = self.lengthscale
batch_shape = x1.shape[:-2]
n_batch_dims = len(batch_shape)
n1, d = x1.shape[-2:]
n2 = x2.shape[-2]
if not diag:
K = torch.zeros(*batch_shape, n1 * (d + 1), n2 * (d + 1), device=x1.device, dtype=x1.dtype)
distance_matrix = self.covar_dist(x1.div(lengthscale), x2.div(lengthscale), diag=diag, **params)
exp_neg_sqrt5r = torch.exp(-sqrt5 * distance_matrix)
# differences matrix in each dimension to be used for derivatives
# shape of n1 x n2 x d
outer = x1.view(*batch_shape, n1, 1, d) - x2.view(*batch_shape, 1, n2, d)
outer = outer / lengthscale.unsqueeze(-2) ** 2
# shape of n1 x d x n2
outer = torch.transpose(outer, -1, -2).contiguous()
# 1) Kernel block, cov(f^m, f^n)
# shape is n1 x n2
exp_component = torch.exp(-sqrt5 * distance_matrix)
constant_component = (sqrt5 * distance_matrix).add(1).add(five_thirds * distance_matrix**2)
K[..., :n1, :n2] = constant_component * exp_component
# 2) First gradient block, cov(f^m, omega^n_i)
outer1 = outer.view(*batch_shape, n1, n2 * d)
K[..., :n1, n2:] = outer1 * (five_thirds * (1 + sqrt5 * distance_matrix) * exp_neg_sqrt5r).repeat(
[*([1] * (n_batch_dims + 1)), d]
)
# 3) Second gradient block, cov(omega^m_j, f^n)
outer2 = outer.transpose(-1, -3).reshape(*batch_shape, n2, n1 * d)
outer2 = outer2.transpose(-1, -2)
K[..., n1:, :n2] = -outer2 * (five_thirds * (1 + sqrt5 * distance_matrix) * exp_neg_sqrt5r).repeat(
[*([1] * n_batch_dims), d, 1]
)
# 4) Hessian block, cov(omega^m_j, omega^n_i)
outer3 = outer1.repeat([*([1] * n_batch_dims), d, 1]) * outer2.repeat([*([1] * (n_batch_dims + 1)), d])
kp = KroneckerProductLinearOperator(
torch.eye(d, d, device=x1.device, dtype=x1.dtype).repeat(*batch_shape, 1, 1) / lengthscale**2,
torch.ones(n1, n2, device=x1.device, dtype=x1.dtype).repeat(*batch_shape, 1, 1),
)
part1 = -five_thirds * exp_neg_sqrt5r
part2 = 5 * outer3
part3 = 1 + sqrt5 * distance_matrix
K[..., n1:, n2:] = part1.repeat([*([1] * n_batch_dims), d, d]).mul_(
# need to use kp.to_dense().mul instead of kp.to_dense().mul_
# because otherwise a RuntimeError is raised due to how autograd works with
# view + inplace operations in the case of 1-dimensional input
part2.sub_(kp.to_dense().mul(part3.repeat([*([1] * n_batch_dims), d, d])))
)
# Symmetrize for stability
if n1 == n2 and torch.eq(x1, x2).all():
K = 0.5 * (K.transpose(-1, -2) + K)
# Apply a perfect shuffle permutation to match the MutiTask ordering
pi1 = torch.arange(n1 * (d + 1)).view(d + 1, n1).t().reshape((n1 * (d + 1)))
pi2 = torch.arange(n2 * (d + 1)).view(d + 1, n2).t().reshape((n2 * (d + 1)))
K = K[..., pi1, :][..., :, pi2]
return K
else:
if not (n1 == n2 and torch.eq(x1, x2).all()):
raise RuntimeError("diag=True only works when x1 == x2")
# nu is set to 2.5
kernel_diag = super(Matern52KernelGrad, self).forward(x1, x2, diag=True)
grad_diag = (
five_thirds * torch.ones(*batch_shape, n2, d, device=x1.device, dtype=x1.dtype)
) / lengthscale**2
grad_diag = grad_diag.transpose(-1, -2).reshape(*batch_shape, n2 * d)
k_diag = torch.cat((kernel_diag, grad_diag), dim=-1)
pi = torch.arange(n2 * (d + 1)).view(d + 1, n2).t().reshape((n2 * (d + 1)))
return k_diag[..., pi]
def num_outputs_per_input(self, x1, x2):
return x1.size(-1) + 1