Reputation: 1036
I have a torch tensor with shape (batch_size, number_maps, x_val, y_val). The tensor is normalized with a sigmoid function, so within range [0, 1]
. I want to find the covariance for each map, so I want to have a tensor with shape (batch_size, number_maps, 2, 2). As far as I know, there is no torch.cov()
function as in numpy. How can I efficiently calculate the covariance without converting it to numpy?
Edit:
def get_covariance(tensor):
bn, nk, w, h = tensor.shape
tensor_reshape = tensor.reshape(bn, nk, 2, -1)
x = tensor_reshape[:, :, 0, :]
y = tensor_reshape[:, :, 1, :]
mean_x = torch.mean(x, dim=2).unsqueeze(-1)
mean_y = torch.mean(y, dim=2).unsqueeze(-1)
xx = torch.sum((x - mean_x) * (x - mean_x), dim=2).unsqueeze(-1) / (h*w - 1)
xy = torch.sum((x - mean_x) * (y - mean_y), dim=2).unsqueeze(-1) / (h*w - 1)
yx = xy
yy = torch.sum((y - mean_y) * (y - mean_y), dim=2).unsqueeze(-1) / (h*w - 1)
cov = torch.cat((xx, xy, yx, yy), dim=2)
cov = cov.reshape(bn, nk, 2, 2)
return cov
I tried the following now, but I m pretty sure it's not correct.
Upvotes: 2
Views: 6752
Reputation: 501
You could try the function suggested on Github:
def cov(x, rowvar=False, bias=False, ddof=None, aweights=None):
"""Estimates covariance matrix like numpy.cov"""
# ensure at least 2D
if x.dim() == 1:
x = x.view(-1, 1)
# treat each column as a data point, each row as a variable
if rowvar and x.shape[0] != 1:
x = x.t()
if ddof is None:
if bias == 0:
ddof = 1
else:
ddof = 0
w = aweights
if w is not None:
if not torch.is_tensor(w):
w = torch.tensor(w, dtype=torch.float)
w_sum = torch.sum(w)
avg = torch.sum(x * (w/w_sum)[:,None], 0)
else:
avg = torch.mean(x, 0)
# Determine the normalization
if w is None:
fact = x.shape[0] - ddof
elif ddof == 0:
fact = w_sum
elif aweights is None:
fact = w_sum - ddof
else:
fact = w_sum - ddof * torch.sum(w * w) / w_sum
xm = x.sub(avg.expand_as(x))
if w is None:
X_T = xm.t()
else:
X_T = torch.mm(torch.diag(w), xm).t()
c = torch.mm(X_T, xm)
c = c / fact
return c.squeeze()
https://github.com/pytorch/pytorch/issues/19037
Upvotes: 3