groupby aggregate mean in pytorch

I have a 2D tensor:

``````samples = torch.Tensor([
[0.1, 0.1],    #-> group / class 1
[0.2, 0.2],    #-> group / class 2
[0.4, 0.4],    #-> group / class 2
[0.0, 0.0]     #-> group / class 0
])
``````

and a label for each sample corresponding to a class:

``````labels = torch.LongTensor([1, 2, 2, 0])
``````

so `len(samples) == len(labels)`. Now I want to calculate the mean for each class / label. Because there are 3 classes (0, 1 and 2) the final vector should have dimension `[n_classes, samples.shape[1]]` So the expected solution should be:

``````result == torch.Tensor([
[0.1, 0.1],
[0.3, 0.3], # -> mean of [0.2, 0.2] and [0.4, 0.4]
[0.0, 0.0]
])
``````

Question: How can this be done in pure pytorch (i.e. no numpy so that I can autograd) and ideally without for loops?

All you need to do is form an mxn matrix (m=num classes, n=num samples) which will select the appropriate weights, and scale the mean appropriately. Then you can perform a matrix multiplication between your newly formed matrix and the samples matrix.

Given your labels, your matrix should be (each row is a class number, each class a sample number and its weight):

``````[[0.0000, 0.0000, 0.0000, 1.0000],
[1.0000, 0.0000, 0.0000, 0.0000],
[0.0000, 0.5000, 0.5000, 0.0000]]
``````

Which you can form as follows:

``````M = torch.zeros(labels.max()+1, len(samples))
M[labels, torch.arange(4)] = 1
M = torch.nn.functional.normalize(M, p=1, dim=1)
torch.mm(M, samples)
``````

Output:

``````tensor([[0.0000, 0.0000],
[0.1000, 0.1000],
[0.3000, 0.3000]])
``````

Note that the output means are correctly sorted in class order.

• great solution thanks! – elyase May 15 at 19:57

Reposting here an answer from @ptrblck_de in the Pytorch forums

``````labels = labels.view(labels.size(0), 1).expand(-1, samples.size(1))

unique_labels, labels_count = labels.unique(dim=0, return_counts=True)

res = torch.zeros_like(unique_labels, dtype=torch.float).scatter_add_(0, labels, samples)
res = res / labels_count.float().unsqueeze(1)
``````