Source code for torch_scatter.mean

import torch

from torch_scatter import scatter_add


[docs]def scatter_mean(src, index, dim=-1, out=None, dim_size=None, fill_value=0): r""" | .. image:: https://raw.githubusercontent.com/rusty1s/pytorch_scatter/ master/docs/source/_figures/mean.svg?sanitize=true :align: center :width: 400px | Averages all values from the :attr:`src` tensor into :attr:`out` at the indices specified in the :attr:`index` tensor along a given axis :attr:`dim`.If multiple indices reference the same location, their **contributions average** (`cf.` :meth:`~torch_scatter.scatter_add`). For one-dimensional tensors, the operation computes .. math:: \mathrm{out}_i = \mathrm{out}_i + \frac{1}{N_i} \cdot \sum_j \mathrm{src}_j where :math:`\sum_j` is over :math:`j` such that :math:`\mathrm{index}_j = i`. :math:`N_i` indicates the number of indices referencing :math:`i`. Args: src (Tensor): The source tensor. index (LongTensor): The indices of elements to scatter. dim (int, optional): The axis along which to index. (default: :obj:`-1`) out (Tensor, optional): The destination tensor. (default: :obj:`None`) dim_size (int, optional): If :attr:`out` is not given, automatically create output with size :attr:`dim_size` at dimension :attr:`dim`. If :attr:`dim_size` is not given, a minimal sized output tensor is returned. (default: :obj:`None`) fill_value (int, optional): If :attr:`out` is not given, automatically fill output tensor with :attr:`fill_value`. (default: :obj:`0`) :rtype: :class:`Tensor` .. testsetup:: import torch .. testcode:: from torch_scatter import scatter_mean src = torch.Tensor([[2, 0, 1, 4, 3], [0, 2, 1, 3, 4]]) index = torch.tensor([[4, 5, 4, 2, 3], [0, 0, 2, 2, 1]]) out = src.new_zeros((2, 6)) out = scatter_mean(src, index, out=out) print(out) .. testoutput:: tensor([[0.0000, 0.0000, 4.0000, 3.0000, 1.5000, 0.0000], [1.0000, 4.0000, 2.0000, 0.0000, 0.0000, 0.0000]]) """ out = scatter_add(src, index, dim, out, dim_size, fill_value) count = scatter_add(torch.ones_like(src), index, dim, None, out.size(dim)) return out / count.clamp(min=1)