torch_geometric.nn.pool.TopKPooling
- class TopKPooling(in_channels: int, ratio: Union[int, float] = 0.5, min_score: Optional[float] = None, multiplier: float = 1.0, nonlinearity: Union[str, Callable] = 'tanh')[source]
Bases:
Module\(\mathrm{top}_k\) pooling operator from the “Graph U-Nets”, “Towards Sparse Hierarchical Graph Classifiers” and “Understanding Attention and Generalization in Graph Neural Networks” papers.
If
min_score\(\tilde{\alpha}\) isNone, computes:\[ \begin{align}\begin{aligned}\mathbf{y} &= \sigma \left( \frac{\mathbf{X}\mathbf{p}}{\| \mathbf{p} \|} \right)\\\mathbf{i} &= \mathrm{top}_k(\mathbf{y})\\\mathbf{X}^{\prime} &= (\mathbf{X} \odot \mathrm{tanh}(\mathbf{y}))_{\mathbf{i}}\\\mathbf{A}^{\prime} &= \mathbf{A}_{\mathbf{i},\mathbf{i}}\end{aligned}\end{align} \]If
min_score\(\tilde{\alpha}\) is a value in[0, 1], computes:\[ \begin{align}\begin{aligned}\mathbf{y} &= \mathrm{softmax}(\mathbf{X}\mathbf{p})\\\mathbf{i} &= \mathbf{y}_i > \tilde{\alpha}\\\mathbf{X}^{\prime} &= (\mathbf{X} \odot \mathbf{y})_{\mathbf{i}}\\\mathbf{A}^{\prime} &= \mathbf{A}_{\mathbf{i},\mathbf{i}},\end{aligned}\end{align} \]where nodes are dropped based on a learnable projection score \(\mathbf{p}\).
- Parameters
in_channels (int) – Size of each input sample.
ratio (float or int) – The graph pooling ratio, which is used to compute \(k = \lceil \mathrm{ratio} \cdot N \rceil\), or the value of \(k\) itself, depending on whether the type of
ratioisfloatorint. This value is ignored ifmin_scoreis notNone. (default:0.5)min_score (float, optional) – Minimal node score \(\tilde{\alpha}\) which is used to compute indices of pooled nodes \(\mathbf{i} = \mathbf{y}_i > \tilde{\alpha}\). When this value is not
None, theratioargument is ignored. (default:None)multiplier (float, optional) – Coefficient by which features gets multiplied after pooling. This can be useful for large graphs and when
min_scoreis used. (default:1)nonlinearity (str or callable, optional) – The non-linearity \(\sigma\). (default:
"tanh")
- forward(x: Tensor, edge_index: Tensor, edge_attr: Optional[Tensor] = None, batch: Optional[Tensor] = None, attn: Optional[Tensor] = None) Tuple[Tensor, Tensor, Optional[Tensor], Tensor, Tensor, Tensor][source]
- Parameters
x (torch.Tensor) – The node feature matrix.
edge_index (torch.Tensor) – The edge indices.
edge_attr (torch.Tensor, optional) – The edge features. (default:
None)batch (torch.Tensor, optional) – The batch vector \(\mathbf{b} \in {\{ 0, \ldots, B-1\}}^N\), which assigns each node to a specific example. (default:
None)attn (torch.Tensor, optional) – Optional node-level matrix to use for computing attention scores instead of using the node feature matrix
x. (default:None)