"""MXNet Module for Attention-based Graph Neural Network layer"""
# pylint: disable= no-member, arguments-differ, invalid-name
import mxnet as mx
from mxnet.gluon import nn
from .... import function as fn
from ...functional import edge_softmax
from ..utils import normalize
from ....base import DGLError
from ....utils import expand_as_pair
[docs]class AGNNConv(nn.Block):
r"""
Description
-----------
Attention-based Graph Neural Network layer from paper `Attention-based
Graph Neural Network for Semi-Supervised Learning
<https://arxiv.org/abs/1803.03735>`__.
.. math::
H^{l+1} = P H^{l}
where :math:`P` is computed as:
.. math::
P_{ij} = \mathrm{softmax}_i ( \beta \cdot \cos(h_i^l, h_j^l))
where :math:`\beta` is a single scalar parameter.
Parameters
----------
init_beta : float, optional
The :math:`\beta` in the formula, a single scalar parameter.
learn_beta : bool, optional
If True, :math:`\beta` will be learnable parameter.
allow_zero_in_degree : bool, optional
If there are 0-in-degree nodes in the graph, output for those nodes will be invalid
since no message will be passed to those nodes. This is harmful for some applications
causing silent performance regression. This module will raise a DGLError if it detects
0-in-degree nodes in input graph. By setting ``True``, it will suppress the check
and let the users handle it by themselves. Default: ``False``.
Note
----
Zero in-degree nodes will lead to invalid output value. This is because no message
will be passed to those nodes, the aggregation function will be appied on empty input.
A common practice to avoid this is to add a self-loop for each node in the graph if
it is homogeneous, which can be achieved by:
>>> g = ... # a DGLGraph
>>> g = dgl.add_self_loop(g)
Calling ``add_self_loop`` will not work for some graphs, for example, heterogeneous graph
since the edge type can not be decided for self_loop edges. Set ``allow_zero_in_degree``
to ``True`` for those cases to unblock the code and handle zero-in-degree nodes manually.
A common practise to handle this is to filter out the nodes with zero-in-degree when use
after conv.
Example
-------
>>> import dgl
>>> import numpy as np
>>> import mxnet as mx
>>> from dgl.nn import AGNNConv
>>>
>>> g = dgl.graph(([0,1,2,3,2,5], [1,2,3,4,0,3]))
>>> g = dgl.add_self_loop(g)
>>> feat = mx.nd.ones((6, 10))
>>> conv = AGNNConv()
>>> conv.initialize(ctx=mx.cpu(0))
>>> res = conv(g, feat)
>>> res
[[1. 1. 1. 1. 1. 1. 1. 1. 1. 1.]
[1. 1. 1. 1. 1. 1. 1. 1. 1. 1.]
[1. 1. 1. 1. 1. 1. 1. 1. 1. 1.]
[1. 1. 1. 1. 1. 1. 1. 1. 1. 1.]
[1. 1. 1. 1. 1. 1. 1. 1. 1. 1.]
[1. 1. 1. 1. 1. 1. 1. 1. 1. 1.]]
<NDArray 6x10 @cpu(0)>
"""
def __init__(self,
init_beta=1.,
learn_beta=True,
allow_zero_in_degree=False):
super(AGNNConv, self).__init__()
self._allow_zero_in_degree = allow_zero_in_degree
with self.name_scope():
self.beta = self.params.get('beta',
shape=(1,),
grad_req='write' if learn_beta else 'null',
init=mx.init.Constant(init_beta))
def set_allow_zero_in_degree(self, set_value):
r"""
Description
-----------
Set allow_zero_in_degree flag.
Parameters
----------
set_value : bool
The value to be set to the flag.
"""
self._allow_zero_in_degree = set_value
[docs] def forward(self, graph, feat):
r"""
Description
-----------
Compute AGNN layer.
Parameters
----------
graph : DGLGraph
The graph.
feat : mxnet.NDArray
The input feature of shape :math:`(N, *)` :math:`N` is the
number of nodes, and :math:`*` could be of any shape.
If a pair of mxnet.NDArray is given, the pair must contain two tensors of shape
:math:`(N_{in}, *)` and :math:`(N_{out}, *)`, the :math:`*` in the later
tensor must equal the previous one.
Returns
-------
mxnet.NDArray
The output feature of shape :math:`(N, *)` where :math:`*`
should be the same as input shape.
Raises
------
DGLError
If there are 0-in-degree nodes in the input graph, it will raise DGLError
since no message will be passed to those nodes. This will cause invalid output.
The error can be ignored by setting ``allow_zero_in_degree`` parameter to ``True``.
"""
with graph.local_scope():
if not self._allow_zero_in_degree:
if graph.in_degrees().min() == 0:
raise DGLError('There are 0-in-degree nodes in the graph, '
'output for those nodes will be invalid. '
'This is harmful for some applications, '
'causing silent performance regression. '
'Adding self-loop on the input graph by '
'calling `g = dgl.add_self_loop(g)` will resolve '
'the issue. Setting ``allow_zero_in_degree`` '
'to be `True` when constructing this module will '
'suppress the check and let the code run.')
feat_src, feat_dst = expand_as_pair(feat, graph)
graph.srcdata['h'] = feat_src
graph.srcdata['norm_h'] = normalize(feat_src, p=2, axis=-1)
if isinstance(feat, tuple) or graph.is_block:
graph.dstdata['norm_h'] = normalize(feat_dst, p=2, axis=-1)
# compute cosine distance
graph.apply_edges(fn.u_dot_v('norm_h', 'norm_h', 'cos'))
cos = graph.edata.pop('cos')
e = self.beta.data(feat_src.context) * cos
graph.edata['p'] = edge_softmax(graph, e)
graph.update_all(fn.u_mul_e('h', 'p', 'm'), fn.sum('m', 'h'))
return graph.dstdata.pop('h')