Graph convolutional layers
Project description
Graph convolutional layers.
Install
pip install keras-gcn
Usage
GraphConv
import keras
from keras_gru import GraphConv
DATA_DIM = 3
data_layer = keras.layers.Input(shape=(None, DATA_DIM))
edge_layer = keras.layers.Input(shape=(None, None))
conv_layer = GraphConv(
units=32,
step_num=1,
)([data_layer, edge_layer])
step_num is the maximum distance of two nodes that could be considered as neighbors. If step_num is greater than 1, then the inputs of edges must be 0-1 matrices.
GraphMaxPool & GraphAveragePool
Pooling layers with the step_num argument.
Project details
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