210 lines
6.0 KiB
Python
210 lines
6.0 KiB
Python
import dgl
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import pytest
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import torch
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from utils.graph_cases import get_cases
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from dglgo.model import *
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@pytest.mark.parametrize("g", get_cases(["has_scalar_e_feature"]))
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def test_gcn(g):
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data_info = {"num_nodes": g.num_nodes(), "out_size": 7}
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node_feat = None
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edge_feat = g.edata["scalar_w"]
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# node embedding + not use_edge_weight
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model = GCN(data_info, embed_size=10, use_edge_weight=False)
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model(g, node_feat)
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# node embedding + use_edge_weight
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model = GCN(data_info, embed_size=10, use_edge_weight=True)
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model(g, node_feat, edge_feat)
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data_info["in_size"] = g.ndata["h"].shape[-1]
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node_feat = g.ndata["h"]
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# node feat + not use_edge_weight
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model = GCN(data_info, embed_size=-1, use_edge_weight=False)
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model(g, node_feat)
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# node feat + use_edge_weight
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model = GCN(data_info, embed_size=-1, use_edge_weight=True)
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model(g, node_feat, edge_feat)
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@pytest.mark.parametrize("g", get_cases(["block-bipartite"]))
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def test_gcn_block(g):
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data_info = {"in_size": 10, "out_size": 7}
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blocks = [g]
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node_feat = torch.randn(g.num_src_nodes(), data_info["in_size"])
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edge_feat = torch.abs(torch.randn(g.num_edges()))
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# not use_edge_weight
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model = GCN(data_info, use_edge_weight=False)
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model.forward_block(blocks, node_feat)
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# use_edge_weight
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model = GCN(data_info, use_edge_weight=True)
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model.forward_block(blocks, node_feat, edge_feat)
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@pytest.mark.parametrize("g", get_cases(["has_scalar_e_feature"]))
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def test_gat(g):
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data_info = {"num_nodes": g.num_nodes(), "out_size": 7}
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node_feat = None
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# node embedding
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model = GAT(data_info, embed_size=10)
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model(g, node_feat)
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# node feat
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data_info["in_size"] = g.ndata["h"].shape[-1]
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node_feat = g.ndata["h"]
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model = GAT(data_info, embed_size=-1)
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model(g, node_feat)
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@pytest.mark.parametrize("g", get_cases(["block-bipartite"]))
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def test_gat_block(g):
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data_info = {"in_size": 10, "out_size": 7}
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blocks = [g]
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node_feat = torch.randn(g.num_src_nodes(), data_info["in_size"])
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model = GAT(data_info, num_layers=1, heads=[8])
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model.forward_block(blocks, node_feat)
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@pytest.mark.parametrize("g", get_cases(["has_scalar_e_feature"]))
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def test_gin(g):
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data_info = {"num_nodes": g.num_nodes(), "out_size": 7}
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node_feat = None
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# node embedding
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model = GIN(data_info, embed_size=10)
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model(g, node_feat)
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# node feat
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data_info["in_size"] = g.ndata["h"].shape[-1]
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node_feat = g.ndata["h"]
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model = GIN(data_info, embed_size=-1)
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model(g, node_feat)
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@pytest.mark.parametrize("g", get_cases(["has_scalar_e_feature"]))
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def test_sage(g):
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data_info = {"num_nodes": g.num_nodes(), "out_size": 7}
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node_feat = None
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edge_feat = g.edata["scalar_w"]
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# node embedding
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model = GraphSAGE(data_info, embed_size=10)
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model(g, node_feat)
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model(g, node_feat, edge_feat)
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# node feat
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data_info["in_size"] = g.ndata["h"].shape[-1]
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node_feat = g.ndata["h"]
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model = GraphSAGE(data_info, embed_size=-1)
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model(g, node_feat)
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model(g, node_feat, edge_feat)
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@pytest.mark.parametrize("g", get_cases(["block-bipartite"]))
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def test_sage_block(g):
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data_info = {"in_size": 10, "out_size": 7}
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blocks = [g]
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node_feat = torch.randn(g.num_src_nodes(), data_info["in_size"])
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edge_feat = torch.abs(torch.randn(g.num_edges()))
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model = GraphSAGE(data_info, embed_size=-1)
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model.forward_block(blocks, node_feat)
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model.forward_block(blocks, node_feat, edge_feat)
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@pytest.mark.parametrize("g", get_cases(["has_scalar_e_feature"]))
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def test_sgc(g):
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data_info = {"num_nodes": g.num_nodes(), "out_size": 7}
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node_feat = None
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# node embedding
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model = SGC(data_info, embed_size=10)
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model(g, node_feat)
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# node feat
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data_info["in_size"] = g.ndata["h"].shape[-1]
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node_feat = g.ndata["h"]
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model = SGC(data_info, embed_size=-1)
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model(g, node_feat)
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def test_bilinear():
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data_info = {"in_size": 10, "out_size": 1}
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model = BilinearPredictor(data_info)
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num_pairs = 10
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h_src = torch.randn(num_pairs, data_info["in_size"])
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h_dst = torch.randn(num_pairs, data_info["in_size"])
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model(h_src, h_dst)
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def test_ele():
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data_info = {"in_size": 10, "out_size": 1}
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model = ElementWiseProductPredictor(data_info)
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num_pairs = 10
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h_src = torch.randn(num_pairs, data_info["in_size"])
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h_dst = torch.randn(num_pairs, data_info["in_size"])
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model(h_src, h_dst)
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@pytest.mark.parametrize("virtual_node", [True, False])
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def test_ogbg_gin(virtual_node):
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# Test for ogbg-mol datasets
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data_info = {"name": "ogbg-molhiv", "out_size": 1}
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model = OGBGGIN(
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data_info, embed_size=10, num_layers=2, virtual_node=virtual_node
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)
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num_nodes = 5
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num_edges = 15
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g1 = dgl.rand_graph(num_nodes, num_edges)
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g2 = dgl.rand_graph(num_nodes, num_edges)
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g = dgl.batch([g1, g2])
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num_nodes = g.num_nodes()
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num_edges = g.num_edges()
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nfeat = torch.zeros(num_nodes, 9).long()
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efeat = torch.zeros(num_edges, 3).long()
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model(g, nfeat, efeat)
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# Test for non-ogbg-mol datasets
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data_info = {
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"name": "a_dataset",
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"out_size": 1,
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"node_feat_size": 15,
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"edge_feat_size": 5,
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}
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model = OGBGGIN(
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data_info, embed_size=10, num_layers=2, virtual_node=virtual_node
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)
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nfeat = torch.randn(num_nodes, data_info["node_feat_size"])
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efeat = torch.randn(num_edges, data_info["edge_feat_size"])
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model(g, nfeat, efeat)
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def test_pna():
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# Test for ogbg-mol datasets
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data_info = {"name": "ogbg-molhiv", "delta": 1, "out_size": 1}
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model = PNA(data_info, embed_size=10, num_layers=2)
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num_nodes = 5
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num_edges = 15
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g = dgl.rand_graph(num_nodes, num_edges)
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nfeat = torch.zeros(num_nodes, 9).long()
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model(g, nfeat)
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# Test for non-ogbg-mol datasets
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data_info = {
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"name": "a_dataset",
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"node_feat_size": 15,
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"delta": 1,
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"out_size": 1,
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}
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model = PNA(data_info, embed_size=10, num_layers=2)
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nfeat = torch.randn(num_nodes, data_info["node_feat_size"])
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model(g, nfeat)
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