torch_geometric.transforms.AddRandomMetaPaths
- class AddRandomMetaPaths(metapaths: List[List[Tuple[str, str, str]]], drop_orig_edge_types: bool = False, keep_same_node_type: bool = False, drop_unconnected_node_types: bool = False, walks_per_node: Union[int, List[int]] = 1, sample_ratio: float = 1.0)[source]
Bases:
BaseTransformAdds additional edge types similar to
AddMetaPaths. The key difference is that the added edge type is given by multiple random walks along the metapath. One might want to increase the number of random walks viawalks_per_nodeto achieve competitive performance withAddMetaPaths.- Parameters
metapaths (List[List[Tuple[str, str, str]]]) – The metapaths described by a list of lists of
(src_node_type, rel_type, dst_node_type)tuples.drop_orig_edge_types (bool, optional) – If set to
True, existing edge types will be dropped. (default:False)keep_same_node_type (bool, optional) – If set to
True, existing edge types between the same node type are not dropped even in casedrop_orig_edge_typesis set toTrue. (default:False)drop_unconnected_node_types (bool, optional) – If set to
True, will drop node types not connected by any edge type. (default:False)walks_per_node (int, List[int], optional) – The number of random walks for each starting node in a metapth. (default:
1)sample_ratio (float, optional) – The ratio of source nodes to start random walks from. (default:
1.0)