# -*- coding: utf-8 -*-
"""Implementation of the ComplexLiteral model."""
from typing import Any, ClassVar, Mapping, Type
import torch
import torch.nn as nn
from .base import LiteralModel
from ...constants import DEFAULT_DROPOUT_HPO_RANGE, DEFAULT_EMBEDDING_HPO_EMBEDDING_DIM_RANGE
from ...losses import BCEWithLogitsLoss, Loss
from ...nn.combinations import ComplExLiteralCombination
from ...nn.modules import ComplExInteraction, LiteralInteraction
from ...triples import TriplesNumericLiteralsFactory
__all__ = [
"ComplExLiteral",
]
[docs]class ComplExLiteral(LiteralModel):
"""An implementation of the LiteralE model with the ComplEx interaction from [kristiadi2018]_.
This module is a configuration of the general :class:`pykeen.models.LiteralModel` with the
:class:`pykeen.nn.modules.ComplExInteraction` and :class:`pykeen.nn.combinations.ComplExLiteralCombination`.
---
name: ComplEx Literal
citation:
author: Kristiadi
year: 2018
link: https://arxiv.org/abs/1802.00934
"""
#: The default strategy for optimizing the model's hyper-parameters
hpo_default: ClassVar[Mapping[str, Any]] = dict(
embedding_dim=DEFAULT_EMBEDDING_HPO_EMBEDDING_DIM_RANGE,
input_dropout=DEFAULT_DROPOUT_HPO_RANGE,
)
#: The default loss function class
loss_default: ClassVar[Type[Loss]] = BCEWithLogitsLoss
#: The default parameters for the default loss function class
loss_default_kwargs: ClassVar[Mapping[str, Any]] = {}
def __init__(
self,
triples_factory: TriplesNumericLiteralsFactory,
embedding_dim: int = 50,
input_dropout: float = 0.2,
**kwargs,
) -> None:
"""Initialize the model."""
super().__init__(
triples_factory=triples_factory,
interaction=LiteralInteraction(
base=ComplExInteraction(),
combination=ComplExLiteralCombination(
entity_embedding_dim=embedding_dim,
literal_embedding_dim=triples_factory.numeric_literals.shape[-1],
input_dropout=input_dropout,
),
),
entity_representations_kwargs=[
dict(
shape=embedding_dim,
initializer=nn.init.xavier_normal_,
dtype=torch.complex64,
),
],
relation_representations_kwargs=[
dict(
shape=embedding_dim,
initializer=nn.init.xavier_normal_,
dtype=torch.complex64,
),
],
**kwargs,
)