Source code for KGE.models.translating_based.UM

"""An implementation of UM (Unstructured Model)
"""

import logging
import numpy as np
import tensorflow as tf
from ..base_model.TranslatingModel import TranslatingModel
from ...score import LpDistancePow
from ...loss import PairwiseHingeLoss
from ...ns_strategy import UniformStrategy
from ...constraint import normalized_embeddings


logging.getLogger().setLevel(logging.INFO)

[docs]class UM(TranslatingModel): """An implementation of UM (Unstructured Model) from `[brodes 2014] <https://link.springer.com/content/pdf/10.1007%2Fs10994-013-5363-6.pdf>`_. UM is a simple version of TransE which do not consider relation, so it can't distinguish different relations. The score of :math:`(h,r,t)` is: .. math:: f(h,r,t) = s(\\textbf{e}_h, \\textbf{e}_t) where :math:`\\textbf{e}_i \in \mathbb{R}^k` are vector representations of the entities, \n and :math:`s` is a scoring function (:py:mod:`KGE.score`) that scores the plausibility of matching between :math:`(translation, predicate)`. \n By default, using :py:mod:`KGE.score.LpDistancePow`, negative squared L2-distance: .. math:: s(\\textbf{e}_h, \\textbf{e}_t) = - \left\| \\textbf{e}_h-\\textbf{e}_t \\right\|_2^2 You can change to L1-distance by giving :code:`score_fn=LpDistancePow(p=1)` in :py:func:`__init__`, or change any score function you like by specifying :code:`score_fn` in :py:func:`__init__`. If :code:`constraint=True` given in :py:func:`__init__`, renormalized :math:`\left\| \\textbf{e}_i \\right\|_2 = 1` to have unit length every iteration described in `original UM paper <https://link.springer.com/content/pdf/10.1007%2Fs10994-013-5363-6.pdf>`_. """
[docs] def __init__(self, embedding_params, negative_ratio, corrupt_side, score_fn=LpDistancePow(p=2), loss_fn=PairwiseHingeLoss(margin=1), ns_strategy=UniformStrategy, constraint=True, n_workers=1): """Initialized UM Parameters ---------- embedding_params : dict embedding dimension parameters, should have key :code:`'embedding_size'` for embedding dimension :math:`k` negative_ratio : int number of negative sample corrupt_side : str corrupt from which side while trainging, can be :code:`'h'`, :code:`'t'`, or :code:`'h+t'` score_fn : function, optional scoring function, by default :py:mod:`KGE.score.LpDistancePow` loss_fn : class, optional loss function class :py:mod:`KGE.loss.Loss`, by default :py:mod:`KGE.loss.PairwiseHingeLoss` ns_strategy : function, optional negative sampling strategy, by default :py:func:`KGE.ns_strategy.uniform_strategy` constraint : bool, optional conduct constraint or not, by default True n_workers : int, optional number of workers for negative sampling, by default 1 """ super(UM, self).__init__(embedding_params, negative_ratio, corrupt_side, score_fn, loss_fn, ns_strategy, n_workers) self.constraint = constraint
def _init_embeddings(self, seed): """Initialized the UM embeddings. If :code:`model_weight_initial` not given in :py:func:`train`, initialized embeddings randomly, otherwise, initialized from :code:`model_weight_initial`. Parameters ---------- seed : int random seed """ if self._model_weights_initial is None: assert self.embedding_params.get("embedding_size") is not None, "'embedding_size' should be given in embedding_params when using UM" limit = np.sqrt(6.0 / self.embedding_params["embedding_size"]) uniform_initializer = tf.initializers.RandomUniform(minval=-limit, maxval=limit, seed=seed) ent_emb = tf.Variable( uniform_initializer([len(self.metadata["ind2ent"]), self.embedding_params["embedding_size"]]), name="entities_embedding", dtype=np.float32 ) self.model_weights = {"ent_emb": ent_emb} else: self._check_model_weights(self._model_weights_initial) self.model_weights = self._model_weights_initial def _check_model_weights(self, model_weights): """Check the model_weights have necessary keys and dimensions Parameters ---------- model_weights : dict model weights to check. """ assert model_weights.get("ent_emb") is not None, "entity embedding should be given in model_weights with key 'ent_emb'" assert list(model_weights["ent_emb"].shape) == [len(self.metadata["ind2ent"]), self.embedding_params["embedding_size"]], \ "shape of 'ent_emb' should be (len(metadata['ind2ent']), embedding_params['embedding_size'])"
[docs] def score_hrt(self, h, r, t): """ Score the triplets :math:`(h,r,t)`. If :code:`h` is :code:`None`, score all entities: :math:`(h_i, r, t)`. \n If :code:`t` is :code:`None`, score all entities: :math:`(h, r, t_i)`. \n :code:`h` and :code:`t` should not be :code:`None` simultaneously. Parameters ---------- h : tf.Tensor or np.ndarray or None index of heads with shape :code:`(n,)` r : tf.Tensor or np.ndarray index of relations with shape :code:`(n,)` t : tf.Tensor or np.ndarray or None index of tails with shape :code:`(n,)` Returns ------- tf.Tensor triplets scores with shape :code:`(n,)` """ h,r,t = super(UM, self).score_hrt(h,r,t) h_emb = tf.nn.embedding_lookup(self.model_weights["ent_emb"], h) t_emb = tf.nn.embedding_lookup(self.model_weights["ent_emb"], t) return self.score_fn(h_emb, t_emb)
def _constraint_loss(self, X): """Perform constraint if necessary. Parameters ---------- X : batch_data batch data Returns ------- tf.Tensor regularization term with shape (1,) """ if self.constraint: self.model_weights["ent_emb"].assign(normalized_embeddings(X=self.model_weights["ent_emb"], p=2, axis=-1, value=1)) return 0