Knowledge Graph Completion Method Combined With Adaptive Enhanced
Semantic Information
Abstract
Translation models tend to ignore the rich semantic information in
triads in the process of knowledge graph complementation. To remedy this
shortcoming, this paper constructs a knowledge graph complementation
method that incorporates adaptively enhanced semantic information. The
hidden semantic information inherent in the triad is obtained by
fine-tuning the BERT model, and the attention feature embedding method
is used to calculate the semantic attention scores between relations and
entities in positive and negative triads and incorporate them into the
structural information to form a soft constraint rule for semantic
information. The rule is added to the original translation model to
realize the adaptive enhancement of semantic information. In addition,
the method takes into account the effect of high-dimensional vectors on
the effect, and uses the BERT-whitening method to reduce the
dimensionality and generate a more efficient semantic vector
representation. After experimental comparison, the proposed method
performs better on both FB15K and WIN18 datasets, with a numerical
improvement of about 2.6% compared with the original translation model,
which verifies the reasonableness and effectiveness of the method.