Augmenting Knowledge Graphs for Better Link Prediction

03/26/2022
by   Jiang Wang, et al.
0

Embedding methods have demonstrated robust performance on the task of link prediction in knowledge graphs, by mostly encoding entity relationships. Recent methods propose to enhance the loss function with a literal-aware term. In this paper, we propose KGA: a knowledge graph augmentation method that incorporates literals in an embedding model without modifying its loss function. KGA discretizes quantity and year values into bins, and chains these bins both horizontally, modeling neighboring values, and vertically, modeling multiple levels of granularity. KGA is scalable and can be used as a pre-processing step for any existing knowledge graph embedding model. Experiments on legacy benchmarks and a new large benchmark, DWD, show that augmenting the knowledge graph with quantities and years is beneficial for predicting both entities and numbers, as KGA outperforms the vanilla models and other relevant baselines. Our ablation studies confirm that both quantities and years contribute to KGA's performance, and that its performance depends on the discretization and binning settings. We make the code, models, and the DWD benchmark publicly available to facilitate reproducibility and future research.

READ FULL TEXT
research
11/11/2019

Decompressing Knowledge Graph Representations for Link Prediction

This paper studies the problem of predicting missing relationships betwe...
research
11/21/2019

Learning Hierarchy-Aware Knowledge Graph Embeddings for Link Prediction

Knowledge graph embedding, which aims to represent entities and relation...
research
12/04/2015

Locally Adaptive Translation for Knowledge Graph Embedding

Knowledge graph embedding aims to represent entities and relations in a ...
research
01/03/2023

Analogical Inference Enhanced Knowledge Graph Embedding

Knowledge graph embedding (KGE), which maps entities and relations in a ...
research
10/25/2021

A Probabilistic Framework for Knowledge Graph Data Augmentation

We present NNMFAug, a probabilistic framework to perform data augmentati...
research
07/09/2019

Adaptive Margin Ranking Loss for Knowledge Graph Embeddings via a Correntropy Objective Function

Translation-based embedding models have gained significant attention in ...
research
03/01/2023

Enhancing Knowledge Graph Embedding Models with Semantic-driven Loss Functions

Knowledge graph embedding models (KGEMs) are used for various tasks rela...

Please sign up or login with your details

Forgot password? Click here to reset