CLIRJan 22, 2021

Knowledge Graph Completion with Text-aided Regularization

arXiv:2101.08962v1
Originality Synthesis-oriented
AI Analysis

This work addresses knowledge graph expansion for AI applications, but it is incremental as it builds on existing embedding methods with textual enhancements.

The paper tackles knowledge graph completion by incorporating textual information into existing embedding frameworks through a similarity-based regularization term, achieving decent improvements over baseline methods.

Knowledge Graph Completion is a task of expanding the knowledge graph/base through estimating possible entities, or proper nouns, that can be connected using a set of predefined relations, or verb/predicates describing interconnections of two things. Generally, we describe this problem as adding new edges to a current network of vertices and edges. Traditional approaches mainly focus on using the existing graphical information that is intrinsic of the graph and train the corresponding embeddings to describe the information; however, we think that the corpus that are related to the entities should also contain information that can positively influence the embeddings to better make predictions. In our project, we try numerous ways of using extracted or raw textual information to help existing KG embedding frameworks reach better prediction results, in the means of adding a similarity function to the regularization part in the loss function. Results have shown that we have made decent improvements over baseline KG embedding methods.

Foundations

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