Abstract

The Entity Linking (EL) task links entity mentions from an unstructured document to entities in a knowledge base. Although this problem is well-studied in news and social media, this problem has not received much attention in the life science domain. One outcome of tackling the EL problem in the life sciences domain is to enable scientists to build computational models of biological processes with more efficiency. However, simply applying a news-trained entity linker produces inadequate results. Since existing supervised approaches require a large amount of manually-labeled training data, which is currently unavailable for the life science domain, we propose a novel unsupervised collective inference approach to link entities from unstructured full texts of biomedical literature to 300 ontologies. The approach leverages the rich semantic information and structures in ontologies for similarity computation and entity ranking.Without using any manual annotation, our approach significantly outperforms state-of-the-art supervised EL method (9% absolute gain in linking accuracy). Furthermore, the state-of-the-art supervised EL method requires 15,000 manually annotated entity mentions for training. These promising results establish a benchmark for the EL task in the life science domain1. We also provide in depth analysis and discussion on both challenges and opportunities on automatic knowledge enrichment for scientific literature.In this paper, we propose a novel unsupervised collective inference approach to address the EL problem in a new domain. We show that our unsupervised approach is able to outperform a current state-of-the-art supervised approach that has been trained with a large amount of manually labeled data. Life science presents an underrepresented domain for applying EL techniques. By providing a small benchmark data set and identifying opportunities, we hope to stimulate discussions across natural language processing and bioinformatics and motivate others to develop techniques for this largely untapped domain.

Highlights

  • The Entity Linking (EL) task links entity mentions from an unstructured document to entities in a knowledge base

  • We show that our unsupervised approach is able to outperform a current state-of-theart supervised approach that has been trained with a large amount of manually labeled data

  • In this paper we focus on the task of Entity Linking (EL) for biomedical literature automatically identifying prominent entity mentions from unstructured full texts and linking them to terms described in a Knowledge Base (KB) and/or defined in an ontology in order to enrich text documents

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Summary

Introduction

The Entity Linking (EL) task links entity mentions from an unstructured document to entities in a knowledge base. Models of signaling and metabolic pathways are useful tools that aim to concisely represent the known information about a given pathway and accurately predict the effects of different stimuli on cellular processes. In this paper we focus on the task of Entity Linking (EL) for biomedical literature automatically identifying prominent entity mentions from unstructured full texts and linking them to (or “grounding them in”) terms described in a Knowledge Base (KB) and/or defined in an ontology in order to enrich text documents. These knowledge base or ontology terms are sometimes referred to as reference entities. From the following sentence from Lipniacki et al [3]:

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