BACKGROUND: Determining the semantic relatedness of two biomedical terms is an important task for many text-mining applications in the biomedical field. Previous studies, such as those using ontology-based and corpus-based approaches, measured semantic relatedness by using information from the structure of biomedical literature, but these methods are limited by the small size of training resources. To increase the size of training datasets, the outputs of search engines have been used extensively to analyze the lexical patterns of biomedical terms. METHODOLOGY/PRINCIPAL FINDINGS: In this work, we propose the Mutually Reinforcing Lexical Pattern Ranking (ReLPR) algorithm for learning and exploring the lexical patterns of synonym pairs in bio...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
Background: Determining the semantic relatedness of two biomedical terms is an important task for ma...
Determining the semantic relatedness of two biomedical terms is an important task for many text-mini...
Discovering links and relationships is one of the main challenges in biomedical research, as scienti...
Abstract Background One of the most important processes in a machine learning-based natural language...
Background: Computing semantic relatedness between textual labels representing biological and medica...
One of the most challenging problems in the semantic web field consists of computing the semantic si...
Biomedical vocabularies vary in scope, and it is often necessary to utilize multiple vocabularies si...
<div><p>Synonymous relationships among biomedical terms are extensively annotated within specialized...
Semantic relatedness is a measure that quantifies the strength of a semantic link between two concep...
To realize the vision of a Semantic Web for Life Sciences, discovering relations between resources i...
Abstract: Measuring the semantic similarity between two words is an important component in various t...
One of the most challenging problems in the semantic web field consists of computing the semantic s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
Background: Determining the semantic relatedness of two biomedical terms is an important task for ma...
Determining the semantic relatedness of two biomedical terms is an important task for many text-mini...
Discovering links and relationships is one of the main challenges in biomedical research, as scienti...
Abstract Background One of the most important processes in a machine learning-based natural language...
Background: Computing semantic relatedness between textual labels representing biological and medica...
One of the most challenging problems in the semantic web field consists of computing the semantic si...
Biomedical vocabularies vary in scope, and it is often necessary to utilize multiple vocabularies si...
<div><p>Synonymous relationships among biomedical terms are extensively annotated within specialized...
Semantic relatedness is a measure that quantifies the strength of a semantic link between two concep...
To realize the vision of a Semantic Web for Life Sciences, discovering relations between resources i...
Abstract: Measuring the semantic similarity between two words is an important component in various t...
One of the most challenging problems in the semantic web field consists of computing the semantic s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...