Abstract. This paper investigates whether and how natural language processing and data mining techniques can be utilized for locating desired knowledge in a large text collection. This task amounts to finding cue words and phrases indicating the location of knowledge, where the challenge is to establish a methodology that can cope with the diversity of expressions. We examine the feasibility of mining cue expressions from the syntactic dependency structure obtained from parsed sentences. As a case study, the (phrasal) expressions concerning a variety of tests related to chronic hepatitis were sought in the Medline abstracts. We observed that dependency analysis helped to narrow down the candidates for verbal expressions, although it was ine...
In the biomedical domain, authors publish their experiments and findings using a quasi-standard coar...
In today’s era of information explosion, extracting entities and their relations in large-scale, uns...
AbstractThe extraction of multi-word relevant expressions has been an increasingly hot topic in the ...
This paper investigates whether and how natural language processing and data mining techniques can b...
A growing body of works address automated mining of biochemical knowledge from digital repositories ...
This study seeks to develop an information extraction system focusing on cause-effect information. T...
This paper proposes a methodology for text mining relying on the classical knowledge discovery loop,...
One of the most important aspects of a terminologist's work is extracting conceptual information abo...
This paper proposes a method that extracts causal knowledge from news paper articles via clue expres...
Abstract—Since most health-related knowledge is created by experts, it is not easy for general publi...
The acquisition of knowledge and the representation of that acquisition have always been viewed as t...
The discovery of new and potentially meaningful relationships between named entities in biomedical l...
There is an abundance of information being generated constantly, most of it encoded as unstructured ...
From Fourth International Workshop on Data and Text Mining in Biomedical Informatics (DTMBio) 2010, ...
AbstractIn the modern world people frequently interact with retrieval systems to satisfy their infor...
In the biomedical domain, authors publish their experiments and findings using a quasi-standard coar...
In today’s era of information explosion, extracting entities and their relations in large-scale, uns...
AbstractThe extraction of multi-word relevant expressions has been an increasingly hot topic in the ...
This paper investigates whether and how natural language processing and data mining techniques can b...
A growing body of works address automated mining of biochemical knowledge from digital repositories ...
This study seeks to develop an information extraction system focusing on cause-effect information. T...
This paper proposes a methodology for text mining relying on the classical knowledge discovery loop,...
One of the most important aspects of a terminologist's work is extracting conceptual information abo...
This paper proposes a method that extracts causal knowledge from news paper articles via clue expres...
Abstract—Since most health-related knowledge is created by experts, it is not easy for general publi...
The acquisition of knowledge and the representation of that acquisition have always been viewed as t...
The discovery of new and potentially meaningful relationships between named entities in biomedical l...
There is an abundance of information being generated constantly, most of it encoded as unstructured ...
From Fourth International Workshop on Data and Text Mining in Biomedical Informatics (DTMBio) 2010, ...
AbstractIn the modern world people frequently interact with retrieval systems to satisfy their infor...
In the biomedical domain, authors publish their experiments and findings using a quasi-standard coar...
In today’s era of information explosion, extracting entities and their relations in large-scale, uns...
AbstractThe extraction of multi-word relevant expressions has been an increasingly hot topic in the ...