Title
Result identification for biomedical abstracts using Conditional Random Fields.
Abstract
For biomedical research, the most important parts of an abstract are the result and conclusion sections. Some journals divide an abstract into several sections so that readers can easily identifiy those parts, but others do not. We propose a method that can automatically identify the result and conclusion sections of any biomedical abstracts by formulating this identification problem as a sequence labeling task. Three feature sets (Position, Named Entity, and Word Frequency) are employed with Conditional Random Fields (CRFs) as the underlying machine learning model. Experimental results show that the combination of our proposed feature sets can achieve F-measure, precision, and recall scores of 92.50%, 95.32% and 89.85%, respectively.
Year
DOI
Venue
2008
10.1109/IRI.2008.4583016
IRI
Keywords
Field
DocType
word frequency,biology,computer science,text mining,hidden markov models,machine learning,support vector machines,frequency,information science,data mining,conditional random field
Data mining,Sequence labeling,Computer science,Artificial intelligence,Parameter identification problem,CRFS,Conditional random field,Pattern recognition,Word lists by frequency,Support vector machine,Hidden Markov model,Recall,Machine learning
Conference
ISBN
Citations 
PageRank 
978-1-4244-2660-7
3
0.46
References 
Authors
13
6
Name
Order
Citations
PageRank
Ryan T. K. Lin1312.47
Hong-Jie Dai228821.58
Yue-Yang Bow3492.34
Min-Yuh Day419829.24
Richard Tzong-Han Tsai571454.89
Wen-Lian Hsu61701198.40