| Literature DB >> 29678047 |
Debasis Ganguly1, Léa A Deleris1, Pol Mac Aonghusa1, Alison J Wright2, Ailbhe N Finnerty2, Emma Norris2, Marta M Marques2, Susan Michie2.
Abstract
This paper describes our approach to construct a scalable system for unsupervised information extraction from the behaviour change intervention literature. Due to the many different types of attribute to be extracted, we adopt a passage retrieval based framework that provides the most likely value for an attribute. Our proposed method is capable of addressing variable length passage sizes and different validation criteria for the extracted values corresponding to each attribute to be found. We evaluate our approach by constructing a manually annotated ground-truth from a set of 50 research papers with reported studies on smoking cessation.Keywords: Behavior Change; Information Extraction; Smoking Cessation
Mesh:
Year: 2018 PMID: 29678047
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630