| Literature DB >> 12463964 |
Wanhong Zheng1, Evangelos Milios, Carolyn Watters.
Abstract
We address the problem of filtering medical news articles for targeted audiences. The approach is based on terms and one of the difficulties is extracting a feature set appropriate for the domain. This paper addresses the medical news-filtering problem using a machine learning approach. We describe the application of two supervised machine learning techniques, Decision Trees and Naïve Bayes, to automatically construct classifiers on the basis of a training set, in which news articles have been pre-classified by a medical expert and four other human readers. The goal is to classify the news articles into three groups: non-medical, medical intended for experts, and medical intended for other readers. While the general accuracy of the machine learning approach is around 78%, the accuracy of distinguishing non-medical articles from medical ones is shown to be 92%.Entities:
Mesh:
Year: 2002 PMID: 12463964 PMCID: PMC2244368
Source DB: PubMed Journal: Proc AMIA Symp ISSN: 1531-605X