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Concept Frequency Distribution in Biomedical Text Summarization. Advisor : Dr. Hsu Presenter : Yu-San Hsieh Author : Lawrence H. Reeve, Hyoil Han, Saya V. Nagori, Jonathan C. Yang, Tamara A. Schwimmer, Ari D. Brooks. 2006. CIKM.604-611.
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Concept Frequency Distribution in Biomedical Text Summarization Advisor : Dr. Hsu Presenter : Yu-San Hsieh Author : Lawrence H. Reeve, Hyoil Han, Saya V. Nagori, Jonathan C. Yang, Tamara A. Schwimmer, Ari D. Brooks 2006. CIKM.604-611
Outline • Motivation • Objective • Introduction • Method • Experiments • Conclusions
Motivation • The medical text summarization is particularly useful in the biomedical domain, where physicians must continuously find clinical trial study information in mass treatment information database ,then to incorporate into their patient treatment efforts.
Objective • This paper has proposed a better method to identify important sentences within a full-text and generate text summaries.
Full-text Sentences Noun phrase Concept Introduction Term • The approaches of generating summaries • Extractive and Abstractive • UMLS Metathesaurus • UMLS MetaMap Transfer • Biomedical text concept distribution full-text abstracts
Summary-output Candidate model source-model Method Source-text Source-model Candidate-model Sentence-pool srcUIs : [12, 13, 14, 7, 10] sryUIs : [5, 9, 6, 7, 8] ui: unit item Sentence-pool Candidate-model n > best-score y Best-sentence
Experiments • Corpus • A citation database of oncology clinical trial papers(1200) • Evaluation tool • ROUGE-2 and ROUGE-SU4 • Model Summaries • The first model is the abstract of the paper • Three models from three different domain experts were generated • Summarizers used for evaluation • BaseLine, FreqDist, MEAD, AutoSummarize, SumBasic, SWESUM
Conclusions • We developed a new algorithm based on frequency distribution modeling and evaluate it using terms as well as concepts.
My opinion • Advantage • …… • Drawback • …… • Application • Information Retrieval