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Multi-class diagnosis classification on high dimension data by logistic models
Chen, Tong-Sheng ; Hu, Xue-Qin ; Li, Shao-Zi ; Zhou, Chang-Le ; Zhou CL(周昌乐)
2008
关键词LEARNING BAYESIAN NETWORKS
英文摘要Logistic regression has been increasingly used in chronic gastritis research. Using expression of logistic regression monitored simultaneously by Maximum likelihood estimation, contribution of gastritis symptom to the syndrome classifications are distinguished, and chronic gastritis samples are more accurately classified. While Logistic regression has been extensively evaluated for dichotomous classification, there are only limited reports on the important issue of multi-class chronic gastritis classification. It needs to explore the logistic regression of the multi-class chronic gastritis classification. In this research, we address multi-class chronic gastritis classification by applying Logistic regression based methods on data of nominal and ordinal scaled sample class outcomes, e.g., samples of different chronic gastritis subtypes. Logistic regression based classifiers are assessed by accurate classification rates on chronic gastritis data and comparing with HGC model discrimination based classifiers. The result shows that classify performance derive from Logistic regression model has the advantage over traditional model by 26.94%.
语种英语
内容类型期刊论文
源URL[http://dspace.xmu.edu.cn/handle/2288/70794]  
专题信息技术-已发表论文
推荐引用方式
GB/T 7714
Chen, Tong-Sheng,Hu, Xue-Qin,Li, Shao-Zi,et al. Multi-class diagnosis classification on high dimension data by logistic models[J],2008.
APA Chen, Tong-Sheng,Hu, Xue-Qin,Li, Shao-Zi,Zhou, Chang-Le,&周昌乐.(2008).Multi-class diagnosis classification on high dimension data by logistic models..
MLA Chen, Tong-Sheng,et al."Multi-class diagnosis classification on high dimension data by logistic models".(2008).
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