设为首页  加入收藏  简版首页  注销  注册新用户 刊社管理 排行榜 约稿 
全刊杂志赏析网

互联网 qkzz.net
首页 女性 育儿 婚姻 时尚娱乐 旅游 影视 小说 传奇 文化 新闻 军事 体育 高中 初中教学
英语 健康 美食 求医 电脑网络 摄影 文学 文摘 评论 英语 财经 经济 汽车 教学 农业致富
您现在的位置是:首页 > 大学学报 > 文章正文
刊社推荐

PCA-FA: Applying Supervised Learning to Analyze Gene Expression Data


□ WENG Shifeng ZHANG Changshui ZHANG Xuegong

   Abstract: In previous gene expression data analyses, supervised learning has mainly focused on the clas- sification of attribute data, such as the different experimental conditions, different known classes of the same tumor and sex. However, supervised learning classification is not suitable for interval-scaled attributes, such as age and survival outcome of cancer patients. For this problem, this paper proposed a new method by combining two well-known methods: principal component analysis (PCA) and Fisher analysis (FA). The method, PCA-FA, realizes supervised learning with two types of attributes (nominal attributes and interval- scaled attributes). The fuzzy FA was introduced to model the interval-scaled attributes. In this paper, an ap- proximate linear relationship between gene expression data of lung adenocarcinoma patients and survival outcome is successfully revealed by PCA-TA.
  
  

 未安装PDF浏览器用户请先下载安装
原版页码:428,429,430,431,432,433,434原版全文
关键字
支持中国杂志产业发展,请购买、订阅纸质杂志,欢迎杂志社提供过刊、样刊及电子版。
关于我们 | 网站声明 | 刊社管理 | 网站地图 | 联系方式 | 中图分类法 | RSS 2.0订阅 | EMS快递查询
全刊杂志赏析网 2011