ASIA unversity:Item 310904400/108635
English  |  正體中文  |  简体中文  |  全文筆數/總筆數 : 94286/110023 (86%)
造訪人次 : 21673070      線上人數 : 603
RC Version 6.0 © Powered By DSPACE, MIT. Enhanced by NTU Library IR team.
搜尋範圍 查詢小技巧:
  • 您可在西文檢索詞彙前後加上"雙引號",以獲取較精準的檢索結果
  • 若欲以作者姓名搜尋,建議至進階搜尋限定作者欄位,可獲得較完整資料
  • 進階搜尋
    ASIA unversity > 資訊學院 > 資訊工程學系 > 期刊論文 >  Item 310904400/108635


    請使用永久網址來引用或連結此文件: http://asiair.asia.edu.tw/ir/handle/310904400/108635


    題名: SVM and SVM Ensembles in Breast Cancer Prediction
    作者: Min-Wei,Huan;Min-Wei,Huang;Chih-Wen,Che;Chih-Wen,Chen;林維昭;Wei-Chao,Lin;Shih-Wen,Ke;Shih-Wen,Ke;Chih-Fong,Ts;Chih-Fong,Tsai
    貢獻者: 資訊工程學系
    日期: 2017-01
    上傳時間: 2017-12-08 06:49:00 (UTC+0)
    摘要: Breast cancer is an all too common disease in women, making how to effectively predict it an active research problem. A number of statistical and machine learning techniques have been employed to develop various breast cancer prediction models. Among them, support vector machines (SVM) have been shown to outperform many related techniques. To construct the SVM classifier, it is first necessary to decide the kernel function, and different kernel functions can result in different prediction performance. However, there have been very few studies focused on examining the prediction performances of SVM based on different kernel functions. Moreover, it is unknown whether SVM classifier ensembles which have been proposed to improve the performance of single classifiers can outperform single SVM classifiers in terms of breast cancer prediction. Therefore, the aim of this paper is to fully assess the prediction performance of SVM and SVM ensembles over small and large scale breast cancer datasets. The classification accuracy, ROC, F-measure, and computational times of training SVM and SVM ensembles are compared. The experimental results show that linear kernel based SVM ensembles based on the bagging method and RBF kernel based SVM ensembles with the boosting method can be the better choices for a small scale dataset, where feature selection should be performed in the data pre-processing stage. For a large scale dataset, RBF kernel based SVM ensembles based on boosting perform better than the other classifiers.
    關聯: PLoS One.
    顯示於類別:[資訊工程學系] 期刊論文

    文件中的檔案:

    檔案 大小格式瀏覽次數
    index.html0KbHTML448檢視/開啟


    在ASIAIR中所有的資料項目都受到原著作權保護.


    DSpace Software Copyright © 2002-2004  MIT &  Hewlett-Packard  /   Enhanced by   NTU Library IR team Copyright ©   - 回饋