Stable Clinical Prediction using Graph Support Vector Machines

被引:0
作者
Kamkar, Iman [1 ]
Gupta, Sunil [1 ]
Li, Cheng [1 ]
Dinh Phung [1 ]
Venkatesh, Svetha [1 ]
机构
[1] Deakin Univ, Ctr Pattern Recognit & Data Analyt, Geelong, Vic, Australia
来源
2016 23RD INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR) | 2016年
关键词
REGRESSION SHRINKAGE; VARIABLE SELECTION; MODEL SELECTION; LASSO;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The stability matters in clinical prediction models because it makes the model to be interpretable and generalizable. It is paramount for high dimensional data, which employ sparse models with feature selection ability. We propose a new method to stabilize sparse support vector machines using intrinsic graph structure of the electronic medical records. The graph structure is exploited using the Jaccard similarity among features. Our method employs a convex function to penalize the pairwise l(infinity)-norm of connected feature coefficients in the graph. We apply the alternating direction method of multipliers to solve the proposed formulation. Our experiments are conducted on a synthetic and three real-world hospital datasets. We show that our proposed method is more stable than the state-of-the-art feature selection and classification techniques in terms of three stability measures namely, Jaccard similarity measure, Spearman's rank correlation coefficient and Kuncheva index. We further show that our method has resulted in better classification performance compared to the baselines.
引用
收藏
页码:3332 / 3337
页数:6
相关论文
共 50 条
  • [41] A concise overview of principal support vector machines and its generalization
    Shin, Jungmin
    Shin, Seung Jun
    COMMUNICATIONS FOR STATISTICAL APPLICATIONS AND METHODS, 2024, 31 (02) : 235 - 246
  • [42] Self-adaptive support vector machines: Modelling and experiments
    Du P.
    Peng J.
    Terlaky T.
    Computational Management Science, 2009, 6 (1) : 41 - 51
  • [43] Efficient Support Vector Machine Method for Survival Prediction with SEER Data
    Liu, Zhenqiu
    Chen, Dechang
    Tian, Guoliang
    Tang, Man-Lai
    Tan, Ming
    Sheng, Li
    ADVANCES IN COMPUTATIONAL BIOLOGY, 2010, 680 : 11 - 18
  • [44] Predicting Complexation Thermodynamic Parameters of β-Cyclodextrin with Chiral Guests by Using Swarm Intelligence and Support Vector Machines
    Prakasvudhisarn, Chakguy
    Wolschann, Peter
    Lawtrakul, Luckhana
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2009, 10 (05) : 2107 - 2121
  • [45] Stable feature selection for clinical prediction: Exploiting ICD tree structure using Tree-Lasso
    Kamkar, Iman
    Gupta, Sunil Kumar
    Dinh Phung
    Venkatesh, Svetha
    JOURNAL OF BIOMEDICAL INFORMATICS, 2015, 53 : 277 - 290
  • [46] Activity prediction of HIV-1 protease inhibitors using support vector machine
    Rao Han-Bing
    Li Ze-Rong
    Chen Xiao-Mei
    Li Xiang-Yuan
    ACTA CHIMICA SINICA, 2007, 65 (03) : 197 - 202
  • [47] Better prediction of aqueous solubility of chlorinated hydrocarbons using support vector machine modeling
    Bahadori, Behnoosh
    Atabati, Morteza
    Zarei, Kobra
    ENVIRONMENTAL CHEMISTRY LETTERS, 2016, 14 (04) : 541 - 548
  • [48] Efficient Sparse Approximation of Support Vector Machines Solving a Kernel Lasso
    Aliquintuy, Marcelo
    Frandi, Emanuele
    Nanculef, Ricardo
    Suykens, Johan A. K.
    PROGRESS IN PATTERN RECOGNITION, IMAGE ANALYSIS, COMPUTER VISION, AND APPLICATIONS, CIARP 2016, 2017, 10125 : 208 - 216
  • [49] Support vector machines for quality, monitoring in a plastic injection molding process
    Ribeiro, B
    IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS PART C-APPLICATIONS AND REVIEWS, 2005, 35 (03): : 401 - 410
  • [50] Wavelet twin support vector machines based on glowworm swarm optimization
    Ding, Shifei
    An, Yuexuan
    Zhang, Xiekai
    Wu, Fulin
    Xue, Yu
    NEUROCOMPUTING, 2017, 225 : 157 - 163