Title of article :
Partial logistic relevance vector machines in survival analysis
Author/Authors :
Nicola Lama، نويسنده , , Patrizia Boracchi&Elia Biganzoli، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
The use of relevance vector machines to flexibly model hazard rate functions is explored. This technique
is adapted to survival analysis problems through the partial logistic approach. The method exploits the
Bayesian automatic relevance determination procedure to obtain sparse solutions and it incorporates the
flexibility of kernel-based models. Example results are presented on literature data from a head-andneck
cancer survival study using Gaussian and spline kernels. Sensitivity analysis is conducted to assess
the influence of hyperprior distribution parameters. The proposed method is then contrasted with other
flexible hazard regression methods, in particular the HARE model proposed by Kooperberg et al. [16]. A
simulation study is conducted to carry out the comparison. The model developed in this paper exhibited
good performance in the prediction of hazard rate. The application of this sparse Bayesian technique to
a real cancer data set demonstrated that the proposed method can potentially reveal characteristics of the
hazards, associated with the dynamics of the studied diseases, which may be missed by existing modeling
approaches based on different perspectives on the bias vs. variance balance.
Keywords :
Survival analysis , Bayesian methods , Hazard regression , Kernel methods , Relevance vector machines , automatic relevancedetermination
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS