Background: The necessity to analyze medium-throughput data in epidemiological studies with small sample size, particularly when studying biomedical data may hinder the use of classical statistical methods. Support vector machines (SVM) models can be successfully applied in this setting because they are a powerful tool to analyze data with large number of predictors and limited sample size, especially when handling binary outcomes. However, biomedical research often involves analysis of time-to-event outcomes and has to account for censoring. Methods to handle censored data in the SVM framework can be divided into two classes: those based on support vector regression (SVR) and those based on binary classification. Methods based on SVR seem ...
The Cox proportional hazard model may predict whether an individual belonging to a given group would...
The use of relevance vector machines to flexibly model hazard rate functions is explored. This techn...
Classification problems have broad applications in many scientific areas such as biology, engineerin...
Abstract Background: The necessity to analyze medium-throughput data in epidemiological studies with...
Sparse kernel methods like support vector machines (SVM) have been applied with great success to cla...
The process of creating an efficacious malaria vaccine is complex due to the characteristics of the ...
Modern bioinformatics offers more and more offending challenges that came from highly through-output...
The aim of this paper is to design a learning machine for the predictive modeling of independently r...
Background Support vector machines (SVM) are a powerful tool to analyze data with a number of predic...
Support vector machine (SVM) is a popular method for classification, but there are few methods that ...
This dissertation focuses on (1) developing an efficient variable selection method for a class of ge...
Learning risk scores to predict dichotomous or continuous outcomes using machine learning approaches...
The Support Vector Regression (SVR) model has been broadly used for response prediction. However, fe...
This article introduces the R package survivalsvm, implementing support vector machines for survival...
We develop methods to accurately predict whether presymptomatic individuals are at risk of a disease...
The Cox proportional hazard model may predict whether an individual belonging to a given group would...
The use of relevance vector machines to flexibly model hazard rate functions is explored. This techn...
Classification problems have broad applications in many scientific areas such as biology, engineerin...
Abstract Background: The necessity to analyze medium-throughput data in epidemiological studies with...
Sparse kernel methods like support vector machines (SVM) have been applied with great success to cla...
The process of creating an efficacious malaria vaccine is complex due to the characteristics of the ...
Modern bioinformatics offers more and more offending challenges that came from highly through-output...
The aim of this paper is to design a learning machine for the predictive modeling of independently r...
Background Support vector machines (SVM) are a powerful tool to analyze data with a number of predic...
Support vector machine (SVM) is a popular method for classification, but there are few methods that ...
This dissertation focuses on (1) developing an efficient variable selection method for a class of ge...
Learning risk scores to predict dichotomous or continuous outcomes using machine learning approaches...
The Support Vector Regression (SVR) model has been broadly used for response prediction. However, fe...
This article introduces the R package survivalsvm, implementing support vector machines for survival...
We develop methods to accurately predict whether presymptomatic individuals are at risk of a disease...
The Cox proportional hazard model may predict whether an individual belonging to a given group would...
The use of relevance vector machines to flexibly model hazard rate functions is explored. This techn...
Classification problems have broad applications in many scientific areas such as biology, engineerin...