The goal of this work is to expand the knowledge on the field of Venn Prediction employed with Survival Data. Standard Venn Predictors have been used with Random Forests and binary classification tasks. However, they have not been utilised to predict events with Survival Data nor in combination with Random Survival Forests. With the help of a Data Transformation, the survival task is transformed into several binary classification tasks. One key aspect of Venn Prediction are the categories. The standard number of categories is two, one for each class to predict. In this work, the usage of ten categories is explored and the performance differences between two and ten categories are investigated. Seven data sets are evaluated, and their result...
In oncology, analyzing survival data is of primary importance in epidemiological studies and clinica...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
We have developed a prognostic index model for survival data based on an ensemble of artificial neur...
The goal of this work is to expand the knowledge on the field of Venn Prediction employed with Survi...
Successful use of probabilistic classification requires well-calibrated probability estimates, i.e.,...
Probabilistic classification requires well-calibrated probability estimates, i.e., the predicted cla...
The goal of this research is to expand the field of conformal predictions using Random Survival Fore...
This work addresses a type of survival prediction (or survival analysis) problem, where the goal is ...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Survival analysis is one of the most advanced techniques in bankruptcy prediction. However, to date,...
<div><p>Background</p><p>The use of alternative modeling techniques for predicting patient survival ...
Survival analysis methods deal with a type of data, which is waiting time till occurrence of an even...
Survival modeling concerns predicting whether or not an event will occur before or on a given point ...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
In oncology, analyzing survival data is of primary importance in epidemiological studies and clinica...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
We have developed a prognostic index model for survival data based on an ensemble of artificial neur...
The goal of this work is to expand the knowledge on the field of Venn Prediction employed with Survi...
Successful use of probabilistic classification requires well-calibrated probability estimates, i.e.,...
Probabilistic classification requires well-calibrated probability estimates, i.e., the predicted cla...
The goal of this research is to expand the field of conformal predictions using Random Survival Fore...
This work addresses a type of survival prediction (or survival analysis) problem, where the goal is ...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Survival analysis is one of the most advanced techniques in bankruptcy prediction. However, to date,...
<div><p>Background</p><p>The use of alternative modeling techniques for predicting patient survival ...
Survival analysis methods deal with a type of data, which is waiting time till occurrence of an even...
Survival modeling concerns predicting whether or not an event will occur before or on a given point ...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
In oncology, analyzing survival data is of primary importance in epidemiological studies and clinica...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
We have developed a prognostic index model for survival data based on an ensemble of artificial neur...