Bayesian models use posterior predictive distributions to quantify the uncertainty of their predictions. Similarly, the point predictions of neural networks and other machine learning algorithms may be converted to predictive distributions by various bootstrap methods. The predictive performance of each algorithm can then be assessed by quantifying the performance of its predictive distribution. Previous methods for assessing such performance are relative, indicating whether certain algorithms perform better than others. This paper proposes performance measures that are absolute in the sense that they indicate whether or not an algorithm performs adequately without requiring comparisons to other algorithms. The first proposed performance me...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
Performance of the machine learning algorithms for survivability predictions.</p
The purpose of this study is to deploy and evaluate the performance of the new age machine learning ...
Bayesian models use posterior predictive distributions to quantify the uncertainty of their predicti...
Prediction is widely researched area in data mining domain due to its applications. There are many t...
We present a new method, inspired by the bootstrap, whose goal it is to determine the quality and re...
Abstract. How to assess the performance of machine learning algorithms is a problem of increasing in...
Due to the growing adoption of deep neural networks in many fields of science and engineering, model...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
How to assess the performance of machine learning algorithms is a problem of increasing interest an...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
A Bayesian method for the comparison and selection of multi-output feedforward neural network topolo...
This paper presents an overview of the procedures involved in prediction with machine learning model...
Abstract- A rich literature discussing techniques for adopting neural networks for metamodelling of ...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
Performance of the machine learning algorithms for survivability predictions.</p
The purpose of this study is to deploy and evaluate the performance of the new age machine learning ...
Bayesian models use posterior predictive distributions to quantify the uncertainty of their predicti...
Prediction is widely researched area in data mining domain due to its applications. There are many t...
We present a new method, inspired by the bootstrap, whose goal it is to determine the quality and re...
Abstract. How to assess the performance of machine learning algorithms is a problem of increasing in...
Due to the growing adoption of deep neural networks in many fields of science and engineering, model...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
How to assess the performance of machine learning algorithms is a problem of increasing interest an...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
A Bayesian method for the comparison and selection of multi-output feedforward neural network topolo...
This paper presents an overview of the procedures involved in prediction with machine learning model...
Abstract- A rich literature discussing techniques for adopting neural networks for metamodelling of ...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
Performance of the machine learning algorithms for survivability predictions.</p
The purpose of this study is to deploy and evaluate the performance of the new age machine learning ...