Large outliers break down linear and nonlinear regression models. Robust regression methods allow one to filter out the outliers when building a model. By replacing the traditional least squares criterion with the least trimmed squares (LTS) criterion, in which half of data is treated as potential outliers, one can fit accurate regression models to strongly contaminated data. High-breakdown methods have become very well established in linear regression, but have started being applied for non-linear regression only recently. In this work, we examine the problem of fitting artificial neural networks (ANNs) to contaminated data using LTS criterion. We introduce a penalized LTS criterion which prevents unnecessary removal of valid data. Trainin...
The income or expenditure-related data sets are often nonlinear, heteroscedastic, skewed even after ...
The problem of fitting a model to noisy data is fundamental to statistics and machine learning. In t...
<p><b>Copyright information:</b></p><p>Taken from "Detecting outliers when fitting data with nonline...
Large outliers break down linear and nonlinear regression models. Robust regression methods allow on...
Large outliers break down linear and nonlinear regression models. Robust regres-sion methods allow o...
In the largest samplings of data, outliers are observations that are well separated from the major s...
We study the dynamics and equilibria induced by training an artificial neural network for regression...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
Neural networks have been massively used in regression problems due to their ability to approximate ...
We propose a procedure for computing a fast approximation to regression estimates based on the minim...
The least trimmed sum of squares (LTS) regression estimation criterion is a robust statistical metho...
Outliers are one of the most difficult issues when dealing with real-world modeling tasks. Even a sm...
The methods of very robust regression resist up to 50% of outliers. The algorithms for very robust r...
Most supervised neural networks are trained by minimizing the mean square error (MSE) of the trainin...
Robust regression in statistics leads to challenging optimization problems. Here, we study one such ...
The income or expenditure-related data sets are often nonlinear, heteroscedastic, skewed even after ...
The problem of fitting a model to noisy data is fundamental to statistics and machine learning. In t...
<p><b>Copyright information:</b></p><p>Taken from "Detecting outliers when fitting data with nonline...
Large outliers break down linear and nonlinear regression models. Robust regression methods allow on...
Large outliers break down linear and nonlinear regression models. Robust regres-sion methods allow o...
In the largest samplings of data, outliers are observations that are well separated from the major s...
We study the dynamics and equilibria induced by training an artificial neural network for regression...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
Neural networks have been massively used in regression problems due to their ability to approximate ...
We propose a procedure for computing a fast approximation to regression estimates based on the minim...
The least trimmed sum of squares (LTS) regression estimation criterion is a robust statistical metho...
Outliers are one of the most difficult issues when dealing with real-world modeling tasks. Even a sm...
The methods of very robust regression resist up to 50% of outliers. The algorithms for very robust r...
Most supervised neural networks are trained by minimizing the mean square error (MSE) of the trainin...
Robust regression in statistics leads to challenging optimization problems. Here, we study one such ...
The income or expenditure-related data sets are often nonlinear, heteroscedastic, skewed even after ...
The problem of fitting a model to noisy data is fundamental to statistics and machine learning. In t...
<p><b>Copyright information:</b></p><p>Taken from "Detecting outliers when fitting data with nonline...