In this paper we discuss the role of criterion minimization as a means for parameter estimation. Most traditional methods, such as maximum likelihood and prediction error identification are based on these principles. However, somewhat surprisingly, it turns out that it is not always "optimal" to try to find the absolute minimum point of the criterion. The reason is that "stopped minimization" (where the iterations have been terminated before the absolute minimum has been reached) has more or less identical properties as using regularization (adding a parametric penalty term). Regularization is known to have beneficial effects on the variance of the parameter estimates and it reduces the "variance contribution" of the misfit. This also expla...
Cross validation can be used to detect when overfitting starts during supervised training of a neura...
Overfitting is one issue that deep learning faces in particular. It leads to highly accurate classif...
The paper gives a new regularization criterion for the re-gression techniques where the overfitting ...
In this paper we discuss the role of criterion minimization as a means for parameter estimation. Mos...
Neural network models for dynamical systems have been subject of considerable interest lately. They ...
Abstract. In this paper we address the important problem of optimizing regularization parameters in ...
. In order to avoid overfitting in neural learning, a regularization term is added to the loss funct...
Numerous approaches address over-fitting in neural networks: by imposing a penalty on the parameters...
: In this paper, a role of regularization terms (penalty terms) is discussed from the view point of ...
Recent theoretical works on over-parameterized neural nets have focused on two aspects: optimization...
We propose a simple method that enhances the performance of Bayesian Regularization of Artificial Ne...
This article is dedicated to solving the problem of an insufficient degree of automation of artifici...
Overfitting is a common problem in neural networks. This report uses a simple neural network to do s...
Unsupervised neural networks, such as restricted Boltzmann machines (RBMs) and deep belief networks ...
This paper aims to investigate the limits of deep learning by exploring the issue of overfitting in ...
Cross validation can be used to detect when overfitting starts during supervised training of a neura...
Overfitting is one issue that deep learning faces in particular. It leads to highly accurate classif...
The paper gives a new regularization criterion for the re-gression techniques where the overfitting ...
In this paper we discuss the role of criterion minimization as a means for parameter estimation. Mos...
Neural network models for dynamical systems have been subject of considerable interest lately. They ...
Abstract. In this paper we address the important problem of optimizing regularization parameters in ...
. In order to avoid overfitting in neural learning, a regularization term is added to the loss funct...
Numerous approaches address over-fitting in neural networks: by imposing a penalty on the parameters...
: In this paper, a role of regularization terms (penalty terms) is discussed from the view point of ...
Recent theoretical works on over-parameterized neural nets have focused on two aspects: optimization...
We propose a simple method that enhances the performance of Bayesian Regularization of Artificial Ne...
This article is dedicated to solving the problem of an insufficient degree of automation of artifici...
Overfitting is a common problem in neural networks. This report uses a simple neural network to do s...
Unsupervised neural networks, such as restricted Boltzmann machines (RBMs) and deep belief networks ...
This paper aims to investigate the limits of deep learning by exploring the issue of overfitting in ...
Cross validation can be used to detect when overfitting starts during supervised training of a neura...
Overfitting is one issue that deep learning faces in particular. It leads to highly accurate classif...
The paper gives a new regularization criterion for the re-gression techniques where the overfitting ...