The performance of an algorithm often largely depends on some hyper parameter which should be optimized before its usage. Since most conventional optimization methods suffer from some drawbacks, we developed an alternative way to find the best hyper parameter values. Contrary to the well known procedures, the new optimization algorithm is based on statistical methods since it uses a combination of Linear Mixed Effect Models and Response Surface Methodology techniques. In particular, the Method of Steepest Ascent which is well known for the case of an Ordinary Least Squares setting and a linear response surface has been generalized to be applicable for repeated measurements situations and for response surfaces of order o <= 2
Many previous researches conveyed the superiority of Steepest Ascent (SA) method to find the optimal...
In recent years, response surface methodology (RSM) has brought many attentions of many quality engi...
Automatic learning research focuses on the development of methods capable of extracting useful infor...
This chapter first summarizes Response Surface Methodology (RSM), which started with Box and Wilson’...
Abstract: This chapter first summarizes Response Surface Methodology (RSM), which started with Box a...
Response Surface Methodology (RSM) searches for the input combination maximizing the output of a rea...
Machine learning algorithms have been used widely in various applications and areas. To fit a machin...
Response Surface Methodology (RSM) searches for the input combination that optimizes the simulation ...
Classification is one of the most common machine learning tasks. SVMs have been frequently applied t...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
Hyper-parameters tuning is a key step to find the optimal machine learning parameters. Determining t...
Most machine learning algorithms are configured by a set of hyperparameters whose values must be car...
We investigate methods to determine appropriate choices of the hyper-parameters for kernel based met...
Hyperparameter Optimization is a task that is generally hard to accomplish as the correct setting of...
Many previous researches conveyed the superiority of Steepest Ascent (SA) method to find the optimal...
In recent years, response surface methodology (RSM) has brought many attentions of many quality engi...
Automatic learning research focuses on the development of methods capable of extracting useful infor...
This chapter first summarizes Response Surface Methodology (RSM), which started with Box and Wilson’...
Abstract: This chapter first summarizes Response Surface Methodology (RSM), which started with Box a...
Response Surface Methodology (RSM) searches for the input combination maximizing the output of a rea...
Machine learning algorithms have been used widely in various applications and areas. To fit a machin...
Response Surface Methodology (RSM) searches for the input combination that optimizes the simulation ...
Classification is one of the most common machine learning tasks. SVMs have been frequently applied t...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
Hyper-parameters tuning is a key step to find the optimal machine learning parameters. Determining t...
Most machine learning algorithms are configured by a set of hyperparameters whose values must be car...
We investigate methods to determine appropriate choices of the hyper-parameters for kernel based met...
Hyperparameter Optimization is a task that is generally hard to accomplish as the correct setting of...
Many previous researches conveyed the superiority of Steepest Ascent (SA) method to find the optimal...
In recent years, response surface methodology (RSM) has brought many attentions of many quality engi...
Automatic learning research focuses on the development of methods capable of extracting useful infor...