Framework for Similarity-Based Methods (SBMs) allows to create many algorithms that differ in important aspects. Although no single learning algorithm may outperform other algorithms on all data an almost optimal algorithm may be found within the SBM framework. To avoid tedious experimentation a meta-learning search procedure in the space of all possible algorithms is used to build new algorithms. Each new algorithm is generated by applying admissible extensions to the existing algorithms and the most promising are retained and extended further. Training is performed using parameter optimization techniques
For machine learning algorithms, fine-tuning hyperparameters is a computational challenge due to the...
Abstract. The success of machine learning on a given task depends on, among other things, which lear...
Similarity-based methods (SBM) are a generalization of the minimal distance (MD) methods which form ...
There is no free lunch, no single learning algorithm that will outperform other algorithms on all da...
In this work we deal with the problem of metalearning for kernel based methods. Among the kernel met...
The exponential growth of volume, variety and velocity of the data is raising the need for investiga...
Support Vector Machines (SVMs) have achieved very good performance on different learning problems. H...
We present a heuristic meta-learning search method for finding a set of optimized algorithmic parame...
Similarity-based methods (SBM) are a generalization of the minimal distance (MD) methods which form ...
We present a heuristic meta-learning search method for finding a set of optimized algorithmic parame...
Support Vector Machines (SVMs) have achieved a considerable attention due to their theoretical found...
Algorithm Selection and configuration are increasingly relevant today. Researchers and practitioners...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Abstract—The notion of meta-mining has appeared recently and extends the traditional meta-learning i...
The field of machine learning has seen explosive growth over the past decade, largely due to increas...
For machine learning algorithms, fine-tuning hyperparameters is a computational challenge due to the...
Abstract. The success of machine learning on a given task depends on, among other things, which lear...
Similarity-based methods (SBM) are a generalization of the minimal distance (MD) methods which form ...
There is no free lunch, no single learning algorithm that will outperform other algorithms on all da...
In this work we deal with the problem of metalearning for kernel based methods. Among the kernel met...
The exponential growth of volume, variety and velocity of the data is raising the need for investiga...
Support Vector Machines (SVMs) have achieved very good performance on different learning problems. H...
We present a heuristic meta-learning search method for finding a set of optimized algorithmic parame...
Similarity-based methods (SBM) are a generalization of the minimal distance (MD) methods which form ...
We present a heuristic meta-learning search method for finding a set of optimized algorithmic parame...
Support Vector Machines (SVMs) have achieved a considerable attention due to their theoretical found...
Algorithm Selection and configuration are increasingly relevant today. Researchers and practitioners...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Abstract—The notion of meta-mining has appeared recently and extends the traditional meta-learning i...
The field of machine learning has seen explosive growth over the past decade, largely due to increas...
For machine learning algorithms, fine-tuning hyperparameters is a computational challenge due to the...
Abstract. The success of machine learning on a given task depends on, among other things, which lear...
Similarity-based methods (SBM) are a generalization of the minimal distance (MD) methods which form ...