The problem of selecting the best classification algorithm for a specific problem continues to be very relevant, especially since the number of classification algorithms keeps growing significantly. Testing all alternatives is not really a viable option: if we compare all pairs of algorithms, as is often advocated, the number of comparisons grows exponentially. To avoid this problem we suggest a method referred to as active testing, whose aim is to reduce the number of comparisons by carefully selecting which tests should be carried out. This method uses meta-knowledge concerning past experiments and proceeds in an iterative manner. It takes the form of a competition in which, in each iteration, the candidate best algorithm is pitted agains...
This paper introduces a new method for learning algorithm evaluation and selection, with empirical r...
Most active learning methods avoid model selection by training models of one type (SVMs, boosted tre...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...
The problem of selecting the best classification algorithm for a specific problem continues to be ve...
Identifying the best machine learning algorithm for a given problem continues to be an active area o...
Algorithm selection methods can be speeded-up substantially by incorporating multi-objective measure...
Abstract Most previous studies on active learning focused on the problem of model selection, i.e., h...
The algorithm selection problem is to choose the most suitable algorithm for solving a given problem...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
International audienceWe present an active meta learning approach to model selection or algorithm re...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
One of the challenges in Machine Learning to find a classifier and parameter settings that work well...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
A holistic approach to the algorithm selection problem is presented. The “algorithm selection framew...
This paper introduces a new method for learning algorithm evaluation and selection, with empirical r...
Most active learning methods avoid model selection by training models of one type (SVMs, boosted tre...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...
The problem of selecting the best classification algorithm for a specific problem continues to be ve...
Identifying the best machine learning algorithm for a given problem continues to be an active area o...
Algorithm selection methods can be speeded-up substantially by incorporating multi-objective measure...
Abstract Most previous studies on active learning focused on the problem of model selection, i.e., h...
The algorithm selection problem is to choose the most suitable algorithm for solving a given problem...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
International audienceWe present an active meta learning approach to model selection or algorithm re...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
One of the challenges in Machine Learning to find a classifier and parameter settings that work well...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
A holistic approach to the algorithm selection problem is presented. The “algorithm selection framew...
This paper introduces a new method for learning algorithm evaluation and selection, with empirical r...
Most active learning methods avoid model selection by training models of one type (SVMs, boosted tre...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...