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Publications

Publications by Pavel Brazdil

2010

Determining the best classification algorithm with recourse to sampling and metalearning

Authors
Brazdil, P; Leite, R;

Publication
Studies in Computational Intelligence

Abstract
Currently many classification algorithms exist and no algorithm exists that would outperform all the others. Therefore it is of interest to determine which classification algorithm is the best one for a given task. Although direct comparisons can be made for any given problem using a cross-validation evaluation, it is desirable to avoid this, as the computational costs are significant. We describe a method which relies on relatively fast pairwise comparisons involving two algorithms. This method is based on a previous work and exploits sampling landmarks, that is information about learning curves besides classical data characteristics. One key feature of this method is an iterative procedure for extending the series of experiments used to gather new information in the form of sampling landmarks. Metalearning plays also a vital role. The comparisons between various pairs of algorithm are repeated and the result is represented in the form of a partially ordered ranking. Evaluation is done by comparing the partial order of algorithm that has been predicted to the partial order representing the supposedly correct result. The results of our analysis show that the method has good performance and could be of help in practical applications. © 2010 Springer-Verlag Berlin Heidelberg.

2010

Active Testing Strategy to Predict the Best Classification Algorithm via Sampling and Metalearning

Authors
Leite, R; Brazdil, P;

Publication
ECAI 2010 - 19TH EUROPEAN CONFERENCE ON ARTIFICIAL INTELLIGENCE

Abstract
Currently many classification algorithms exist and there is no algorithm that would outperform all the others in all tasks. Therefore it is of interest to determine which classification algorithm is the best one for a given task. Although direct comparisons can be made for any given problem using a cross-validation evaluation, it is desirable to avoid this, as the computational costs are significant. We describe a method which relies on relatively fast pairwise comparisons involving two algorithms. This method exploits sampling landmarks, that is information about learning curves besides classical data characteristics. One key feature of this method is an iterative procedure for extending the series of experiments used to gather new information in the form of sampling landmarks. Metalearning plays also a vital role. The comparisons between various pairs of algorithm are repeated and the result is represented in the form of a partially ordered ranking. Evaluation is done by comparing the partial order of algorithm that has been predicted to the partial order representing the supposedly correct result. The results of our analysis show that the method has good performance and could be of help in practical applications.

1993

Machine Learning: ECML-93, European Conference on Machine Learning, Vienna, Austria, April 5-7, 1993, Proceedings

Authors
Brazdil, P;

Publication
ECML

Abstract

2005

Meta-Learning

Authors
Vilalta, R; Carrier, CGG; Brazdil, P;

Publication
The Data Mining and Knowledge Discovery Handbook.

Abstract

2001

Ranking Classification Algorithms and Combinations of Methods

Authors
Brazdil, P;

Publication
Pattern Recognition in Information Systems, Proceedings of the 1st International Workshop on Pattern Recognition in Information Systems, PRIS 2001, In conjunction with ICEIS 2001, Setúbal, Portugal, July 6-7, 2001

Abstract

2004

Learning Text Extraction Rules, without Ignoring Stop Words

Authors
Cordeiro, J; Brazdil, P;

Publication
Pattern Recognition in Information Systems, Proceedings of the 4th International Workshop on Pattern Recognition in Information Systems, PRIS 2004, In conjunction with ICEIS 2004, Porto, Portugal, April 2004

Abstract

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