In this paper, we present an approach for compressing a rule-based pairwise classifier ensemble into a single rule set that can be directly used for classification. The key idea is to re-encode the training examples using information about which of the original ruler covers the example, and to use them for training a rule-based meta-level classifier. We not only show that this approach is more accurate than using the same classifier at the base level (which could have been expected for such a variant of stacking), but also demonstrate that the resulting meta-level rule set can be straight-forwardly translated back into a rule set at the base level. Our key result is that the rule sets obtained in this way are of comparable complexity to tho...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
An objective of merging rules in rule bases designed for system modeling and function approximation ...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
In this paper, we present an approach for compressing a rule-based pairwise classifier ensemble into...
Classification rule learning produces expressive rules so that a human user can easily interpret th...
In this paper we describe new experiments with the ensemble learning method Stacking. The cen-tral q...
Automatic generation of classification rules has been an increasingly popular technique in commercia...
Over the last two decades, the machine learning and related communities have conducted numerous stud...
In this work a novel technique for building ensemble of classifiers is presented. The proposed appro...
Abstract. Unlike fixed combining rules, the trainable combiner is appli-cable to ensembles of divers...
In this paper, we investigate the method of stacked generalization in combining models derived from ...
Learning Classifier Systems (LCSs), a 40-year-old technique, evolve interrogatable production rules....
Learning Classifier Systems (LCSs) have demonstrated their classification capability by employing a ...
Abstract. We examine various methods for combining the output of one-class models. In particular, we...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
An objective of merging rules in rule bases designed for system modeling and function approximation ...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
In this paper, we present an approach for compressing a rule-based pairwise classifier ensemble into...
Classification rule learning produces expressive rules so that a human user can easily interpret th...
In this paper we describe new experiments with the ensemble learning method Stacking. The cen-tral q...
Automatic generation of classification rules has been an increasingly popular technique in commercia...
Over the last two decades, the machine learning and related communities have conducted numerous stud...
In this work a novel technique for building ensemble of classifiers is presented. The proposed appro...
Abstract. Unlike fixed combining rules, the trainable combiner is appli-cable to ensembles of divers...
In this paper, we investigate the method of stacked generalization in combining models derived from ...
Learning Classifier Systems (LCSs), a 40-year-old technique, evolve interrogatable production rules....
Learning Classifier Systems (LCSs) have demonstrated their classification capability by employing a ...
Abstract. We examine various methods for combining the output of one-class models. In particular, we...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
An objective of merging rules in rule bases designed for system modeling and function approximation ...
Various algorithms are capable of learning a set of classification rules from a number of observatio...