Most highly accurate predictive modeling techniques produce opaque models. When comprehensible models are required, rule extraction is sometimes used to generate a transparent model, based on the opaque. Naturally, the extracted model should be as similar as possible to the opaque. This criterion, called fidelity, is therefore a key part of the optimization function in most rule extracting algorithms. To the best of our knowledge, all existing rule extraction algorithms targeting fidelity use 0/1 fidelity, i.e., maximize the number of identical classifications. In this paper, we suggest and evaluate a rule extraction algorithm utilizing a more informed fidelity criterion. More specifically, the novel algorithm, which is based on genetic pro...
Data mining is performed using genetic algorithm on artificially generated time series data with sho...
Data mining is performed using genetic algorithm on artificially generated time series data with sho...
Association rule mining problem (ARM) is a struc-tured mechanism for unearthing hidden facts in larg...
Most highly accurate predictive modeling techniques produce opaque models. When comprehensible model...
A common problem when using complicated models for prediction and classification is that the complex...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
The purpose of this paper is to propose and evaluate a method for reducing the inherent tendency of ...
In this paper, Genetic Programming is used to evolveordered rule sets (also called decision lists) f...
This paper proposes an optimal strategy for extracting probabilistic rules from databases. Two induc...
Most approaches to credit scoring generate model parameters by minimising some function of individua...
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
Genetic programming (GP), is a very general and efficient technique, often capable of outperforming ...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Social scientists and other users of large data sets often desire a model to predict the probability...
Data mining is performed using genetic algorithm on artificially generated time series data with sho...
Data mining is performed using genetic algorithm on artificially generated time series data with sho...
Association rule mining problem (ARM) is a struc-tured mechanism for unearthing hidden facts in larg...
Most highly accurate predictive modeling techniques produce opaque models. When comprehensible model...
A common problem when using complicated models for prediction and classification is that the complex...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
The purpose of this paper is to propose and evaluate a method for reducing the inherent tendency of ...
In this paper, Genetic Programming is used to evolveordered rule sets (also called decision lists) f...
This paper proposes an optimal strategy for extracting probabilistic rules from databases. Two induc...
Most approaches to credit scoring generate model parameters by minimising some function of individua...
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
Genetic programming (GP), is a very general and efficient technique, often capable of outperforming ...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Social scientists and other users of large data sets often desire a model to predict the probability...
Data mining is performed using genetic algorithm on artificially generated time series data with sho...
Data mining is performed using genetic algorithm on artificially generated time series data with sho...
Association rule mining problem (ARM) is a struc-tured mechanism for unearthing hidden facts in larg...