Abstract:
The goal of ensemble construction with several classifiers is to achieve better generalization ability over individual classifiers. An ensemble method produces diverse cl...Show MoreMetadata
Abstract:
The goal of ensemble construction with several classifiers is to achieve better generalization ability over individual classifiers. An ensemble method produces diverse classifiers and combines their decisions for ensemble's decision. A number of methods have been investigated for constructing ensemble in which some of them train classifiers with the generated patterns. This study investigates a decision tree ensemble method incorporating some generated patterns with random subspace method (RSM). The proposed hybrid ensemble method were evaluated on several benchmark classification problems, and was found to achieve performance better than or competitive with related conventional methods.
Date of Conference: 23-24 May 2014
Date Added to IEEE Xplore: 10 July 2014
ISBN Information:
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- IEEE Keywords
- Index Terms
- Decision Tree ,
- Feature Values ,
- Random Method ,
- Ensemble Of Decision Trees ,
- Ensemble Construction ,
- Random Subspace Method ,
- Ensemble Method ,
- Neural Network ,
- Training Set ,
- Training Data ,
- Class Labels ,
- Base Classifiers ,
- Feature Subset ,
- Pattern Generator ,
- Continuous Features ,
- Original Pattern ,
- Discrete Features ,
- Original Training Data ,
- Classifier Construction ,
- Decision Tree Construction ,
- Ensemble Performance ,
- Number Of Input Features ,
- Ensemble Of Neural Networks
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Decision Tree ,
- Feature Values ,
- Random Method ,
- Ensemble Of Decision Trees ,
- Ensemble Construction ,
- Random Subspace Method ,
- Ensemble Method ,
- Neural Network ,
- Training Set ,
- Training Data ,
- Class Labels ,
- Base Classifiers ,
- Feature Subset ,
- Pattern Generator ,
- Continuous Features ,
- Original Pattern ,
- Discrete Features ,
- Original Training Data ,
- Classifier Construction ,
- Decision Tree Construction ,
- Ensemble Performance ,
- Number Of Input Features ,
- Ensemble Of Neural Networks
- Author Keywords