In this paper, we propose an incremental ensemble classifier learning method. In the proposed method, a set of accurate and diverse classifiers are generated and added to the ensemble by means of accuracy and diversity comparison. The selection of classifiers in ensemble starts with a layer (where data is partitioned into any given number of clusters and fed to a set of base classifiers) and then continues to improve the bias-variance (i.e., accuracy and diversity). Optimal ensemble classifier selection is done through accuracy-precedence-diversity comparison, i.e., a model with better accuracy is preferred but in the case of models with the same accuracy, better diversity is preferred. The comparison is made on the class decomposed accurac...
This paper introduces a novel concept for creating an ensemble of classifiers. The concept is based ...
This paper introduces a novel concept for creating an ensemble of classifiers. The concept is based ...
AbstractEnsemble learning is a learning method where a collection of a finite number of classifiers ...
In this paper, we propose an incremental ensemble classifier learning method. In the proposed method...
Accuracy and diversity are considered to be the two deriving factors when it comes to generating an ...
In this paper, we propose a method to generate an optimized ensemble classifier. In the proposed met...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
AbstractEnsemble learning is a learning method where a collection of a finite number of classifiers ...
Jan, M ORCiD: 0000-0002-5066-4118; Verma, B ORCiD: 0000-0002-4618-0479Accuracy and diversity are con...
We discuss approaches to incrementally construct an ensemble. The first constructs an ensemble of cl...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
This paper presents an algorithm to generate ensemble classifier by joint optimization of accuracy a...
In this paper, a new method is proposed for creating an optimized ensemble classifier. The proposed ...
This paper introduces a novel concept for creating an ensemble of classifiers. The concept is based ...
This paper introduces a novel concept for creating an ensemble of classifiers. The concept is based ...
AbstractEnsemble learning is a learning method where a collection of a finite number of classifiers ...
In this paper, we propose an incremental ensemble classifier learning method. In the proposed method...
Accuracy and diversity are considered to be the two deriving factors when it comes to generating an ...
In this paper, we propose a method to generate an optimized ensemble classifier. In the proposed met...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
AbstractEnsemble learning is a learning method where a collection of a finite number of classifiers ...
Jan, M ORCiD: 0000-0002-5066-4118; Verma, B ORCiD: 0000-0002-4618-0479Accuracy and diversity are con...
We discuss approaches to incrementally construct an ensemble. The first constructs an ensemble of cl...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
This paper presents an algorithm to generate ensemble classifier by joint optimization of accuracy a...
In this paper, a new method is proposed for creating an optimized ensemble classifier. The proposed ...
This paper introduces a novel concept for creating an ensemble of classifiers. The concept is based ...
This paper introduces a novel concept for creating an ensemble of classifiers. The concept is based ...
AbstractEnsemble learning is a learning method where a collection of a finite number of classifiers ...