To process the large amounts of data industrial systems are producing nowadays, machine learning techniques have shown their usefulness in many applications. As the amounts of data being generated are getting huge, the need for machine learning methods which can deal with them in an appropriate way - i.e. methods which can be adapted incrementally - becomes very important. Ensembles of classifiers have been shown to be able to improve the predictive accuracy as well as the robustness of single classification methods. In this work novel incremental variants of several well-known classifier fusion methods (Fuzzy Integral, Decision Templates, Dempster-Shafer Combination and Discounted Dempster-Shafer Combination) are presented. Furthermore, a ...
This paper presents a novel modular fuzzy pattern classifier design framework for intelligent automa...
In this paper, we propose an incremental ensemble classifier learning method. In the proposed method...
International audienceIn recent times, the manufacturing processes are faced with many external or i...
To process the large amounts of data industrial systems are producing nowadays, machine learning tec...
Fusion of an ensemble of multiple classifiers can result in more accurate classification results tha...
The question of how we can exploit the ability to combine different learning entities is fundamental...
Summarization: The question of how we can exploit the ability to combine different learning entities...
Over the last few years, several approaches have been proposed for information fusion including diff...
Fusing classifiers’ decisions can improve the performance of a pattern recognition system. Many appl...
In this paper we investigate the performance of boosting used for fusing various classifiers. We pro...
Abstract—In this paper a new method for training single-model and multi-model fuzzy classifiers incr...
Adapting classification systems according to new input data streams raises several challenges in cha...
In this paper a new method for training single-model and multi-model fuzzy classifiers incrementally...
In big data-based analyses, because of hyper-dimensional feature spaces, there has been no previous ...
Abstract. The incremental Boolean combination (incrBC) technique is a new learn-and-combine approach...
This paper presents a novel modular fuzzy pattern classifier design framework for intelligent automa...
In this paper, we propose an incremental ensemble classifier learning method. In the proposed method...
International audienceIn recent times, the manufacturing processes are faced with many external or i...
To process the large amounts of data industrial systems are producing nowadays, machine learning tec...
Fusion of an ensemble of multiple classifiers can result in more accurate classification results tha...
The question of how we can exploit the ability to combine different learning entities is fundamental...
Summarization: The question of how we can exploit the ability to combine different learning entities...
Over the last few years, several approaches have been proposed for information fusion including diff...
Fusing classifiers’ decisions can improve the performance of a pattern recognition system. Many appl...
In this paper we investigate the performance of boosting used for fusing various classifiers. We pro...
Abstract—In this paper a new method for training single-model and multi-model fuzzy classifiers incr...
Adapting classification systems according to new input data streams raises several challenges in cha...
In this paper a new method for training single-model and multi-model fuzzy classifiers incrementally...
In big data-based analyses, because of hyper-dimensional feature spaces, there has been no previous ...
Abstract. The incremental Boolean combination (incrBC) technique is a new learn-and-combine approach...
This paper presents a novel modular fuzzy pattern classifier design framework for intelligent automa...
In this paper, we propose an incremental ensemble classifier learning method. In the proposed method...
International audienceIn recent times, the manufacturing processes are faced with many external or i...