International audienceIn classification problem, several different classes may be partially overlapped in their borders. The objects in the border are usually quite difficult to classify. A hybrid classification system (HCS) is proposed to adaptively utilize the proper classification method for each object according to the K-nearest neighbors (K-NNs), which are found in the weighting vector space obtained by self-organizing map (SOM) in each class. If the K-close weighting vectors (nodes) are all from the same class, it indicates that this object can be correctly classified with high confidence, and the simple hard classification will be adopted to directly classify this object into the corresponding class. If the object likely lies in the ...
This paper aims at providing the concept of information granulation in Granular computing based patt...
Abstract. Uncertainty is widely spread in real-world data. Uncertain data-in computer science- is ty...
This paper reports on an investigation in classification technique employed to classify noised and u...
International audienceIn classification problem, several different classes may be partially overlapp...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceIn this paper we present a new credal classification rule (CCR) based on belie...
Abstract:- In this paper, a hybrid intelligent system that integrates the SOM (Self-Organizing Map) ...
International audienceIn some real-world classification applications, such as target recognition, bo...
In this paper, a hybrid intelligent system that integrates the SOM (Self-Organizing Map) neural netw...
Multiple classifier systems (MCS) unite the answers of separately-trained powerful base-classifiers ...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
Part 10: Machine Learning - Natural LanguageInternational audienceA variety of methods have been dev...
Predicting plays a main role in making a good decision in a dynamic environment with real time data,...
Uncertainty is widely spread in real-world data. Uncertain data-in computer science-is typically fou...
This paper presents an adaptive fuzzy rule-based classification system using a new hybrid modeling m...
This paper aims at providing the concept of information granulation in Granular computing based patt...
Abstract. Uncertainty is widely spread in real-world data. Uncertain data-in computer science- is ty...
This paper reports on an investigation in classification technique employed to classify noised and u...
International audienceIn classification problem, several different classes may be partially overlapp...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceIn this paper we present a new credal classification rule (CCR) based on belie...
Abstract:- In this paper, a hybrid intelligent system that integrates the SOM (Self-Organizing Map) ...
International audienceIn some real-world classification applications, such as target recognition, bo...
In this paper, a hybrid intelligent system that integrates the SOM (Self-Organizing Map) neural netw...
Multiple classifier systems (MCS) unite the answers of separately-trained powerful base-classifiers ...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
Part 10: Machine Learning - Natural LanguageInternational audienceA variety of methods have been dev...
Predicting plays a main role in making a good decision in a dynamic environment with real time data,...
Uncertainty is widely spread in real-world data. Uncertain data-in computer science-is typically fou...
This paper presents an adaptive fuzzy rule-based classification system using a new hybrid modeling m...
This paper aims at providing the concept of information granulation in Granular computing based patt...
Abstract. Uncertainty is widely spread in real-world data. Uncertain data-in computer science- is ty...
This paper reports on an investigation in classification technique employed to classify noised and u...