AbstractIn many domains when we have several competing classifiers available we want to synthesize them or some of them to get a more accurate classifier by a combination function. In this paper we propose a ‘class-indifferent’ method for combining classifier decisions represented by evidential structures called triplet and quartet, using Dempster's rule of combination. This method is unique in that it distinguishes important elements from the trivial ones in representing classifier decisions, makes use of more information than others in calculating the support for class labels and provides a practical way to apply the theoretically appealing Dempster–Shafer theory of evidence to the problem of ensemble learning. We present a formalism for ...
Combining classifiers by majority voting (MV) has recently emerged as an effective way of improving...
In this paper, we introduced a new approach of combining multiple classifiers in a heterogeneous ens...
In this paper, we introduced a new approach of combining multiple classifiers in a heterogeneous ens...
AbstractIn many domains when we have several competing classifiers available we want to synthesize t...
Combining multiple classifiers via combining schemes or meta-learners has led to substantial improve...
International audienceIn pattern classification problem, different classifiers learnt using differen...
This paper presents a new classifier combination technique based on the Dempster-Shafer theory of ev...
Fusion of an ensemble of multiple classifiers can result in more accurate classification results tha...
AbstractDiversity being inherent in classifiers is widely acknowledged as an important issue in cons...
AbstractDiversity being inherent in classifiers is widely acknowledged as an important issue in cons...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
AbstractWhen combining classifiers in the Dempster–Shafer framework, Dempster’s rule is generally us...
International audienceIn pattern classification problem, different classifiers learnt using differen...
In multiple-attribute decision making (MADM) problems, one often needs to deal with decision informa...
Classification accuracy can be improved through multiple classifier approach. It has been proven tha...
Combining classifiers by majority voting (MV) has recently emerged as an effective way of improving...
In this paper, we introduced a new approach of combining multiple classifiers in a heterogeneous ens...
In this paper, we introduced a new approach of combining multiple classifiers in a heterogeneous ens...
AbstractIn many domains when we have several competing classifiers available we want to synthesize t...
Combining multiple classifiers via combining schemes or meta-learners has led to substantial improve...
International audienceIn pattern classification problem, different classifiers learnt using differen...
This paper presents a new classifier combination technique based on the Dempster-Shafer theory of ev...
Fusion of an ensemble of multiple classifiers can result in more accurate classification results tha...
AbstractDiversity being inherent in classifiers is widely acknowledged as an important issue in cons...
AbstractDiversity being inherent in classifiers is widely acknowledged as an important issue in cons...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
AbstractWhen combining classifiers in the Dempster–Shafer framework, Dempster’s rule is generally us...
International audienceIn pattern classification problem, different classifiers learnt using differen...
In multiple-attribute decision making (MADM) problems, one often needs to deal with decision informa...
Classification accuracy can be improved through multiple classifier approach. It has been proven tha...
Combining classifiers by majority voting (MV) has recently emerged as an effective way of improving...
In this paper, we introduced a new approach of combining multiple classifiers in a heterogeneous ens...
In this paper, we introduced a new approach of combining multiple classifiers in a heterogeneous ens...