In this paper, we propose two new neuro--fuzzy schemes, one for classification and one for clustering problems. The classification scheme is based on Simpson's Fuzzy Min Max method, and relaxes some assumptions he makes. This enables our scheme to handle mutually non exclusive classes. The neuro--fuzzy clustering scheme is a multiresolution algorithm that is modeled after the mechanics of human pattern recognition. We also present data from an exhaustive comparison of these techniques with neural, statistical, machine learning and other traditional approaches to pattern recognition applications. The data sets used for comparisons include those from the machine learning repository at the University of California, Irvine. We find that ou...
Bioinformatics is an emerging science and technology which has lots of research potential in the fut...
One of the standard approaches for data analysis in unsupervised machine learning techniques is clus...
Providing a broad but in-depth introduction to neural network and machine learning in a statistical ...
In tbis paper, we propose two new nCllro-fIlZ7.} ' schemes, one for classification and one for ...
Neural networks and fuzzy techniques are among the most promising approaches to pattern recognition....
New approaches like neural networks and fuzzy sets have been used more and more in pattern recogniti...
Abstract:-In the paper we present a new class of neuro-fuzzy systems for pattern classification. The...
AbstractIn our study, we proposed a novel Neuro-fuzzy classification technique for data mining. The ...
In our study, we proposed a novel Neuro-fuzzy classification technique for data mining. The inputs t...
This paper presents a new neuro-fuzzy classifier, inspired by the Simpson's (1992, 1993) min-max mod...
Clustering and pattern recognition have been used for various purposes since times immemorial. Howev...
Clustering and pattern recognition have been used for various purposes since times immemorial. Howev...
ABSTRACT: To combine or not to combine? Though not a question of the same gravity as the Shakespeare...
In this work, we examine three softcomputing methodologies, i.e. rule based fuzzy classification sys...
In this thesis we studied two of the most promising neural network classifiers called as fuzzy min-m...
Bioinformatics is an emerging science and technology which has lots of research potential in the fut...
One of the standard approaches for data analysis in unsupervised machine learning techniques is clus...
Providing a broad but in-depth introduction to neural network and machine learning in a statistical ...
In tbis paper, we propose two new nCllro-fIlZ7.} ' schemes, one for classification and one for ...
Neural networks and fuzzy techniques are among the most promising approaches to pattern recognition....
New approaches like neural networks and fuzzy sets have been used more and more in pattern recogniti...
Abstract:-In the paper we present a new class of neuro-fuzzy systems for pattern classification. The...
AbstractIn our study, we proposed a novel Neuro-fuzzy classification technique for data mining. The ...
In our study, we proposed a novel Neuro-fuzzy classification technique for data mining. The inputs t...
This paper presents a new neuro-fuzzy classifier, inspired by the Simpson's (1992, 1993) min-max mod...
Clustering and pattern recognition have been used for various purposes since times immemorial. Howev...
Clustering and pattern recognition have been used for various purposes since times immemorial. Howev...
ABSTRACT: To combine or not to combine? Though not a question of the same gravity as the Shakespeare...
In this work, we examine three softcomputing methodologies, i.e. rule based fuzzy classification sys...
In this thesis we studied two of the most promising neural network classifiers called as fuzzy min-m...
Bioinformatics is an emerging science and technology which has lots of research potential in the fut...
One of the standard approaches for data analysis in unsupervised machine learning techniques is clus...
Providing a broad but in-depth introduction to neural network and machine learning in a statistical ...