In this paper, a novel evolving fuzzy rule-based classifier is presented. The proposed classifier addresses the three fundamental issues of data stream learning, viz., computational efficiency in terms of processing time and memory requirements, adaptive to changes, and robustness to noise. Though, there are several online classifiers available, most of them do not take into account all the three issues simultaneously. The newly proposed classifier is inherently adaptive and can attend to any minute changes as it learns the rules in online manner by considering each incoming example. However, it should be emphasized that it can easily distinguish noise from new concepts and automatically handles noise. The performance of the classifier is e...
To develop real time classification from high throughput of data stream (dynamic data) is one of the...
In this paper we present two novel approaches for on-line evolving fuzzy classifiers, called eClass ...
In this research, evolving neuro-fuzzy systems, emphasizing a low computational power, high predicti...
Abstract — A novel approach to on-line classification based on fuzzy rules with an open/evolving str...
Learning and prediction in a data streaming environment is challenging due to continuous arrival of ...
A new approach to the online classification of streaming data is introduced in this paper. It is bas...
In this paper a new method for training single-model and multi-model fuzzy classifiers incrementally...
Fuzzy pattern trees (FPT) have recently been in-troduced as a novel model class for machine learning...
In this paper, a novel self-adaptive fuzzy learning (SAFL) system is proposed for streaming data pre...
The concept of ensemble learning offers a promising avenue in learning from data streams under compl...
Data stream analysis is growing in popularity in the last years since several application domains re...
Abstract The extraction of models from data streams has become a hot topic in data mining due to the...
A data stream classification method called DISSFCM (Dynamic Incremental Semi-Supervised FCM) is pres...
Abstract: Humans often seek a second or third opinion about an important matter. Then, a final decis...
In this paper, we propose a novel approach to unsupervised and online data classification. The algor...
To develop real time classification from high throughput of data stream (dynamic data) is one of the...
In this paper we present two novel approaches for on-line evolving fuzzy classifiers, called eClass ...
In this research, evolving neuro-fuzzy systems, emphasizing a low computational power, high predicti...
Abstract — A novel approach to on-line classification based on fuzzy rules with an open/evolving str...
Learning and prediction in a data streaming environment is challenging due to continuous arrival of ...
A new approach to the online classification of streaming data is introduced in this paper. It is bas...
In this paper a new method for training single-model and multi-model fuzzy classifiers incrementally...
Fuzzy pattern trees (FPT) have recently been in-troduced as a novel model class for machine learning...
In this paper, a novel self-adaptive fuzzy learning (SAFL) system is proposed for streaming data pre...
The concept of ensemble learning offers a promising avenue in learning from data streams under compl...
Data stream analysis is growing in popularity in the last years since several application domains re...
Abstract The extraction of models from data streams has become a hot topic in data mining due to the...
A data stream classification method called DISSFCM (Dynamic Incremental Semi-Supervised FCM) is pres...
Abstract: Humans often seek a second or third opinion about an important matter. Then, a final decis...
In this paper, we propose a novel approach to unsupervised and online data classification. The algor...
To develop real time classification from high throughput of data stream (dynamic data) is one of the...
In this paper we present two novel approaches for on-line evolving fuzzy classifiers, called eClass ...
In this research, evolving neuro-fuzzy systems, emphasizing a low computational power, high predicti...