A data stream classification method called DISSFCM (Dynamic Incremental Semi-Supervised FCM) is presented, which is based on an incremental semi-supervised fuzzy clustering algorithm. The method assumes that partially labeled data belonging to different classes are continuously available during time in form of chunks. Each chunk is processed by semi-supervised fuzzy clustering leading to a cluster-based classification model. The proposed DISSFCM is capable of dynamically adapting the number of clusters to data streams, by splitting low-quality clusters so as to improve classification quality. Experimental results on both synthetic and real-world data show the effectiveness of the proposed method in data stream classification
The problem of credit card fraud detection is approached by a semi-supervised classification task on...
The exploitation of data streams, nowadays provided nonstop by a myriad of diverse applications, ask...
DoctorData stream clustering is an unsupervised learning method for sequential data. The data stream...
A data stream classification method called DISSFCM (Dynamic Incremental Semi-Supervised FCM) is pres...
Data stream mining refers to methods able to mine continuously arriving and evolving data sequences ...
Data stream mining refers to methods able to mine continuously arriving and evolving data sequences ...
In the paper, adaptive modifications of fuzzy clustering methods have been proposed for solving the ...
Learning and prediction in a data streaming environment is challenging due to continuous arrival of ...
Abstract: Discovering interesting patterns or substructures in data streams is an important challeng...
In this paper, a novel evolving fuzzy rule-based classifier is presented. The proposed classifier ad...
In recent years, several clustering algorithms have been proposed with the aim of mining knowledge f...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
YesData streams have arisen as a relevant research topic during the past decade. They are real‐time,...
Virtual Learning Environments (VLE) offer a wide range of courses and learning supports for students...
This thesis work concerns the study of an adaptive fuzzy density-based clustering algorithm for data...
The problem of credit card fraud detection is approached by a semi-supervised classification task on...
The exploitation of data streams, nowadays provided nonstop by a myriad of diverse applications, ask...
DoctorData stream clustering is an unsupervised learning method for sequential data. The data stream...
A data stream classification method called DISSFCM (Dynamic Incremental Semi-Supervised FCM) is pres...
Data stream mining refers to methods able to mine continuously arriving and evolving data sequences ...
Data stream mining refers to methods able to mine continuously arriving and evolving data sequences ...
In the paper, adaptive modifications of fuzzy clustering methods have been proposed for solving the ...
Learning and prediction in a data streaming environment is challenging due to continuous arrival of ...
Abstract: Discovering interesting patterns or substructures in data streams is an important challeng...
In this paper, a novel evolving fuzzy rule-based classifier is presented. The proposed classifier ad...
In recent years, several clustering algorithms have been proposed with the aim of mining knowledge f...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
YesData streams have arisen as a relevant research topic during the past decade. They are real‐time,...
Virtual Learning Environments (VLE) offer a wide range of courses and learning supports for students...
This thesis work concerns the study of an adaptive fuzzy density-based clustering algorithm for data...
The problem of credit card fraud detection is approached by a semi-supervised classification task on...
The exploitation of data streams, nowadays provided nonstop by a myriad of diverse applications, ask...
DoctorData stream clustering is an unsupervised learning method for sequential data. The data stream...