This paper presents a novel approach to one-class-based uncertain data stream learning. Our proposed approach works in three steps. Firstly, we put forward a local kernel-density-based method to generate a bound score for each instance, which refines the location of the corresponding instance. Secondly, we construct an uncertain one-class classifier by incorporating the generated bound score into a one-class SVM-based learning phase. Thirdly, we devise an ensemble classifier, integrated from uncertain one-class classifiers built on the current and historical chunks, to cope with the concept drift involved in the uncertain data stream environment. Our proposed method explicitly handles the uncertainty of the input data and enhances the abili...
Most data stream classification algorithms need to supply input with a large amount of precisely lab...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
Current research on data stream classification mainly focuses on certain data, in which pre-cise and...
This paper presents a novel framework to uncertain one-class learning and concept summarization lear...
Abstract—This paper presents a novel framework to uncertain one-class learning and concept summariza...
Currently available algorithms for data stream classification are all designed to handle precise dat...
In this paper, we formulate a new research problem of learning from vaguely labeled one-class data s...
This paper proposes a novel naïve Bayesian classifier in categorical uncertain data streams. Uncert...
In this paper, we study the problem of learning from concept drifting data streams with noise, where...
Most existing works on data stream classification assume the streaming data is precise and definite....
This paper investigates a new learning model in which the input data is corrupted with noise. We pre...
Two critical challenges typically associated with mining data streams are concept drift and data con...
Abstract. An important advantage of Gaussian processes is the ability to directly estimate classific...
In this paper, we propose a new research problem on active learning from data streams, where data vo...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
Most data stream classification algorithms need to supply input with a large amount of precisely lab...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
Current research on data stream classification mainly focuses on certain data, in which pre-cise and...
This paper presents a novel framework to uncertain one-class learning and concept summarization lear...
Abstract—This paper presents a novel framework to uncertain one-class learning and concept summariza...
Currently available algorithms for data stream classification are all designed to handle precise dat...
In this paper, we formulate a new research problem of learning from vaguely labeled one-class data s...
This paper proposes a novel naïve Bayesian classifier in categorical uncertain data streams. Uncert...
In this paper, we study the problem of learning from concept drifting data streams with noise, where...
Most existing works on data stream classification assume the streaming data is precise and definite....
This paper investigates a new learning model in which the input data is corrupted with noise. We pre...
Two critical challenges typically associated with mining data streams are concept drift and data con...
Abstract. An important advantage of Gaussian processes is the ability to directly estimate classific...
In this paper, we propose a new research problem on active learning from data streams, where data vo...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
Most data stream classification algorithms need to supply input with a large amount of precisely lab...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
Current research on data stream classification mainly focuses on certain data, in which pre-cise and...