Current research on data stream classification mainly focuses on certain data, in which pre-cise and definite value is usually assumed. However, data with uncertainty is quite natural in real-world application due to various causes, including imprecise measurement, repeated sampling and network errors. In this paper, we focus on uncertain data stream classifica-tion. Based on CVFDT and DTU, we propose our UCVFDT (Uncertainty-handling and Concept-adapting Very Fast Decision Tree) algorithm, which not only maintains the ability of CVFDT to cope with concept drift with high speed, but also adds the ability to handle data with uncertain attribute. Experimental study shows that the proposed UCVFDT al-gorithm is efficient in classifying dynamic d...
This paper presents a novel approach to one-class-based uncertain data stream learning. Our proposed...
Data stream analysis is growing in popularity in the last years since several application domains re...
Traditional decision tree classifiers work with data whose values are known and precise. We extend s...
Most data stream classification algorithms need to supply input with a large amount of precisely lab...
Most existing works on data stream classification assume the streaming data is precise and definite....
Currently available algorithms for data stream classification are all designed to handle precise dat...
In this paper we study the problem of constructing accurate decision tree models from data streams. ...
Data uncertainty is common in emerging applications, such as sensor networks, moving object database...
Certain data is a data whose values are known precisely whereas uncertain data means whose value are...
One of the current challenges in the field of data mining is to develop techniques to analyze uncert...
Data stream mining has recently grown in popularity, thanks to an increasing number of applications ...
Abstract — Classification is one of the important data mining techniques and Decision Tree is a most...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
This paper proposes a novel naïve Bayesian classifier in categorical uncertain data streams. Uncert...
AbstractThis paper addresses the classification problem with imperfect data. More precisely, it exte...
This paper presents a novel approach to one-class-based uncertain data stream learning. Our proposed...
Data stream analysis is growing in popularity in the last years since several application domains re...
Traditional decision tree classifiers work with data whose values are known and precise. We extend s...
Most data stream classification algorithms need to supply input with a large amount of precisely lab...
Most existing works on data stream classification assume the streaming data is precise and definite....
Currently available algorithms for data stream classification are all designed to handle precise dat...
In this paper we study the problem of constructing accurate decision tree models from data streams. ...
Data uncertainty is common in emerging applications, such as sensor networks, moving object database...
Certain data is a data whose values are known precisely whereas uncertain data means whose value are...
One of the current challenges in the field of data mining is to develop techniques to analyze uncert...
Data stream mining has recently grown in popularity, thanks to an increasing number of applications ...
Abstract — Classification is one of the important data mining techniques and Decision Tree is a most...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
This paper proposes a novel naïve Bayesian classifier in categorical uncertain data streams. Uncert...
AbstractThis paper addresses the classification problem with imperfect data. More precisely, it exte...
This paper presents a novel approach to one-class-based uncertain data stream learning. Our proposed...
Data stream analysis is growing in popularity in the last years since several application domains re...
Traditional decision tree classifiers work with data whose values are known and precise. We extend s...