This paper proposes a novel naïve Bayesian classifier in categorical uncertain data streams. Uncertainty in categorical data is usually represented by vector valued discrete pdf, which has to be carefully handled to guarantee the underlying performance in data mining applications. In this paper, we map the probabilistic attribute to deterministic points in the Euclidean space and design a distance based and a density based algorithms to measure the correlations between feature vectors and class labels. We also devise a new pre-binning approach to guarantee bounded computation and memory cost in uncertain data streams classification. Experimental results in real uncertain data streams prove that our density-based naive classifier is efficie...
PSerr&al004International audienceIn many real-world problems, input data may be pervaded with uncert...
In real-world problems, input data may be pervaded with uncertainty. In this paper, we investigate t...
This work deals with the problem of classifying uncertain data. With this aim the Uncertain Nearest ...
In recent years, a number of emerging applications, such as sensor monitoring systems, RFID networks...
Traditional classification algorithms require a large number of labelled examples from all the prede...
Currently available algorithms for data stream classification are all designed to handle precise dat...
Abstract. In recent years there has been a growing interest in Bayesian Network learning from uncert...
Certain data is a data whose values are known precisely whereas uncertain data means whose value are...
Classification of high dimensional data finds wide-ranging applications. In many of these applicatio...
This paper presents a novel approach to one-class-based uncertain data stream learning. Our proposed...
Most existing works on data stream classification assume the streaming data is precise and definite....
Uncertain objects arise in many applications such as sensor networks, moving object databases and me...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
Abstract. An important advantage of Gaussian processes is the ability to directly estimate classific...
In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classi...
PSerr&al004International audienceIn many real-world problems, input data may be pervaded with uncert...
In real-world problems, input data may be pervaded with uncertainty. In this paper, we investigate t...
This work deals with the problem of classifying uncertain data. With this aim the Uncertain Nearest ...
In recent years, a number of emerging applications, such as sensor monitoring systems, RFID networks...
Traditional classification algorithms require a large number of labelled examples from all the prede...
Currently available algorithms for data stream classification are all designed to handle precise dat...
Abstract. In recent years there has been a growing interest in Bayesian Network learning from uncert...
Certain data is a data whose values are known precisely whereas uncertain data means whose value are...
Classification of high dimensional data finds wide-ranging applications. In many of these applicatio...
This paper presents a novel approach to one-class-based uncertain data stream learning. Our proposed...
Most existing works on data stream classification assume the streaming data is precise and definite....
Uncertain objects arise in many applications such as sensor networks, moving object databases and me...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
Abstract. An important advantage of Gaussian processes is the ability to directly estimate classific...
In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classi...
PSerr&al004International audienceIn many real-world problems, input data may be pervaded with uncert...
In real-world problems, input data may be pervaded with uncertainty. In this paper, we investigate t...
This work deals with the problem of classifying uncertain data. With this aim the Uncertain Nearest ...