Probability density function (p.d.f.) estimation plays a very important role in the field of data mining. Kernel density estimator (KDE) is the mostly used technology to estimate the unknown p.d.f. for the given dataset. The existing KDEs are usually inefficient when handling the p.d.f. estimation problem for stream data because a bran-new KDE has to be retrained based on the combination of current data and newly coming data. This process increases the training time and wastes the computation resource. This article proposes an incremental kernel density estimator (I-KDE) which deals with the p.d.f. estimation problem in the way of data stream computation. The I-KDE updates the current KDE dynamically and gradually with the newly coming data...
Kernel density estimators (KDEs) are ubiquitous tools for nonparametric estimation of probability de...
Abstract. Kernel density estimation (KDE) is an important method in nonparametric learning. While KD...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
A variety of real-world applications heavily relies on the analysis of transient data streams. Due t...
A growing number of real-world applications share the property that they have to deal with transient...
Kernel density estimation (KDE) is a statistical technique used to estimate the probability density ...
The nature of the kernel density estimator (KDE) is to find the underlying probability density funct...
AbstractNumerous facets of scientific research implicitly or explicitly call for the estimation of p...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
Efficient density estimation over an open-ended stream of high-dimensional data is of primary import...
The Kernel Density Estimation (KDE) method is seen here as the first step of the Expectation Maximiz...
In this paper, we propose a novel method SOMKE, for kernel density estimation (KDE) over data stream...
Abstract. A new classification algorithm based on combination of ker-nel density estimators is intro...
Kernel density estimation is a technique for estimation of probability density function that is a mu...
We focus on solving the problem of learning an optimal smoothing kernel for the unsupervised learnin...
Kernel density estimators (KDEs) are ubiquitous tools for nonparametric estimation of probability de...
Abstract. Kernel density estimation (KDE) is an important method in nonparametric learning. While KD...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
A variety of real-world applications heavily relies on the analysis of transient data streams. Due t...
A growing number of real-world applications share the property that they have to deal with transient...
Kernel density estimation (KDE) is a statistical technique used to estimate the probability density ...
The nature of the kernel density estimator (KDE) is to find the underlying probability density funct...
AbstractNumerous facets of scientific research implicitly or explicitly call for the estimation of p...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
Efficient density estimation over an open-ended stream of high-dimensional data is of primary import...
The Kernel Density Estimation (KDE) method is seen here as the first step of the Expectation Maximiz...
In this paper, we propose a novel method SOMKE, for kernel density estimation (KDE) over data stream...
Abstract. A new classification algorithm based on combination of ker-nel density estimators is intro...
Kernel density estimation is a technique for estimation of probability density function that is a mu...
We focus on solving the problem of learning an optimal smoothing kernel for the unsupervised learnin...
Kernel density estimators (KDEs) are ubiquitous tools for nonparametric estimation of probability de...
Abstract. Kernel density estimation (KDE) is an important method in nonparametric learning. While KD...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...