Discretization, defined as a set of cuts over domains of attributes, represents an important pre-processing task for numeric data analysis. Some Machine Learning algorithms require a discrete feature space but in real-world applications continuous attributes must be handled. To deal with this problem many supervised discretization methods have been proposed but little has been done to synthesize unsupervised discretization methods to be used in domains where no class information is available. Furthermore, existing methods such as (equal-width or equal-frequency) binning, are not well-principled, raising therefore the need for more sophisticated methods for the unsupervised discretization of continuous features. This paper presents a novel u...
Efficient density estimation over an open-ended stream of high-dimensional data is of primary import...
Data Mining can be seen as an extension to statistics. It comprises the preparation of data and the ...
We focus on solving the problem of learning an optimal smoothing kernel for the unsupervised learnin...
Discretization, defined as a set of cuts over domains of attributes, represents an important pre-pro...
Nowadays, machine learning algorithms can be found in many applications where the classifiers play a...
This paper presents an unsupervised discretization method that performs density estimation for univa...
Discretization is a process applied to transform continuous data into data with discrete attributes....
Developing statistical machine learning algorithms involves making various degrees of assumptions ab...
Many supervised machine learning algorithms require a discrete feature space. In this paper, we revi...
Probabilistic label learning is a challenging task that arises from recent real-world problems withi...
We suggest a method for rendering a standard kernel density estimator unimodal: tilting the empirica...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
In this paper, a novel unsupervised approach for the segmentation of unorganized 3D points sets is p...
International audienceThis paper studies the estimation of the conditional density f(x,⋅) of Yi give...
Kernel density estimation, a.k.a. Parzen windows, is a popular density estimation method, which can ...
Efficient density estimation over an open-ended stream of high-dimensional data is of primary import...
Data Mining can be seen as an extension to statistics. It comprises the preparation of data and the ...
We focus on solving the problem of learning an optimal smoothing kernel for the unsupervised learnin...
Discretization, defined as a set of cuts over domains of attributes, represents an important pre-pro...
Nowadays, machine learning algorithms can be found in many applications where the classifiers play a...
This paper presents an unsupervised discretization method that performs density estimation for univa...
Discretization is a process applied to transform continuous data into data with discrete attributes....
Developing statistical machine learning algorithms involves making various degrees of assumptions ab...
Many supervised machine learning algorithms require a discrete feature space. In this paper, we revi...
Probabilistic label learning is a challenging task that arises from recent real-world problems withi...
We suggest a method for rendering a standard kernel density estimator unimodal: tilting the empirica...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
In this paper, a novel unsupervised approach for the segmentation of unorganized 3D points sets is p...
International audienceThis paper studies the estimation of the conditional density f(x,⋅) of Yi give...
Kernel density estimation, a.k.a. Parzen windows, is a popular density estimation method, which can ...
Efficient density estimation over an open-ended stream of high-dimensional data is of primary import...
Data Mining can be seen as an extension to statistics. It comprises the preparation of data and the ...
We focus on solving the problem of learning an optimal smoothing kernel for the unsupervised learnin...