A key ingredient to modern data analysis is probability density estimation. However, it is well known that the curse of dimensionality prevents a proper estimation of densities in high dimensions. The problem is typically circumvented by using a fixed set of assumptions about the data, e.g., by assuming partial independence of features, data on a manifold or a customized kernel. These fixed assumptions limit the applicability of a method. In this paper we propose a framework that uses a flexible set of assumptions instead. It allows to tailor a model to various problems by means of 1d-decompositions. The approach achieves a fast runtime and is not limited by the curse of dimensionality as all estimations are performed in 1d-space. The wide ...
We investigate kernel density estimation where the kernel function varies from point to point. Densi...
Abstract. Pareto Density Estimation (PDE) as defined in this work is a method for the estimation of ...
Density estimation is the ubiquitous base modelling mechanism employed for many tasks including clus...
A key ingredient to modern data analysis is probability density estimation. However, it is well know...
Efficient density estimation over an open-ended stream of high-dimensional data is of primary import...
The ratio of two probability density functions is becoming a quantity of interest these days in the ...
Data Mining can be seen as an extension to statistics. It comprises the preparation of data and the ...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
This paper presents an algorithm for density estimation over non-stationary high-dimensional data st...
The increasing size of data sets has necessitated advancement in exploratory techniques. Methods tha...
Let p be an unknown and arbitrary probability distribution over [0, 1). We con-sider the problem of ...
<p>In many practical scenarios, prediction for high-dimensional observations can be accurately perfo...
Let us consider a defined density on a set of very large dimension. It is quite difficult to find an...
The joint density of a data stream is suitable for performing data mining tasks without having acces...
Many important data analysis tasks can be addressed by formulating them as probability estimation pr...
We investigate kernel density estimation where the kernel function varies from point to point. Densi...
Abstract. Pareto Density Estimation (PDE) as defined in this work is a method for the estimation of ...
Density estimation is the ubiquitous base modelling mechanism employed for many tasks including clus...
A key ingredient to modern data analysis is probability density estimation. However, it is well know...
Efficient density estimation over an open-ended stream of high-dimensional data is of primary import...
The ratio of two probability density functions is becoming a quantity of interest these days in the ...
Data Mining can be seen as an extension to statistics. It comprises the preparation of data and the ...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
This paper presents an algorithm for density estimation over non-stationary high-dimensional data st...
The increasing size of data sets has necessitated advancement in exploratory techniques. Methods tha...
Let p be an unknown and arbitrary probability distribution over [0, 1). We con-sider the problem of ...
<p>In many practical scenarios, prediction for high-dimensional observations can be accurately perfo...
Let us consider a defined density on a set of very large dimension. It is quite difficult to find an...
The joint density of a data stream is suitable for performing data mining tasks without having acces...
Many important data analysis tasks can be addressed by formulating them as probability estimation pr...
We investigate kernel density estimation where the kernel function varies from point to point. Densi...
Abstract. Pareto Density Estimation (PDE) as defined in this work is a method for the estimation of ...
Density estimation is the ubiquitous base modelling mechanism employed for many tasks including clus...