Regression aims at estimating the conditional mean of output given input. How-ever, regression is not informative enough if the conditional density is multimodal, heteroscedastic, and asymmetric. In such a case, estimating the conditional den-sity itself is preferable, but conditional density estimation (CDE) is challenging in high-dimensional space. A naive approach to coping with high-dimensionality is to rst perform dimensionality reduction (DR) and then execute CDE. However, such a two-step process does not perform well in practice because the error incurred in the rst DR step can be magnied in the second CDE step. In this paper, we propose a novel single-shot procedure that performs CDE and DR simultaneously in an integrated way. Our k...
We introduce a novel method for estimating the partition function and marginals of distributions def...
We consider informative dimension reduction for regression problems with random predictors. Based on...
Methods for estimating the ratio of two probability density functions have been actively explored re...
Regression is a fundamental problem in statistical data analysis, which aims at es-timating the cond...
Sufficient dimension reduction (SDR) is a framework of supervised linear dimension reduction, and is...
The ratio of two probability density functions is becoming a quantity of interest these days in the ...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
We propose to approximate the conditional density function of a random variable Y given a dependent ...
The direct and inverse projections (DIP) method was proposed to reduce the feature space to the give...
The importance of dimension reduction has been increasing according to the growth of the size of ava...
Methods for directly estimating the ratio of two probability density functions without going through...
Hinder F, Vaquet V, Brinkrolf J, Hammer B. Fast Non-Parametric Conditional Density Estimation using ...
Many prediction problems that arise in computer vision and robotics can be formulated within a regre...
Let us consider a defined density on a set of very large dimension. It is quite difficult to find an...
Humans as well as humanoid robots can use a large number of degrees of freedom to solve very complex...
We introduce a novel method for estimating the partition function and marginals of distributions def...
We consider informative dimension reduction for regression problems with random predictors. Based on...
Methods for estimating the ratio of two probability density functions have been actively explored re...
Regression is a fundamental problem in statistical data analysis, which aims at es-timating the cond...
Sufficient dimension reduction (SDR) is a framework of supervised linear dimension reduction, and is...
The ratio of two probability density functions is becoming a quantity of interest these days in the ...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
We propose to approximate the conditional density function of a random variable Y given a dependent ...
The direct and inverse projections (DIP) method was proposed to reduce the feature space to the give...
The importance of dimension reduction has been increasing according to the growth of the size of ava...
Methods for directly estimating the ratio of two probability density functions without going through...
Hinder F, Vaquet V, Brinkrolf J, Hammer B. Fast Non-Parametric Conditional Density Estimation using ...
Many prediction problems that arise in computer vision and robotics can be formulated within a regre...
Let us consider a defined density on a set of very large dimension. It is quite difficult to find an...
Humans as well as humanoid robots can use a large number of degrees of freedom to solve very complex...
We introduce a novel method for estimating the partition function and marginals of distributions def...
We consider informative dimension reduction for regression problems with random predictors. Based on...
Methods for estimating the ratio of two probability density functions have been actively explored re...