Let X = (X1,...,Xp) be a stochastic vector having joint density function fX(x) with partitions X1 = (X1,...,Xk) and X2 = (Xk+1,...,Xp). A new method for estimating the conditional density function of X1 given X2 is presented. It is based on locally Gaussian approximations, but simplified in order to tackle the curse of dimensionality in multivariate applications, where both response and explanatory variables can be vectors. We compare our method to some available competitors, and the error of approximation is shown to be small in a series of examples using real and simulated data, and the estimator is shown to be particularly robust against noise caused by independent variables. We also present examples of practical applications of our cond...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Paper 1 ”Bias and bandwidth for local likelihood density estimation”: A local likelihood density est...
A non-parametric conditional density estimation algorithm for nonlinear stochastic dynamic systems i...
We propose a general partition-based strategy to estimate conditional density with candidate densiti...
Paper 1 ”Bias and bandwidth for local likelihood density estimation”: A local likelihood density est...
We propose to approximate the conditional density function of a random variable Y given a dependent ...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
We propose to approximate the conditional density function of a random variable Y given a dependent ...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
We suggest two new methods for conditional density estimation. The first is based on locally fitting...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Paper 1 ”Bias and bandwidth for local likelihood density estimation”: A local likelihood density est...
A non-parametric conditional density estimation algorithm for nonlinear stochastic dynamic systems i...
We propose a general partition-based strategy to estimate conditional density with candidate densiti...
Paper 1 ”Bias and bandwidth for local likelihood density estimation”: A local likelihood density est...
We propose to approximate the conditional density function of a random variable Y given a dependent ...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
We propose to approximate the conditional density function of a random variable Y given a dependent ...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
We suggest two new methods for conditional density estimation. The first is based on locally fitting...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
We suggest two improved methods for conditional density estimation. The rst is based on locally ttin...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...