Probability Density Estimation (PDE) is a multivariate discrimination technique based on sampling signal and background densities defined by event samples from data or Monte-Carlo (MC) simulations in a multi-dimensional phase space. In this paper, we present a modification of the PDE method that uses a self-adapting binning method to divide the multi-dimensional phase space in a finite number of hyper-rectangles (cells). The binning algorithm adjusts the size and position of a predefined number of cells inside the multi-dimensional phase space, minimising the variance of the signal and background densities inside the cells. The implementation of the binning algorithm PDE-Foam is based on the MC event-generation package Foam. We present perf...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
There has been substantial interest in developing Markov chain Monte Carlo algorithms based on piece...
This thesis is divided into two parts. In the first part we describe a new Monte Carlo algorithm for...
Probability-Density Estimation (PDE) is a multivariate discrimination technique based on sampling si...
[Abridged] We present a novel technique, dubbed FiEstAS, to estimate the underlying density field fr...
Probability Density Approximation (PDA) is a non-parametric method of calculating probabilitydensiti...
A regular paving (RP) is a finite succession of bisections that partitions a multidimensional box in...
Dynamical models are widely used in systems biology to describe biological processes ranging from si...
We present a simple algorithm to group events observed (rather than predicted) in a bounded region o...
We present a method for solving population density equations (PDEs)–-a mean-field technique describi...
We present a novel method for solving population density equations (PDEs) - a mean field technique d...
Abstract. Pareto Density Estimation (PDE) as defined in this work is a method for the estimation of ...
A comprehensive methodology for semiparametric probability density estimation is introduced and expl...
While statisticians are well-accustomed to performing exploratory analysis in the modeling stage of ...
To appear in Journal of Computational and Graphical Statistics (2013)While statisticians are well-ac...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
There has been substantial interest in developing Markov chain Monte Carlo algorithms based on piece...
This thesis is divided into two parts. In the first part we describe a new Monte Carlo algorithm for...
Probability-Density Estimation (PDE) is a multivariate discrimination technique based on sampling si...
[Abridged] We present a novel technique, dubbed FiEstAS, to estimate the underlying density field fr...
Probability Density Approximation (PDA) is a non-parametric method of calculating probabilitydensiti...
A regular paving (RP) is a finite succession of bisections that partitions a multidimensional box in...
Dynamical models are widely used in systems biology to describe biological processes ranging from si...
We present a simple algorithm to group events observed (rather than predicted) in a bounded region o...
We present a method for solving population density equations (PDEs)–-a mean-field technique describi...
We present a novel method for solving population density equations (PDEs) - a mean field technique d...
Abstract. Pareto Density Estimation (PDE) as defined in this work is a method for the estimation of ...
A comprehensive methodology for semiparametric probability density estimation is introduced and expl...
While statisticians are well-accustomed to performing exploratory analysis in the modeling stage of ...
To appear in Journal of Computational and Graphical Statistics (2013)While statisticians are well-ac...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
There has been substantial interest in developing Markov chain Monte Carlo algorithms based on piece...
This thesis is divided into two parts. In the first part we describe a new Monte Carlo algorithm for...