PDE-Foam - a probability-density estimation method using self-adapting phase-space binning
Dannheim, Dominik, Carli, Tancredi, Grahn, Karl-Johan, Speckmayer, Peter, Voigt, Alexander
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 performance results for representative examples (toy models) and discuss the dependence of the obtained results on the choice of parameters. The new PDE-Foam shows improved classification capability for small training samples and reduced classification time compared to the original PDE method based on range searching.
Jul-22-2009
- Country:
- Europe
- Germany (0.14)
- Sweden (0.14)
- Switzerland (0.14)
- North America > United States (0.14)
- Europe
- Genre:
- Research Report (0.50)
- Technology: