Title of article :
A multi-variate discrimination technique based on range-searching
Author/Authors :
Carli، نويسنده , , T. and Koblitz، نويسنده , , B.، نويسنده ,
Abstract :
We present a fast and transparent multi-variate event classification technique, called PDE-RS, which is based on sampling the signal and background densities in a multi-dimensional phase space using range-searching. The employed algorithm is presented in detail and its behaviour is studied with simple toy examples representing basic patterns of problems often encountered in High Energy Physics data analyses. In addition an example relevant for the search for instanton-induced processes in deep-inelastic scattering at HERA is discussed. For all studied examples, the new presented method performs as good as artificial Neural Networks and has furthermore the advantage to need less computation time. This allows to carefully select the best combination of observables which optimally separate the signal and background and for which the simulations describe the data best. Moreover, the systematic and statistical uncertainties can be easily evaluated. The method is therefore a powerful tool to find a small number of signal events in the large data samples expected at future particle colliders.
Keywords :
Range-searching , Event classification , Deep-inelastic scattering , HERA , NEURAL NETWORKS , Probability density estimation , Multi-variate discrimination technique , Instanton-induced processes
Journal title :
Astroparticle Physics