Statistical Pattern Recognition: Application to μτ Oscillation Searches Based on Kinematic Criteria
Abstract
Classic statistical techniques (like the multi-dimensional likelihood and the Fisher discriminant method) together with Multi-layer Perceptron and Learning Vector Quantization Neural Networks have been systematically used in order to find the best sensitivity when searching for μ τ oscillations. We discovered that for a general direct τ appearance search based on kinematic criteria: a) An optimal discrimination power is obtained using only three variables (Evisible, PTmiss and l) and their correlations. Increasing the number of variables (or combinations of variables) only increases the complexity of the problem, but does not result in a sensible change of the expected sensitivity. b) The multi-layer perceptron approach offers the best performance. As an example to assert numerically those points, we have considered the problem of τ appearance at the CNGS beam using a Liquid Argon TPC detector.
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