Parameterized Machine Learning for High-Energy Physics

January 28, 2016 Β· Declared Dead Β· πŸ› The European Physical Journal C

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Authors Pierre Baldi, Kyle Cranmer, Taylor Faucett, Peter Sadowski, Daniel Whiteson arXiv ID 1601.07913 Category hep-ex Cross-listed cs.LG, hep-ph Citations 259 Venue The European Physical Journal C Last Checked 3 months ago
Abstract
We investigate a new structure for machine learning classifiers applied to problems in high-energy physics by expanding the inputs to include not only measured features but also physics parameters. The physics parameters represent a smoothly varying learning task, and the resulting parameterized classifier can smoothly interpolate between them and replace sets of classifiers trained at individual values. This simplifies the training process and gives improved performance at intermediate values, even for complex problems requiring deep learning. Applications include tools parameterized in terms of theoretical model parameters, such as the mass of a particle, which allow for a single network to provide improved discrimination across a range of masses. This concept is simple to implement and allows for optimized interpolatable results.
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