2017
DOI: 10.48550/arxiv.1702.04686
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Support Vector Machines and generalisation in HEP

Adrian Bevan,
Rodrigo Gamboa Goñi,
Jon Hays
et al.

Abstract: We review the concept of Support Vector Machines (SVMs) and discuss examples of their use in a number of scenarios. Several SVM implementations have been used in HEP and we exemplify this algorithm using the Toolkit for Multivariate Analysis (TMVA) implementation.We discuss examples relevant to HEP including background suppression for H → τ + τ − at the LHC with several different kernel functions. Performance benchmarking leads to the issue of generalisation of hyper-parameter selection. The avoidance of fine … Show more

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