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Symmetries, Safety, and Self-Supervision

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arxiv 2108.04253 v1 pith:I5V5Z5OJ submitted 2021-08-09 hep-ph

Symmetries, Safety, and Self-Supervision

classification hep-ph
keywords representationdatajetclrsymmetriesagnosticalternativechallengechoice
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Collider searches face the challenge of defining a representation of high-dimensional data such that physical symmetries are manifest, the discriminating features are retained, and the choice of representation is new-physics agnostic. We introduce JetCLR to solve the mapping from low-level data to optimized observables though self-supervised contrastive learning. As an example, we construct a data representation for top and QCD jets using a permutation-invariant transformer-encoder network and visualize its symmetry properties. We compare the JetCLR representation with alternative representations using linear classifier tests and find it to work quite well.

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Cited by 1 Pith paper

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