Abstract
Searches for anomalies are a significant motivation for the LHC and help define key analysis steps, including triggers. We discuss specific examples how LHC anomalies can be defined through probability density estimates, evaluated in a physics space or in an appropriate neural network latent space, and discuss the model-dependence in choosing an appropriate data parameterisation. We illustrate this for classical k-means clustering, a Dirichlet variational autoencoder, and invertible neural networks. For two especially challenging scenarios of jets from a dark sector we evaluate the strengths and limitations of each method.
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CITATION STYLE
Buss, T., Dillon, B. M., Finke, T., Krämer, M., Morandini, A., Mück, A., … Plehn, T. (2023). What’s anomalous in LHC jets? SciPost Physics, 15(4). https://doi.org/10.21468/SciPostPhys.15.4.168
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