Quantum Technology Initiative Journal Club

Europe/Zurich
513/R-070 - Openlab Space (CERN)

513/R-070 - Openlab Space

CERN

15
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Michele Grossi (CERN)
Description

Weekly Journal Club meetings organised in the framework of the CERN Quantum Technology Initiative (QTI) to present and discuss scientific papers in the field of quantum science and technology. The goal is to help researchers keep track of current findings and walk away with ideas for their own research. Some previous knowledge of quantum physics would be helpful, but is not required to follow the talks.

To propose a paper for discussion, contact: michele.grossi@cern.ch

Zoom Meeting ID
63779300431
Host
Michele Grossi
Alternative host
Matteo Robbiati
Passcode
55361000
Useful links
Join via phone
Zoom URL
    • 16:00 17:00
      CERN QTI Journal CLUB
      Convener: Dr Michele Grossi (CERN)
      • 16:00
        Dimitrios ATHANASAKOS (Stony Brook University) 40m

        TITLE: Graph theory inspired anomaly detection at the LHC

        Link: https://arxiv.org/pdf/2506.19920

        Abstract: Designing model-independent anomaly detection algorithms for analyzing LHC data remains a central challenge in the search for new physics, due to the high dimensionality of collider events. In this work, we develop a graph autoencoder as an unsupervised, model- agnostic tool for anomaly detection, using the LHC Olympics dataset as a benchmark. By representing jet constituents as a graph, we introduce a method to systematically control the information available to the model through sparse graph constructions that serve as physically motivated inductive biases. Specifically, (1) we construct graph autoencoders based on locally rigid Laman graphs and globally rigid unique graphs, and (2) we explore the clustering of jet constituents into subjets to interpolate between high- and low-level input representations. We obtain the best performance, measured in terms of the Significance Improvement Characteristic curve for an intermediate level of subjet clustering and certain sparse unique graph constructions. We further investigate the role of graph connectivity in jet classification tasks. Our results demonstrate the potential of leveraging graph-theoretic insights to refine and increase the interpretability of machine learning tools for collider experiments.

        Speaker: Dimitrios Athanasakos