HEP-EXLGJun 22, 2023

Triggering Dark Showers with Conditional Dual Auto-Encoders

arXiv:2306.12955v24 citationsh-index: 123
Originality Highly original
AI Analysis

This provides an accurate, fast, model-independent algorithm for real-time event triggering in Large Hadron Collider experiments, addressing the need for generic new physics searches without strong assumptions.

The paper tackled the problem of detecting new physics signals as anomalies in collider data using only background samples, achieving excellent discrimination against multiple dark shower models with a novel unsupervised method that reduces the gap with fully supervised models.

We present a family of conditional dual auto-encoders (CoDAEs) for generic and model-independent new physics searches at colliders. New physics signals, which arise from new types of particles and interactions, are considered in our study as anomalies causing deviations in data with respect to expected background events. In this work, we perform a normal-only anomaly detection, which employs only background samples, to search for manifestations of a dark version of strong force applying (variational) auto-encoders on raw detector images, which are large and highly sparse, without leveraging any physics-based pre-processing or strong assumption on the signals. The proposed CoDAE has a dual-encoder design, which is general and can learn an auxiliary yet compact latent space through spatial conditioning, showing a neat improvement over competitive physics-based baselines and related approaches, therefore also reducing the gap with fully supervised models. It is the first time an unsupervised model is shown to exhibit excellent discrimination against multiple dark shower models, illustrating the suitability of this method as an accurate, fast, model-independent algorithm to deploy, e.g., in the real-time event triggering systems of Large Hadron Collider experiments such as ATLAS and CMS.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes