Particle/Astro-Machine Learning Seminar

An unfolding method based on conditional Invertible Neural Networks (cINN) using iterative training

Abstract: The unfolding of detector effects is crucial for the comparison of data to theory predictions. While traditional methods are limited to representing the data in a low number of dimensions, machine learning has enabled new unfolding techniques while retaining the full dimensionality. Generative networks like invertible neural networks (INN) enable a probabilistic unfolding, which maps individual data events to their corresponding unfolded probability distribution.

Finding the unknown with resonant anomaly detection

Abstract: 

Resonant anomaly detection is an emerging class of unsupervised machine learning methods aiming to enhance the sensitivity of beyond-the-standard-model searches in high-energy physics. Contrary to conventional searches, where an explicit new physics signal model is targeted, this data-driven approach can cover a wide range of signals in a single analysis and with relatively minimal assumptions. I will provide an introduction to the concept and discuss a curated set of recent advances and challenges, as well as an ongoing real-world application.

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