14–17 Nov 2023
Asia/Seoul timezone

Theory-driven Quantum Machine Learning for HEP

14 Nov 2023, 14:00
1h

Speaker

Dr Jack Y. Araz (Jefferson Lab.)

Description

Machine Learning is, in most cases, powerful but a black-box application. In this talk, we will tackle this very problem from a quantum mechanics point of view, arguing that an optimisation problem, such as classification or anomaly detection, can be studied by “rephrasing" the problem as a quantum many-body system or a mixed state. Such an approach allows us to employ the entire arsenal of quantum theory for data analysis techniques. Hence, this talk will present a small step towards fully theory-driven and interpretable quantum machine learning applications.

Presentation materials