Search Results for author: Christian Tutschku

Found 3 papers, 1 papers with code

Training robust and generalizable quantum models

1 code implementation20 Nov 2023 Julian Berberich, Daniel Fink, Daniel Pranjić, Christian Tutschku, Christian Holm

We derive parameter-dependent Lipschitz bounds for quantum models with trainable encoding, showing that the norm of the data encoding has a crucial impact on the robustness against data perturbations.

Adversarial Robustness Quantum Machine Learning

Bringing Quantum Algorithms to Automated Machine Learning: A Systematic Review of AutoML Frameworks Regarding Extensibility for QML Algorithms

no code implementations6 Oct 2023 Dennis Klau, Marc Zöller, Christian Tutschku

This work describes the selection approach and analysis of existing AutoML frameworks regarding their capability of a) incorporating Quantum Machine Learning (QML) algorithms into this automated solving approach of the AutoML framing and b) solving a set of industrial use-cases with different ML problem types by benchmarking their most important characteristics.

AutoML Benchmarking +1

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