30167 Hannover
Research Interests
My research interests revolve around theoretical development and practical application of statistical and Machine Learning methods, particularly in the context of Green AutoML. It is a field dedicated to developing environmentally sustainable and energy-efficient automated machine learning algorithms. I aim to leverage these techniques within industrial contexts to drive innovation across a variety of applications.
Curriculum Vitae
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Working Experience
2023 - Present
Doctoral Researcher, Leibniz University Hannover2022 - 2023
Doctoral Researcher, Volkswagen AG, Wolfsburg.2022
Analytics Professional, Deloitte Consulding LLC, Dusseldorf.2021 - 2022
Master's degree candidate, Internship and Thesis, IAV GmbH, Gifhorn. -
Education
2023 - Present
Ph.D. Student at the Institute of Artificial Intelligence, Leibniz University Hannover2019 - 2022
M.Sc. , Financial Mathematics, Technische Universität Braunschweig. Thesis: "Novelty Detection via Kernel Mean Embeddings".2016 - 2019
B.Sc. , Financial Mathematics, Bielefeld University. Thesis: "Prediction of Customer Churn Using Machine Learning Algorithms".
Towards Dynamic Priors in Bayesian Optimization for Hyperparameter Optimization
Abstract
Hyperparameter optimization (HPO), for example, based on Bayesian optimization (BO), supports users in designing models well-suited for a given dataset. HPO has proven its effectiveness on several applications, ranging from classical machine learning for tabular data to deep neural networks for computer vision and transformers for natural language processing. However, HPO still sometimes lacks acceptance by machine learning experts due to its black-box nature and limited user control. Addressing this, first approaches have been proposed to initialize BO methods with expert knowledge. However, these approaches do not allow for online steering during the optimization process. In this paper, we introduce a novel method that enables repeated interventions to steer BO via user input, specifying expert knowledge and user preferences at runtime of the HPO process in the form of prior distributions. To this end, we generalize an existing method, $\pi$BO, preserving theoretical guarantees. We also introduce a misleading prior detection scheme, which allows protection against harmful user inputs. In our experimental evaluation, we demonstrate that our method can effectively incorporate multiple priors, leveraging informative priors, whereas misleading priors are reliably rejected or overcome. Thereby, we achieve competitiveness to unperturbed BO.
Details
- Organisationseinheit(en)
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Fachgebiet Maschinelles Lernen
Fachgebiet Maschinelle Sprachverarbeitung
Institut für Künstliche Intelligenz
- Typ
- Aufsatz in Konferenzband
- Anzahl der Seiten
- 15
- Publikationsdatum
- 04.11.2025
- Publikationsstatus
- Veröffentlicht
- Elektronische Version(en)
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https://openreview.net/pdf?id=mQ0IENZRx2 (Zugang:
Offen
)