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Interactive Machine Learning (IML)

Considering human interaction when designing machine learning (ML) systems bears great potential: On the one hand, decision-making in ML systems remains imperfect in practice, thus requiring human interaction for safety-critical applications such as clinical diagnostics. On the other hand, the burden of manual training data annotation can be alleviated by means of human-in-the-loop scenarios.

Taking this human-centered perspective, the Junior Group Interactive Machine Learning (IML) headed by Paul Jäger strives to pioneer ML research directed at real-life applications. Specifically, our research involves probabilistic modeling, explainable AI, user modeling, active learning, and interactive systems with a special focus on image analysis tasks such as object detection or segmentation. A further interest lies in the appropriate and application-oriented evaluation of ML systems.

IML is part of the Helmholtz Imaging Platform, an initiative towards leveraging image processing synergies across all Helmholtz research centers. Thus, next to medical applications driven by the DKFZ environment, the group collaborates with experts across all of Helmholtz to develop human-centered ML systems on diverse and unique imaging tasks.


Helmholtz Imaging spinning wheel

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