Item type:Journal Article,

How and What Can Humans Learn from Being in the Loop?

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This article discusses the counterpart of interactive machine learning, i.e., human learning while being in the loop in a human-machine collaboration. For such cases we propose the use of a Contradiction Matrix to assess the overlap and the contradictions of human and machine predictions. We show in a small-scaled user study with experts in the area of pneumology (1) that machine-learning based systems can classify X-rays with respect to diseases with a meaningful accuracy, (2) humans partly use contradictions to reconsider their initial diagnosis, and (3) that this leads to a higher overlap between human and machine diagnoses at the end of the collaboration situation. We argue that disclosure of information on diagnosis uncertainty can be beneficial to make the human expert reconsider her or his initial assessment which may ultimately result in a deliberate agreement. In the light of the observations from our project, it becomes apparent that collaborative learning in such a human-in-the-loop scenario could lead to mutual benefits for both human learning and interactive machine learning. Bearing the differences in reasoning and learning processes of humans and intelligent systems in mind, we argue that interdisciplinary research teams have the best chances at tackling this undertaking and generating valuable insights.

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Abdel-Karim, Benjamin M.; Pfeuffer, Nicolas; Rohde, Gernot; Hinz, Oliver (2020): How and What Can Humans Learn from Being in the Loop?. KI - Künstliche Intelligenz: Vol. 34, No. 2. DOI: 10.1007/s13218-020-00638-x. Springer. PISSN: 1610-1987. pp. 199-207

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Experts, Feedback loop, Machine learning, Machine teaching

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Number of citations to item: 11

  • Patrick Schramowski, Wolfgang Stammer, Stefano Teso, Anna Brugger, Franziska Herbert, Xiaoting Shao, Hans-Georg Luigs, Anne-Katrin Mahlein, Kristian Kersting (2020): Making deep neural networks right for the right scientific reasons by interacting with their explanations, In: Nature Machine Intelligence 8(2), doi:10.1038/s42256-020-0212-3
  • Michael Guckert, Nils Gumpfer, Jennifer Hannig, Till Keller, Neil Urquhart (2021): A conceptual framework for establishing trust in real world intelligent systems, In: Cognitive Systems Research, doi:10.1016/j.cogsys.2021.04.001
  • Laurie Hughes, Reza Kiani Mavi, Masoud Aghajani, Keith Fitzpatrick, Senali Madugoda Gunaratnege, Seyed Ashkan Hosseini Shekarabi, Richard Hughes, Ahmad Khanfar, Ahdieh Khatavakhotan, Neda Kiani Mavi, Keyao Li, Moataz Mahmoud, Tegwen Malik, Sashah Mutasa, Farzaneh Nafar, Ross Yates, Rasha Alahmad, Il Jeon, Yogesh K. Dwivedi (2025): Impact of artificial intelligence on project management (PM): Multi-expert perspectives on advancing knowledge and driving innovation toward PM2030, In: Journal of Innovation & Knowledge 5(10), doi:10.1016/j.jik.2025.100772
  • Laura Valtonen, Saku J. Makinen (2022): Human-in-the-loop: Explainable or accurate artificial intelligence by exploiting human bias?, In: 2022 IEEE 28th International Conference on Engineering, Technology and Innovation (ICE/ITMC) & 31st International Association For Management of Technology (IAMOT) Joint Conference, doi:10.1109/ice/itmc-iamot55089.2022.10033225
  • Nicolas Pfeuffer, Lorenz Baum, Wolfgang Stammer, Benjamin M. Abdel-Karim, Patrick Schramowski, Andreas M. Bucher, Christian Hügel, Gernot Rohde, Kristian Kersting, Oliver Hinz (2023): Explanatory Interactive Machine Learning, In: Business & Information Systems Engineering 6(65), doi:10.1007/s12599-023-00806-x
  • Yulia Litvinova, Patrick Mikalef, Xin (Robert) Luo (2024): Framework for human–XAI symbiosis: extended self from the dual-process theory perspective, In: Journal of Business Analytics 4(7), doi:10.1080/2573234x.2024.2396366
  • Changhun Han, Apsara Abeysiriwardhane, Shuhong Chai, Ananda Maiti (2021): Future Directions for Human-Centered Transparent Systems for Engine Room Monitoring in Shore Control Centers, In: Journal of Marine Science and Engineering 1(10), doi:10.3390/jmse10010022
  • Steffen Nixdorf, Minqi Zhang, Fazel Ansari, Eric H. Grosse (2022): Reciprocal Learning in Production and Logistics, In: IFAC-PapersOnLine 10(55), doi:10.1016/j.ifacol.2022.09.519
  • Philipp Spitzer, Niklas Kühl, Daniel Heinz, Gerhard Satzger (2023): ML-Based Teaching Systems: A Conceptual Framework, In: Proceedings of the ACM on Human-Computer Interaction CSCW2(7), doi:10.1145/3610197
  • Johannes Chen, Maximilian Lowin, Domenic Kellner, Oliver Hinz, Elisabeth Hannah Adam, Angelo Ippolito, Katharina Wenger-Alakmeh (2023): Designing Expert-Augmented Clinical Decision Support Systems to Predict Mortality Risk in ICUs, In: KI - Künstliche Intelligenz 2-4(37), doi:10.1007/s13218-023-00808-7
  • Frank T. Piller, Verena Nitsch, Wil van der Aalst (2022): Hybrid Intelligence in Next Generation Manufacturing: An Outlook on New Forms of Collaboration Between Human and Algorithmic Decision-Makers in the Factory of the Future, In: Contributions to Management Science, doi:10.1007/978-3-031-07734-0_10
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