How and What Can Humans Learn from Being in the Loop?Invoking Contradiction Learning as a Measure to Make Humans Smarter

被引:0
作者
Benjamin M. Abdel-Karim
Nicolas Pfeuffer
Gernot Rohde
Oliver Hinz
机构
[1] Goethe University Frankfurt,Chair of Information Systems and Information Management
[2] University Hospital Frankfurt,undefined
来源
KI - Künstliche Intelligenz | 2020年 / 34卷
关键词
Machine teaching; Machine learning; Experts; Feedback loop;
D O I
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中图分类号
学科分类号
摘要
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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页码:199 / 207
页数:8
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[1]  
Amershi S(2014)Power to the people: the role of humans in interactive machine learning Assoc Adv Artif Intell 35 105-120
[2]  
Cakmak M(1985)Intelligent tutoring systems Science 228 456-462
[3]  
Knox WB(1972)Conditions under which feedback facilitates learning from programmed lessons J Educ Psychol 63 186-908
[4]  
Kulesza T(1959)“fate” of first-list associations in transfer theory J Exp Psychol 58 97-318
[5]  
Anderson JR(2011)Guidelines for designing visual ontologies to support knowledge identification MIS Q 34 883-127
[6]  
Boyle CF(2006)The anchoring-and-adjustment heuristic: why the adjustments are insufficient Psychol Sci 17 311-530
[7]  
Reiser BJ(2017)Dermatologist-level classification of skin cancer with deep neural networks Nature 542 115-31
[8]  
Anderson RC(1999)Explanations from intelligent systems: theoretical foundations and implications for practice MIS Q 23 497-11
[9]  
Kulhavy RW(1987)Feedback processing and error correction J Educ Psychol 79 320-10
[10]  
Andre T(2002)Problem solving and knowledge inertia Expert Syst Appl 22 21-513