posted on 2020-05-26, 11:20authored byMichael Zbyszynski, Balandino Di Donato, Atau Tanaka
In this paper, we consider the effect of co-adaptive learning on the training and evaluation of real-time,
interactive machine learning systems, referring to specific examples in our work on action-perception
loops, feedback for virtual tasks, and training of regression and temporal models. Through these studies
we have encountered challenges when designing and assessing expressive, multimodal interactive
systems. We discuss those challenges to machine learning and human-computer interaction, proposing
future directions and research.
Funding
This project has received funding from the European Research Council (ERC) under the European Union’s Horizon 2020 research and innovation programme (Grant agreement No 789825).
History
Citation
Zbyszynski, Michael; Di Donato, Balandino and Tanaka, Atau. 2019. ’The Effect of Co-adaptive
Learning & Feedback in Interactive Machine Learning’. In: ACM CHI: Human-Centered Machine
Learning Perspectives Workshop. Glasgow, United Kingdom 4 May 2019.