论文标题

团队学习作为设计人类共同创造系统的镜头

Team Learning as a Lens for Designing Human-AI Co-Creative Systems

论文作者

Gmeiner, Frederic, Holstein, Kenneth, Martelaro, Nikolas

论文摘要

生成的,ML驱动的交互式系统有可能改变人们在创作过程中与计算机互动的方式 - 将工具变成共同创建者。但是,目前尚不清楚我们如何在开放式任务域中实现有效的人类协作。在与ML驱动系统的交互中,沟通涉及一些已知的挑战。共同创造系统设计的一个被忽视的方面是如何在学习与此类系统协作时更好地支持用户。在这里,我们将人类合作的合作重新定为一个学习问题:受团队学习的研究启发,我们假设适用于人类人类团队的类似学习策略也可能会提高与共同创造生成系统一起工作的人类的协作效率和质量。在该职位论文中,我们旨在促进团队学习,作为设计更有效的共同创造人类协作的镜头,并强调协作过程质量作为共同创造系统的目标。此外,我们概述了将团队学习支持嵌入共同创造的AI系统中的初步示意图。我们结论是提出研究议程,并提出开放问题,以进一步研究支持人们学习与生成AI系统合作。

Generative, ML-driven interactive systems have the potential to change how people interact with computers in creative processes - turning tools into co-creators. However, it is still unclear how we might achieve effective human-AI collaboration in open-ended task domains. There are several known challenges around communication in the interaction with ML-driven systems. An overlooked aspect in the design of co-creative systems is how users can be better supported in learning to collaborate with such systems. Here we reframe human-AI collaboration as a learning problem: Inspired by research on team learning, we hypothesize that similar learning strategies that apply to human-human teams might also increase the collaboration effectiveness and quality of humans working with co-creative generative systems. In this position paper, we aim to promote team learning as a lens for designing more effective co-creative human-AI collaboration and emphasize collaboration process quality as a goal for co-creative systems. Furthermore, we outline a preliminary schematic framework for embedding team learning support in co-creative AI systems. We conclude by proposing a research agenda and posing open questions for further study on supporting people in learning to collaborate with generative AI systems.

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