Towards a cognitive architecture to enable natural language interaction in co-constructive task learning
Towards a cognitive architecture to enable natural language interaction in co-constructive task learning
This research addresses the question, which characteristics a cognitive architecture must have to leverage the benefits of natural language in Co-Constructive Task Learning (CCTL). To provide context, we first discuss Interactive Task Learning (ITL), the mechanisms of the human memory system, and the significance of natural language and multi-modality. Next, we examine the current state of cognitive architectures, analyzing their capabilities to inform a concept of CCTL grounded in multiple sources. We then integrate insights from various research domains to develop a unified framework. Finally, we conclude by identifying the remaining challenges and requirements necessary to achieve CCTL in Human-Robot Interaction (HRI).
Manuel Scheibl、Birte Richter、Alissa Müller、Michael Beetz、Britta Wrede
计算技术、计算机技术自动化基础理论
Manuel Scheibl,Birte Richter,Alissa Müller,Michael Beetz,Britta Wrede.Towards a cognitive architecture to enable natural language interaction in co-constructive task learning[EB/OL].(2025-03-31)[2025-05-14].https://arxiv.org/abs/2503.23760.点此复制
评论