Identification and Formalization of Human-Machine Collaboration Patterns, data underlying the publication: Ontology-based Reflective Communication for Shared Human-AI Recognition of Emergent Collaboration Patterns
DOI: 10.4121/2d0f80df-1ae8-407e-bc5f-f2e570bbb306
Datacite citation style
Dataset
When humans and AI-agents collaborate, they need to continuously learn about each other and the task. We propose a Team Design Pattern that utilizes adaptivity in the behavior of human and agent team partners, causing new Collaboration Patterns to emerge. Human-AI Co-Learning takes place when partners can formalize recognized patterns of collaboration in a commonly shared language, and can communicate with each other about these patterns. For this, we developed an ontology of Collaboration Patterns. An accompanying Graphical User Interface (GUI) enables partners to formalize and refine Collaboration Patterns, which can then be communicated to the partner. The dataset was gathered in an empirical evaluation with human participants who viewed video recordings of joint human-agent activities. Participants were requested to identify Collaboration Patterns in the footage, and to formalize patterns by using the ontology’s GUI.
The files contain an overview of the formalized Collaboration Patterns per participant, as well as a coding of whether they were recognized and formalized correctly and completely.
The details of the research for which this data was collected and the experiment can be found here: https://doi.org/10.1007/978-3-031-21203-1_40
History
- 2025-05-09 first online, published, posted
Publisher
4TU.ResearchDataFormat
xlsx (excel sheets)Associated peer-reviewed publication
Ontology-based Reflective Communication for Shared Human-AI Recognition of Emergent Collaboration PatternsFunding
- TNO DO AIO Fonds (grant code 4099 DO AIO Fonds) TNO
Organizations
TU Delft, Faculty of Electrical Engineering, Mathematics and Computer Science, Department of Intelligent SystemsDutch Organisation for Applied Scientific Research - TNO, Defence, Safety & Security Unit, Human-Machine Teaming
DATA
Files (12)
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