Affiliations: College of Information Sciences and Technology, The
Pennsylvania State University, University Park, PA 16802, USA | School of Engineering, Penn State Erie, The Behrend
College, Erie, PA 16563
Abstract: Collaborative computing relies on the modeling and exploiting of
team intelligence. While the notion of shared mental models has been widely
adopted to explain coordination behaviors in human teams, it becomes
increasingly important to investigate the computerization of shared mental
models and their application in multi-agent systems. A key element of research
along this line is to explore effective ways to developing shared mental
models. In this paper, we give a representation model for conversation patterns
involving multiple conversation roles. Then, within the R-CAST agent
architecture, we detail an approach where agents in a group, via multi-party
communication, can anticipate others' information needs using experience-based
conversation pattern recognition. The approach can be employed to develop
shared mental models among a group for supporting unplanned collaborations.
Keywords: Multi-party communication, teamwork, information needs, shared mental models