The Role of Affect and Sociality in the Agent-based
Collaborative Learning System
Morishima, Y., Nakajima, H., Brave, S., Yamada, R., Maldonado, H., Nass, C. Kawaji, S.
Affective Dialog Systems: Tutorial and Research Workshop (ADS2004)
As computer systems are evolving and coming to be regarded as
social actors, the importance of social intelligence that enables natural and
socially appropriate interactions is gaining a growing interest among the
human-computer interaction researchers. This article discusses the definition,
importance, and benefits of social intelligence as agent technology. It then
describes a collaborative learning system that incorporates agents that are
equipped with a social intelligence model. We argue that socially appropriate
affective behaviors provide a new dimension for collaborative learning systems.
The system provides an environment in which learning takes place through
interactions with a coaching computer agent and a co-learner, an autonomous
agent that makes affective responses. The social intelligence model that handles
affective responses is based on psychological theories of personality, emotion,
and human-media interaction, such as appraisal theory and the Media Equation.
Experiments conducted with this collaborative learning system to examine the
effect of the social intelligence model suggested that users had more positive
impressions about the usefulness, the application, and their learning experience
when the co-learner agent displayed social responses with personality and
emotions than when it did not express them. It should be noted here that the colearner
agent did not provide any explicit assistance for the learner, such as
giving clues and showing answers, yet it influenced the user’s evaluation on the
usefulness of the learning system. Experimental data also suggest that the colearner
agent contributed to the effectiveness of the learning system.
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