Evaluating the Expressiveness of MoLICC to Model the HCI of Collaborative Systems
نویسندگان
چکیده
In this paper we present an analysis on MoLICC, an interaction design language rooted in Semtiontic Engineering that perceives the user-system interaction as a conversation between designer (the system) and user, bringing focus to collaborative systems based on the 3C Model of Collaboration. In our analysis, we present the different aspects of collaboration as defined by the 3C Model of Collaboration, presenting case scenarios and using them to verify the language expressiveness.
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