Author List: Lim, Kai H.; Ward, Lawrence M.; Benbasat, Izak;
Information Systems Research, 1997, Volume 8, Issue 3, Page 254.
This paper reports a study that examined two types of exploratory computer learning methods: self-discovery vs. co-discovery, the latter of which involves two users working together to learn a system. An experiment was conducted to compare these two methods and the results were interpreted within a mental model framework. Co-discovery subjects were better than self-discovery subjects at making inferences about the capability and extended functions of the system. Furthermore, while working by themselves after an initial period of learning, they performed better in a similar, though more complex task than the one they encountered at the learning phase. Process tracing analysis showed that self-discovery subjects focused more on surface structures, such as detailed physical actions, for implementing the task. On the other hand, co-discovery groups focused more on relating lower level actions to higher level goals. Therefore, co-discovery subjects had a better understanding of the relationships between the physical actions and goals, and hence formed mental models with higher inference potential than self-discovery subjects.
Keywords: Co-Discovery Learning; Computer System Learning; Inference; Mental Models; Process Tracing; Verbal Protocols
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#9 0.322 using subjects results study experiment did conducted task time used experienced use preference experimental presented decision-making empirical significantly effects better
#95 0.231 learning mental conceptual new learn situated development working assumptions improve ess existing investigates capture advanced proposes types context building acquisition
#254 0.108 level levels higher patterns activity results structures lower evolution significant analysis degree data discussed implications stable cluster exist relationships identify
#191 0.086 model models process analysis paper management support used environment decision provides based develop use using help literature mathematical presented formulation
#60 0.080 analysis techniques structured categories protocol used evolution support methods protocols verbal improve object-oriented difficulties analyses category benchmark comparison provided recognition