Simulation-Based Training of Ill-Defined Social Domains: The Complex Environment Assessment and Tutoring System (CEATS)

Socio-cultural problems have special challenges that complicate training design. Problems in these domains have been called “wicked problems” due to their intractability [4]. Such problems are ill-defined: characterized by conflicting stakeholder values, disagreements over solutions, and interconnectedness between problems. Simulation-based learning can be used to explore these problems, but assessment is a bottleneck for training ill-defined domains. Problems in ill-defined domains are heterogeneous: some problems have clear right and wrong answers, but others are subjective, context-dependent, or emergent. A possible solution is hybrid tutoring, which combines multiple tutoring approaches [2]. A hybrid tutor could match different pedagogical interventions for different types of problems. However, hybrid tutoring lacks established design principles for matching domain problems with suitable interventions. The Complex Environment Assessment and Tutoring System (CEATS) follows two principles to support hybrid tutoring. First, semantic interfaces are used to decouple components, transforming the simulation environment into meaningful metrics. Assessments use metrics as evidence to calculate measures about domain concept qualities. The second principle is to support families of assessments. Together, this design decouples assessments from the simulation and embeds meta-data to make them meaningful for reporting and tutoring modules. The Complex Environment Assessment and Tutoring System uses metrics as a semantic API for the learning environment. This allows different environments (e.g. simulation vs database) to share the same metric specifications, but implement their own function and query implementations. A metrics engine currently exists for use with a real-time simulation (described below) and a second metrics engine is being added to support metrics on a database of simulation runs.