Reasoning about Benefits and Costs of Interaction with Users inReal-Time Decision Making Environments with Application toHealthcare Scenarios
Speaker: Hyunggu Jung
This thesis examines the problem of having an intelligent agent reason
about interaction with usersin real-time decision making
environments.Our work is motivated by the models of Fleming and Cheng,
which reason about interaction sensitive to both expected quality of
decision (following interaction)and cost of bothering users.In
particular, we are interested in dynamic, time critical scenarios. This
leads first of all to a novel process known as strategy
regeneration, whereby the parameter values representing the users and
the task at hand are refreshed periodically, in order to make
effective decisions about which users to interact with, for the best
decision making.We also introduce two new parameters that are
modeled: each user's lack of expertise (with the task at hand)and the
level of criticality of each task. These factors are then integrated
into the process of reasoning about interaction to choose the best
overall strategy,deciding which users to ask to resolve the current
task. We illustrate the value of our framework for the application of
decision making in hospital emergency room scenarios and offer
validation of the approach, both through examples and from
simulations.To sum up, we provide a framework for reasoning about
interaction with users through user modeling for dynamic
environments.In addition, we present some insights into how to
improve the process of hospital emergency room decision making.