Predicting the Priority of Social Situations for Personal Assistant Agents
I. Kola (TU Delft - Interactive Intelligence)
ML Tielman (TU Delft - Interactive Intelligence)
CM Jonker (Universiteit Leiden, TU Delft - Interactive Intelligence)
M.B. Van Riemsdijk (University of Twente)
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Abstract
Personal assistant agents have been developed to help people in their daily lives with tasks such as agenda management. In order to provide better support, they should not only model the user’s internal aspects, but also their social situation. Current research on social context tackles this by modelling the social aspects of a situation from an objective perspective. In our approach, we model these social aspects of the situation from the user’s subjective perspective. We do so by using concepts from social science, and in turn apply machine learning techniques to predict the priority that the user would assign to these situations. Furthermore, we show that using these techniques allows agents to determine which features influenced these predictions. Results based on a crowd-sourcing user study suggest that our proposed model would enable personal assistant agents to differentiate between situations with high and low priority. We believe this to be a first step towards agents that better understand the user’s social situation, and adapt their support accordingly.