posted on 2008-01-01, 00:00authored byBrian D. Ziebart, Andrew L. Maas, Anind K. Dey, J. Andrew Bagnell
We present PROCAB, an efficient method for Probabilistically Reasoning from Observed Context-Aware Behavior. It
models the context-dependent utilities and underlying reasons that people take different actions. The model generalizes to unseen situations and scales to incorporate rich
contextual information. We train our model using the route
preferences of 25 taxi drivers demonstrated in over 100,000
miles of collected data, and demonstrate the performance of
our model by inferring: (1) decision at next intersection, (2)
route to known destination, and (3) destination given partially traveled route.