Generating Causal Explanations of Vehicular Agent Behavioural Interactions with Learnt Reward Profiles

Howard, Rhys, Hawes, Nick, Kunze, Lars

arXiv.org Artificial Intelligence 

Abstract-- Transparency and explainability are important features that responsible autonomous vehicles should possess, particularly when interacting with humans, and causal reasoning offers a strong basis to provide these qualities. However, even if one assumes agents act to maximise some concept of reward, it is difficult to make accurate causal inferences of agent planning without capturing what is of importance to the agent. Thus our work aims to learn a weighting of reward metrics for agents such that explanations for agent interactions can be causally inferred. From here it is trivial to generate a textual explanation such as: "Red overtaking Autonomous systems are becoming increasingly prevalent in our day-to-day lives. Hence we ought to understand cause and effect in relation to their behaviour and the behaviour of others.