Bayesian Inference of Linear Temporal Logic Specifications for Contrastive Explanations

TitleBayesian Inference of Linear Temporal Logic Specifications for Contrastive Explanations
Publication TypeConference Proceedings
Year of Conference2019
AuthorsKim, J., C. Muise, A. Shah, S. Agarwal, and J. Shah
Conference NameInternational Joint Conference on Artificial Intelligence (IJCAI)
Date Published08/2019
Conference LocationMacau, China
Keywordscontrastive explanations, linear temporal logic, Planning, Probablistic specification inference, topic1
AbstractTemporal logics are useful for providing concise descriptions of system behavior, and have been successfully used as a language for goal definitions in task planning. Prior works on inferring temporal logic specifications have focused on "summarizing" the input dataset - i.e., finding specifications that are satisfied by all plan traces belonging to the given set. In this paper, we examine the problem of inferring specifications that describe temporal differences between two sets of plan traces. We formalize the concept of providing such contrastive explanations, then present BayesLTL - a Bayesian probabilistic model for inferring contrastive explanations as linear temporal logic (LTL) specifications. We demonstrate the robustness and scalability of our model for inferring accurate specifications from noisy data and across various benchmark planning domains.
URLhttp://people.csail.mit.edu/joseph_kim/papers/kim-IJCAI-2019-preprint.pdf
Refereed DesignationRefereed