Generating Justifications for Norm-Related Agent Decisions

2019

Conference: Proceedings of the 12th International Conference on Natural Language Generation

Daniel Kasenberg and Antonio Roque and Ravenna Thielstrom and Meia Chita-Tegmark and Matthias Scheutz

We present an approach to generating natural language justifications of decisions derived from norm-based reasoning. Assuming an agent which maximally satisfies a set of rules specified in an object-oriented temporal logic, the user can ask factual questions (about the agent's rules, actions, and the extent to which the agent violated the rules) as well as "why" questions that require the agent comparing actual behavior to counterfactual trajectories with respect to these rules. To produce natural-sounding explanations, we focus on the subproblem of producing natural language clauses from statements in a fragment of temporal logic, and then describe how to embed these clauses into explanatory sentences. We use a human judgment evaluation on a testbed task to compare our approach to variants in terms of intelligibility, mental model and perceived trust.

@inproceedings{kasenberg2019inlg,
  title={Generating Justifications for Norm-Related Agent Decisions},
  author={Daniel Kasenberg and Antonio Roque and Ravenna Thielstrom and Meia Chita-Tegmark and Matthias Scheutz},
  year={2019},
  booktitle={Proceedings of the 12th International Conference on Natural Language Generation},
  url={https://hrilab.tufts.edu/publications/kasenberg2019inlg.pdf}
}