Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties
Pöppel J, Kopp S (Unpublished)
arxiv:1909.10419.
Preprint
| Unveröffentlicht | Englisch
Download
Es wurden keine Dateien hochgeladen. Nur Publikationsnachweis!
Autor*in
Abstract / Bemerkung
The ability to interpret the mental state of another agent based on its behavior, also called Theory of Mind (ToM), is crucial for humans in any kind of social interaction.
Artificial systems, such as intelligent assistants, would also greatly benefit from such mentalizing capabilities.
However, humans and systems alike are bound by limitations in their available computational resources. This raises the need for satisficing mentalizing, reconciling accuracy and efficiency in mental state inference that is good enough for a given situation. In this paper, we present different Bayesian models of ToM reasoning and evaluate them based on actual human behavior data that were generated under different kinds of uncertainties. We propose a Switching approach that combines specialized models, embodying simplifying presumptions, in order to achieve a more statisficing mentalizing compared to a Full Bayesian ToM model.
Stichworte
Theory of Mind;
Mentalizing;
Satisficing Computations
Erscheinungsjahr
2019
Zeitschriftentitel
arxiv:1909.10419
Seite(n)
31
Page URI
https://pub.uni-bielefeld.de/record/2934892
Zitieren
Pöppel J, Kopp S. Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties. arxiv:1909.10419. Unpublished.
Pöppel, J., & Kopp, S. (Unpublished). Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties. arxiv:1909.10419
Pöppel, Jan, and Kopp, Stefan. Unpublished. “Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties”. arxiv:1909.10419.
Pöppel, J., and Kopp, S. (Unpublished). Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties. arxiv:1909.10419.
Pöppel, J., & Kopp, S., Unpublished. Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties. arxiv:1909.10419.
J. Pöppel and S. Kopp, “Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties”, arxiv:1909.10419, Unpublished.
Pöppel, J., Kopp, S.: Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties. arxiv:1909.10419. (Unpublished).
Pöppel, Jan, and Kopp, Stefan. “Satisficing Mentalizing: Bayesian Models of Theory of Mind Reasoning in Scenarios with Different Uncertainties”. arxiv:1909.10419 (Unpublished).
Material in PUB:
Zitiert
Supplementary Material for: Satisficing Mentalizing: Bayesian Theory of Mind Reasoning in Scenarios with varying Uncertainty
Pöppel J (2019)
Bielefeld University.
Pöppel J (2019)
Bielefeld University.