Quantifying Uncertainty in Machine Theory of Mind Across Time
Zhang, S., Wu, C., & Jokinen, J. P.P. (2024). Quantifying Uncertainty in Machine Theory of Mind Across Time. In J. Kasurinen, T. Päivärinta, & T. Vartiainen (Eds.), TKTP 2024 : Proceedings of the 41st Annual Doctoral Symposium of Computer Science (3776, pp. 151-156). RWTH Aachen. CEUR Workshop Proceedings. https://ceur-ws.org/Vol-3776/shortpaper14.pdf
Published in
CEUR Workshop ProceedingsDate
2024Copyright
© 2024 Copyright for this paper by its author
As intelligent interactive technologies advance, ensuring alignment with user preferences is critical. Machine theory of mind enablessystems to infer latent mental states from observed behaviors, similarly to humans. Currently, there is no formal mechanism for integrating multiple observations over time and quantifying the uncertainty of inferences as the function of accumulated evidence in a provably human-like way. This paper addresses the issue through Bayesian inference, proposing a model that maintains a posterior belief about mental states as a probability distribution, updated with observational data. The advantage of Bayesian statistics lies in the possibility of evaluating the certainty of these inferences. We validate the model’s human-like mental inference capabilities through an experiment.
Publisher
RWTH AachenConference
Annual Doctoral Symposium of Computer ScienceIs part of publication
TKTP 2024 : Proceedings of the 41st Annual Doctoral Symposium of Computer ScienceISSN Search the Publication Forum
1613-0073Keywords
Original source
https://ceur-ws.org/Vol-3776/shortpaper14.pdfPublication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/243831049
Metadata
Show full item recordCollections
Additional information about funding
This research has been supported by the Academy of Finland (grant 330347).License
Related items
Showing items with similar title or keywords.
-
Detecting Changes in Mental Models during Interaction
Chuyang, Wu; Shanshan, Zhang; Jokinen, Jussi P. P. (RWTH Aachen, 2024)This paper introduces a novel computational cognitive model that maps latent mental models to observable behaviors, allowing the system to detect changes in users’ mental models from their actions. We propose an inference ... -
Computational Rationality as a Theory of Interaction
Oulasvirta, Antti; Jokinen, Jussi P. P.; Howes, Andrew (ACM, 2022)How do people interact with computers? This fundamental question was asked by Card, Moran, and Newell in 1983 with a proposition to frame it as a question about human cognition – in other words, as a matter of how information ... -
Reflections on the human role in AI policy formulations : how do national AI strategies view people?
Salo-Pöntinen, Henrikki; Saariluoma, Pertti (Springer Science and Business Media LLC, 2022)Purpose There is no artificial intelligence (AI) without people. People design and develop AI; they modify and use it and they have to reorganize the ways they have carried out tasks in their work and everyday life. ... -
Hearing gestures : vocalisations as embodied projections of intentionality in designing non-speech sounds for communicative functions
Tuuri, Kai (University of Jyväskylä, 2011) -
Framework for SQL Error Message Design : A Data-Driven Approach
Taipalus, Toni; Grahn, Hilkka (Association for Computing Machinery (ACM), 2023)Software developers use a significant amount of time reading and interpreting error messages. However, error messages have often been based on either anecdotal evidence or expert opinion, disregarding novices, who arguably ...