A Conceptual Primitive Decomposition of the Sally-Anne Test
Document Type
Conference Proceeding
Publication Date
Fall 2025
Publication Title
Proceedings of the 2025 AAAI Fall Symposium Series
Abstract
Although large language models (LLMs) have been observed to perform at a human level in theory of mind tasks, deeper examinations and systematic testing of their performance in these domains is needed. Primitive decomposition representations show promise for building robotic systems with greater abilities for in-depth natural language understanding and generation. In this work, we explore representations of theory of mind which are combinations of conceptual primitives, focusing on simulations of a Sally-Anne false-belief test. We demonstrate how primitive decompositions into the conceptual building blocks of image schemas and Conceptual De- pendency can represent the attribution of false beliefs to intelligent agents. The exploration has consequences for generating controlled and linguistically varied tests posed in natural language as challenge problems for large language models and for cognitive representations more broadly.
Volume
7
Issue
1
First Page
670
Last Page
672
ISSN
2994-4317
Recommended Citation
Macbeth, Jamie C.; Zhang, Boming; and Badhan, Sharmin, "A Conceptual Primitive Decomposition of the Sally-Anne Test" (2025). Computer Science: Faculty Publications, Smith College, Northampton, MA.
https://scholarworks.smith.edu/csc_facpubs/428

Comments
The Association for the Advancement of Artificial Intelligence’s 2025 Fall Symposium Series (FSS-25) was held on November 6-8, 2025 in Arlington, Virginia.