Back to Search Start Over

A Notion of Complexity for Theory of Mind via Discrete World Models

Authors :
Huang, X. Angelo
La Malfa, Emanuele
Marro, Samuele
Asperti, Andrea
Cohn, Anthony
Wooldridge, Michael
Publication Year :
2024

Abstract

Theory of Mind (ToM) can be used to assess the capabilities of Large Language Models (LLMs) in complex scenarios where social reasoning is required. While the research community has proposed many ToM benchmarks, their hardness varies greatly, and their complexity is not well defined. This work proposes a framework to measure the complexity of ToM tasks. We quantify a problem's complexity as the number of states necessary to solve it correctly. Our complexity measure also accounts for spurious states of a ToM problem designed to make it apparently harder. We use our method to assess the complexity of five widely adopted ToM benchmarks. On top of this framework, we design a prompting technique that augments the information available to a model with a description of how the environment changes with the agents' interactions. We name this technique Discrete World Models (DWM) and show how it elicits superior performance on ToM tasks.<br />Comment: https://flecart.github.io/complexity-tom-dwm

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.11911
Document Type :
Working Paper