CLCYHCFeb 4, 2023

Evaluating Large Language Models in Theory of Mind Tasks

Stanford
arXiv:2302.02083v7337 citationsh-index: 52
AI Analysis

This study addresses the problem of understanding whether AI can develop human-like cognitive abilities, with implications for psychology and AI ethics, though it is incremental in testing existing models on a known benchmark.

The researchers evaluated eleven large language models on false-belief tasks to assess Theory of Mind, finding that ChatGPT-4 solved 75% of tasks, matching the performance of six-year-old children, while older models like GPT-3-davinci-003 solved only 20%.

Eleven Large Language Models (LLMs) were assessed using a custom-made battery of false-belief tasks, considered a gold standard in testing Theory of Mind (ToM) in humans. The battery included 640 prompts spread across 40 diverse tasks, each one including a false-belief scenario, three closely matched true-belief control scenarios, and the reversed versions of all four. To solve a single task, a model needed to correctly answer 16 prompts across all eight scenarios. Smaller and older models solved no tasks; GPT-3-davinci-003 (from November 2022) and ChatGPT-3.5-turbo (from March 2023) solved 20% of the tasks; ChatGPT-4 (from June 2023) solved 75% of the tasks, matching the performance of six-year-old children observed in past studies. We explore the potential interpretation of these findings, including the intriguing possibility that ToM, previously considered exclusive to humans, may have spontaneously emerged as a byproduct of LLMs' improving language skills.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes