LGNov 27, 2023

Visual cognition in multimodal large language models

arXiv:2311.16093v370 citationsh-index: 13
Originality Synthesis-oriented
AI Analysis

This addresses the problem of assessing human-like cognitive abilities in AI models for researchers in AI and cognitive science, but it is incremental as it builds on existing benchmarks.

The paper evaluated vision-based large language models on intuitive physics, causal reasoning, and intuitive psychology, finding they show proficiency but still fall short of human capabilities.

A chief goal of artificial intelligence is to build machines that think like people. Yet it has been argued that deep neural network architectures fail to accomplish this. Researchers have asserted these models' limitations in the domains of causal reasoning, intuitive physics, and intuitive psychology. Yet recent advancements, namely the rise of large language models, particularly those designed for visual processing, have rekindled interest in the potential to emulate human-like cognitive abilities. This paper evaluates the current state of vision-based large language models in the domains of intuitive physics, causal reasoning, and intuitive psychology. Through a series of controlled experiments, we investigate the extent to which these modern models grasp complex physical interactions, causal relationships, and intuitive understanding of others' preferences. Our findings reveal that, while some of these models demonstrate a notable proficiency in processing and interpreting visual data, they still fall short of human capabilities in these areas. Our results emphasize the need for integrating more robust mechanisms for understanding causality, physical dynamics, and social cognition into modern-day, vision-based language models, and point out the importance of cognitively-inspired benchmarks.

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