AIMay 18, 2023

Human Behavioral Benchmarking: Numeric Magnitude Comparison Effects in Large Language Models

arXiv:2305.10782v313 citations
Originality Incremental advance
AI Analysis

This work provides a cognitive science-inspired benchmark for evaluating LLMs, offering insights into their representational capabilities for numbers, which is incremental in applying behavioral methods to AI.

The study investigated whether large language models (LLMs) represent numeric magnitudes similarly to humans, focusing on effects like distance and size, and found that LLMs exhibit surprisingly human-like representations across different architectures.

Large Language Models (LLMs) do not differentially represent numbers, which are pervasive in text. In contrast, neuroscience research has identified distinct neural representations for numbers and words. In this work, we investigate how well popular LLMs capture the magnitudes of numbers (e.g., that $4 < 5$) from a behavioral lens. Prior research on the representational capabilities of LLMs evaluates whether they show human-level performance, for instance, high overall accuracy on standard benchmarks. Here, we ask a different question, one inspired by cognitive science: How closely do the number representations of LLMscorrespond to those of human language users, who typically demonstrate the distance, size, and ratio effects? We depend on a linking hypothesis to map the similarities among the model embeddings of number words and digits to human response times. The results reveal surprisingly human-like representations across language models of different architectures, despite the absence of the neural circuitry that directly supports these representations in the human brain. This research shows the utility of understanding LLMs using behavioral benchmarks and points the way to future work on the number representations of LLMs and their cognitive plausibility.

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