ArXiv TLDR

The role of System 1 and System 2 semantic memory structure in human and LLM biases

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2604.12816

Katherine Abramski, Giulio Rossetti, Massimo Stella

cs.CL

TLDR

This paper models System 1 and System 2 semantic memory to understand human and LLM biases, finding key differences in bias regulation.

Key contributions

  • Modeled System 1 and System 2 thinking as distinct semantic memory networks.
  • Built networks from human and LLM data to study implicit gender bias.
  • Found human semantic memory structures are irreducible; LLMs lack this conceptual knowledge.
  • System 2 structures reduce bias in humans, a mechanism absent in LLMs.

Why it matters

This research clarifies cognitive mechanisms of implicit bias in humans and LLMs. It reveals fundamental differences in how humans regulate bias through conceptual knowledge, a mechanism absent in LLMs. This is crucial for developing safer and more ethical AI.

Original Abstract

Implicit biases in both humans and large language models (LLMs) pose significant societal risks. Dual process theories propose that biases arise primarily from associative System 1 thinking, while deliberative System 2 thinking mitigates bias, but the cognitive mechanisms that give rise to this phenomenon remain poorly understood. To better understand what underlies this duality in humans, and possibly in LLMs, we model System 1 and System 2 thinking as semantic memory networks with distinct structures, built from comparable datasets generated by both humans and LLMs. We then investigate how these distinct semantic memory structures relate to implicit gender bias using network-based evaluation metrics. We find that semantic memory structures are irreducible only in humans, suggesting that LLMs lack certain types of human-like conceptual knowledge. Moreover, semantic memory structure relates consistently to implicit bias only in humans, with lower levels of bias in System~2 structures. These findings suggest that certain types of conceptual knowledge contribute to bias regulation in humans, but not in LLMs, highlighting fundamental differences between human and machine cognition.

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