CLAIDec 20, 2024

Humanlike Cognitive Patterns as Emergent Phenomena in Large Language Models

arXiv:2412.15501v16 citationsh-index: 20Has Code
Originality Synthesis-oriented
AI Analysis

This review synthesizes emergent cognitive patterns in LLMs for researchers in psychology and AI, but it is incremental as it compiles existing studies without new empirical contributions.

The paper systematically reviews large language models' cognitive capabilities in decision-making biases, reasoning, and creativity, finding that they partially align with human patterns, with GPT-4 showing deliberative reasoning but struggling in divergent thinking tasks.

Research on emergent patterns in Large Language Models (LLMs) has gained significant traction in both psychology and artificial intelligence, motivating the need for a comprehensive review that offers a synthesis of this complex landscape. In this article, we systematically review LLMs' capabilities across three important cognitive domains: decision-making biases, reasoning, and creativity. We use empirical studies drawing on established psychological tests and compare LLMs' performance to human benchmarks. On decision-making, our synthesis reveals that while LLMs demonstrate several human-like biases, some biases observed in humans are absent, indicating cognitive patterns that only partially align with human decision-making. On reasoning, advanced LLMs like GPT-4 exhibit deliberative reasoning akin to human System-2 thinking, while smaller models fall short of human-level performance. A distinct dichotomy emerges in creativity: while LLMs excel in language-based creative tasks, such as storytelling, they struggle with divergent thinking tasks that require real-world context. Nonetheless, studies suggest that LLMs hold considerable potential as collaborators, augmenting creativity in human-machine problem-solving settings. Discussing key limitations, we also offer guidance for future research in areas such as memory, attention, and open-source model development.

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