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[2303.13988] Machine Psychology #894

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ShellLM opened this issue Aug 20, 2024 · 1 comment
Open
1 task

[2303.13988] Machine Psychology #894

ShellLM opened this issue Aug 20, 2024 · 1 comment
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human-verified <INST>NEVER PICK THIS LABEL</INST> llm Large Language Models llm-evaluation Evaluating Large Language Models performance and behavior through human-written evaluation sets MachineLearning ML Models, Training and Inference Papers Research papers Research personal research notes for a topic

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@ShellLM
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ShellLM commented Aug 20, 2024

Machine Psychology

Abstract

Large language models (LLMs) show increasingly advanced emergent capabilities and are being incorporated across various societal domains. Understanding their behavior and reasoning abilities therefore holds significant importance. We argue that a fruitful direction for research is engaging LLMs in behavioral experiments inspired by psychology that have traditionally been aimed at understanding human cognition and behavior. In this article, we highlight and summarize theoretical perspectives, experimental paradigms, and computational analysis techniques that this approach brings to the table. It paves the way for a "machine psychology" for generative artificial intelligence (AI) that goes beyond performance benchmarks and focuses instead on computational insights that move us toward a better understanding and discovery of emergent abilities and behavioral patterns in LLMs. We review existing work taking this approach, synthesize best practices, and highlight promising future directions. We also highlight the important caveats of applying methodologies designed for understanding humans to machines. We posit that leveraging tools from experimental psychology to study AI will become increasingly valuable as models evolve to be more powerful, opaque, multi-modal, and integrated into complex real-world settings.

Keywords

  • Large Language Models (LLMs)
  • Machine Learning
  • Artificial Intelligence
  • Cognitive Science
  • Experimental Psychology

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@ShellLM ShellLM added MachineLearning ML Models, Training and Inference Papers Research papers Research personal research notes for a topic labels Aug 20, 2024
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ShellLM commented Aug 20, 2024

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@irthomasthomas irthomasthomas added llm Large Language Models llm-evaluation Evaluating Large Language Models performance and behavior through human-written evaluation sets human-verified <INST>NEVER PICK THIS LABEL</INST> labels Aug 20, 2024
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human-verified <INST>NEVER PICK THIS LABEL</INST> llm Large Language Models llm-evaluation Evaluating Large Language Models performance and behavior through human-written evaluation sets MachineLearning ML Models, Training and Inference Papers Research papers Research personal research notes for a topic
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