大型语言模型与人类大脑中语言处理的日益一致。

IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Changjiang Gao, Zhengwu Ma, Jiajun Chen, Ping Li, Shujian Huang, Jixing Li
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引用次数: 0

摘要

基于变压器的大型语言模型(llm)大大提高了我们对人类大脑中意义如何表示的理解;然而,越来越多的大型法学硕士的有效性受到质疑,因为它们有大量的训练数据和数千字长的上下文访问能力。在这项研究中,我们调查了指令调整——最近法学硕士的另一项核心技术,超越了单纯的缩放——是否能提高模型在人脑中捕捉语言信息的能力。在自然阅读过程中,我们通过眼动追踪和功能性磁共振成像来测量人类的行为和大脑活动。我们表明,简单地将llm变大比用指令对其进行微调更接近人类大脑。这些发现对于理解法学硕士的认知合理性及其在研究自然语言理解中的作用具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Increasing alignment of large language models with language processing in the human brain.

Transformer-based large language models (LLMs) have considerably advanced our understanding of how meaning is represented in the human brain; however, the validity of increasingly large LLMs is being questioned due to their extensive training data and their ability to access context thousands of words long. In this study we investigated whether instruction tuning-another core technique in recent LLMs that goes beyond mere scaling-can enhance models' ability to capture linguistic information in the human brain. We compared base and instruction-tuned LLMs of varying sizes against human behavioral and brain activity measured with eye-tracking and functional magnetic resonance imaging during naturalistic reading. We show that simply making LLMs larger leads to a closer match with the human brain than fine-tuning them with instructions. These finding have substantial implications for understanding the cognitive plausibility of LLMs and their role in studying naturalistic language comprehension.

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