Divergences between Language Models and Human Brains.

Yuchen Zhou, Emmy Liu, Graham Neubig, Michael J Tarr, Leila Wehbe
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Abstract

Do machines and humans process language in similar ways? Recent research has hinted at the affirmative, showing that human neural activity can be effectively predicted using the internal representations of language models (LMs). Although such results are thought to reflect shared computational principles between LMs and human brains, there are also clear differences in how LMs and humans represent and use language. In this work, we systematically explore the divergences between human and machine language processing by examining the differences between LM representations and human brain responses to language as measured by Magnetoencephalography (MEG) across two datasets in which subjects read and listened to narrative stories. Using an LLM-based data-driven approach, we identify two domains that LMs do not capture well: social/emotional intelligence and physical commonsense. We validate these findings with human behavioral experiments and hypothesize that the gap is due to insufficient representations of social/emotional and physical knowledge in LMs. Our results show that fine-tuning LMs on these domains can improve their alignment with human brain responses.

语言模型与人类大脑的差异。
机器和人类处理语言的方式相似吗?最近的研究给出了肯定的答案,表明人类的神经活动可以使用语言模型的内部表征(LMs)来有效地预测。尽管这些结果被认为反映了LMs和人类大脑之间共享的计算原理,但在LMs和人类如何表示和使用语言方面也存在明显的差异。在这项工作中,我们系统地探索了人类和机器语言处理之间的差异,通过检查LM表征和人类大脑对语言的反应之间的差异,这些差异是通过脑磁图(MEG)在两个数据集上测量的,其中受试者阅读和听叙事故事。使用基于法学硕士的数据驱动方法,我们确定了两个法学硕士不能很好地捕捉的领域:社交/情商和身体常识。我们用人类行为实验验证了这些发现,并假设这种差距是由于LMs中社会/情感和身体知识的不充分表征造成的。我们的研究结果表明,在这些域上微调LMs可以改善它们与人类大脑反应的一致性。
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