Do Large Language Models Learn to Human-Like Learn?

Jesse Roberts
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Abstract

Human-like learning refers to the learning done in the lifetime of the individual. However, the architecture of the human brain has been developed over millennia and represents a long process of evolutionary learning which could be viewed as a form of pre-training. Large language models (LLMs), after pre-training on large amounts of data, exhibit a form of learning referred to as in-context learning (ICL). Consistent with human-like learning, LLMs are able to use ICL to perform novel tasks with few examples and to interpret the examples through the lens of their prior experience. I examine the constraints which typify human-like learning and propose that LLMs may learn to exhibit human-like learning simply by training on human generated text.
大型语言模型能学会像人类一样学习吗?
类人学习指的是个体在一生中完成的学习。然而,人类大脑的结构已经发展了几千年,代表了一个漫长的进化学习过程,可以被看作是一种预训练。大型语言模型(LLM)在对大量数据进行预训练后,会表现出一种被称为上下文学习(ICL)的学习形式。与人类的学习方式一致,LLMs 能够利用 ICL 在实例较少的情况下完成新任务,并通过先前的经验对实例进行解释。我研究了类人学习的典型约束条件,并提出 LLMs 只需在人类生成的文本上进行训练,就能学会表现出类人学习的能力。
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