计算机科学
自然语言
计算模型
语言习得
认知
计算语言学
语言学
光学(聚焦)
语法
认知科学
人工智能
自然语言处理
心理学
神经科学
哲学
物理
光学
作者
Pablo Contreras Kallens,Ross Deans Kristensen‐McLachlan,Morten H. Christiansen
摘要
To what degree can language be acquired from linguistic input alone? This question has vexed scholars for millennia and is still a major focus of debate in the cognitive science of language. The complexity of human language has hampered progress because studies of language-especially those involving computational modeling-have only been able to deal with small fragments of our linguistic skills. We suggest that the most recent generation of Large Language Models (LLMs) might finally provide the computational tools to determine empirically how much of the human language ability can be acquired from linguistic experience. LLMs are sophisticated deep learning architectures trained on vast amounts of natural language data, enabling them to perform an impressive range of linguistic tasks. We argue that, despite their clear semantic and pragmatic limitations, LLMs have already demonstrated that human-like grammatical language can be acquired without the need for a built-in grammar. Thus, while there is still much to learn about how humans acquire and use language, LLMs provide full-fledged computational models for cognitive scientists to empirically evaluate just how far statistical learning might take us in explaining the full complexity of human language.
科研通智能强力驱动
Strongly Powered by AbleSci AI