Understanding the Capabilities, Limitations, and Societal Impact of Large Language Models
By arXiv.org
Topics
- NLP (0.34)
- UX (0.16)
- Machine_Learning (0.09)
Similar Articles
Understanding the Capabilities, Limitations, and Societal Impact of Large Language Models
On October 14th, 2020, researchers from OpenAI, the Stanford Institute for Human-Centered Artificial Intelligence, and other universities convened to discuss open research questions surrounding GPT-3, ...
Vokenization: Improving Language Understanding with Contextualized, Visual-Grounded Supervision
Humans learn language by listening, speaking, writing, reading, and also, via interaction with the multimodal real world. Existing language pre-training frameworks show the effectiveness of text-only ...
Utility is in the Eye of the User: A Critique of NLP Leaderboards
Benchmarks such as GLUE have helped drive advances in NLP by incentivizing the creation of more accurate models. While this leaderboard paradigm has been remarkably successful, a historical focus on p ...
Safe Reinforcement Learning with Natural Language Constraints
In this paper, we tackle the problem of learning control policies for tasks when provided with constraints in natural language. In contrast to instruction following, language here is used not to speci ...
Google trained a trillion-parameter AI language model
Researchers at Google claim to have trained a natural language model containing over a trillion parameters. ...
COMETA: A Corpus for Medical Entity Linking in the Social Media
Whilst there has been growing progress in Entity Linking (EL) for general language, existing datasets fail to address the complex nature of health terminology in layman's language. Meanwhile, there is ...