Knowledge-Aware Language Model Pretraining (2007.00655v2)
Abstract: How much knowledge do pretrained LLMs hold? Recent research observed that pretrained transformers are adept at modeling semantics but it is unclear to what degree they grasp human knowledge, or how to ensure they do so. In this paper we incorporate knowledge-awareness in LLM pretraining without changing the transformer architecture, inserting explicit knowledge layers, or adding external storage of semantic information. Rather, we simply signal the existence of entities to the input of the transformer in pretraining, with an entity-extended tokenizer; and at the output, with an additional entity prediction task. Our experiments show that solely by adding these entity signals in pretraining, significantly more knowledge is packed into the transformer parameters: we observe improved LLMing accuracy, factual correctness in LAMA knowledge probing tasks, and semantics in the hidden representations through edge probing.We also show that our knowledge-aware LLM (KALM) can serve as a drop-in replacement for GPT-2 models, significantly improving downstream tasks like zero-shot question-answering with no task-related training.
- Corby Rosset (21 papers)
- Chenyan Xiong (95 papers)
- Minh Phan (3 papers)
- Xia Song (38 papers)
- Paul Bennett (17 papers)
- Saurabh Tiwary (15 papers)