LM-CORE: Language Models with Contextually Relevant External Knowledge

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Abstract

Large transformer-based pre-trained language models have achieved impressive performance on a variety of knowledge-intensive tasks and can capture factual knowledge in their parameters. We argue that storing large amounts of knowledge in the model parameters is suboptimal given the ever-growing amounts of knowledge and resource requirements. We posit that a more efficient alternative is to provide explicit access to contextually relevant structured knowledge to the model and train it to use that knowledge. We present LM-CORE - a general framework to achieve this- that allows decoupling of the language model training from the external knowledge source and allows the latter to be updated without affecting the already trained model. Experimental results show that LM-CORE, having access to external knowledge, achieves significant and robust outperformance over state-of-the-art knowledgeenhanced language models on knowledge probing tasks; can effectively handle knowledge updates; and performs well on two downstream tasks. We also present a thorough error analysis highlighting the successes and failures of LM-CORE. Our code and model checkpoints are publicly available.

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APA

Kaur, J. N., Bhatia, S., Aggarwal, M., Bansal, R., & Krishnamurthy, B. (2022). LM-CORE: Language Models with Contextually Relevant External Knowledge. In Findings of the Association for Computational Linguistics: NAACL 2022 - Findings (pp. 750–769). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.findings-naacl.57

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