LM-CORE: Language Models with Contextually Relevant External Knowledge
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 sub-optimal given the ever-growing amo...
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Zusammenfassung: | 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 sub-optimal 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 \textit{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 knowledge-enhanced 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. |
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DOI: | 10.48550/arxiv.2208.06458 |