Publication | Open Access
Language Models as Knowledge Bases: On Entity Representations, Storage Capacity, and Paraphrased Queries
75
Citations
54
References
2021
Year
Unknown Venue
EngineeringLm-as-kb ParadigmSemanticsSemantic WebLarge Language ModelCorpus LinguisticsNatural Language ProcessingParaphraseSyntaxInformation RetrievalComputational LinguisticsLanguage StudiesLanguage ModelsNamed-entity RecognitionMachine TranslationEntity RepresentationsKnowledge RepresentationEntity DisambiguationNlp TaskDistributional SemanticsKnowledge BaseRetrieval Augmented GenerationSemantic RepresentationLinguisticsStorage Capacity
Pretrained language models have been suggested as a possible alternative or complement to structured knowledge bases. However, this emerging LM-as-KB paradigm has so far only been considered in a very limited setting, which only allows handling 21k entities whose name is found in common LM vocabularies. Furthermore, a major benefit of this paradigm, i.e., querying the KB using natural language paraphrases, is underexplored. Here we formulate two basic requirements for treating LMs as KBs: (i) the ability to store a large number facts involving a large number of entities and (ii) the ability to query stored facts. We explore three entity representations that allow LMs to handle millions of entities and present a detailed case study on paraphrased querying of facts stored in LMs, thereby providing a proof-of-concept that language models can indeed serve as knowledge bases.
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