Journal Article10.1016/j.inffus.2022.11.025
Fusing external knowledge resources for natural language understanding techniques: A survey
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TL;DR: Knowledge resources, e.g. knowledge graphs, formally represent essential semantics and information for logic inference and reasoning, can compensate for the unawareness nature of many natural language processing techniques based on deep neural networks as discussed by the authors .
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About: This article is published in Information Fusion. The article was published on 01 Apr 2023. The article focuses on the topics: Computer science & Natural language.
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Citations
Uncertain about ChatGPT: enabling the uncertainty evaluation of large language models
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- 28 Jun 2023
TL;DR: The ability of the Uncertainty Representation and Reasoning Framework (URREF) ontology is assessed, to support formal analysis of ChatGPT uncertainty handling and possible modifications to the URREF ontology are identified.
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