2022
DOI: 10.3390/sym14081715
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Utilizing Language Models to Expand Vision-Based Commonsense Knowledge Graphs

Abstract: The introduction and ever-growing size of the transformer deep-learning architecture have had a tremendous impact not only in the field of natural language processing but also in other fields. The transformer-based language models have contributed to a renewed interest in commonsense knowledge due to the abilities of deep learning models. Recent literature has focused on analyzing commonsense embedded within the pre-trained parameters of these models and embedding missing commonsense using knowledge graphs and… Show more

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“…Large language models (LLMs) are a specific type of DL model that have been trained on enormous amounts of text data such as that harvested from the internet and public databases and can generate convincing and meaningful human-like text outputs based on a given prompt or query [3][4]. Thus, LLMs can converse with humans via natural language processing (which even makes them capable of writing functional new programming code when prompted by a user with little or no coding experience) and can cache the conversation history to use as further layers in its output.…”
Section: Introductionmentioning
confidence: 99%
“…Large language models (LLMs) are a specific type of DL model that have been trained on enormous amounts of text data such as that harvested from the internet and public databases and can generate convincing and meaningful human-like text outputs based on a given prompt or query [3][4]. Thus, LLMs can converse with humans via natural language processing (which even makes them capable of writing functional new programming code when prompted by a user with little or no coding experience) and can cache the conversation history to use as further layers in its output.…”
Section: Introductionmentioning
confidence: 99%