Concepts play a central role in many applications. This includes settings where concepts have to be modelled in the absence of sentence context. Previous work has therefore focused on distilling decontextualised concept embeddings from language models. But concepts can be modelled from different perspectives, whereas concept embeddings typically mostly capture taxonomic structure. To address this issue, we propose a strategy for identifying what different concepts, from a potentially large concept vocabulary, have in common with others. We then represent concepts in terms of the properties they share with the other concepts. To demonstrate the practical usefulness of this way of modelling concepts, we consider the task of ultra-fine entity ...
Document similarity measures are crucial components of many text-analysis tasks, including informati...
Contains fulltext : 142811.pdf (preprint version ) (Open Access)Concepts are so fu...
We are interested in providing semi-automatic support for the task of integrating large knowledge ba...
Grasping the commonsense properties of everyday concepts is an important prerequisite to language un...
IEEE Generating the precise semantic representation of a word/concept is a fundamental task in natur...
Terms are linguistic signifiers of domain–specific concepts. Semantic similarity between terms refer...
This work introduces a strategy for estimating the semantic likeness between ideas in Knowledge Grap...
Large language models show human-like performance in knowledge extraction, reasoning and dialogue, b...
Distilling knowledge from Large Language Models (LLMs) has emerged as a promising strategy for popul...
International audienceMethods for estimating people's conceptual knowledge have the potential to be ...
To study concepts, cognitive scientists must first identify some. The prevailing assumption is that ...
Finding mappings between compatible ontologies is an important but difficult open problem. Instance-...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
While computer programs and logical theories begin by declaring the concepts of interest, be it as d...
If a Large Language Model (LLM) answers "yes" to the question "Are mountains tall?" then does it kno...
Document similarity measures are crucial components of many text-analysis tasks, including informati...
Contains fulltext : 142811.pdf (preprint version ) (Open Access)Concepts are so fu...
We are interested in providing semi-automatic support for the task of integrating large knowledge ba...
Grasping the commonsense properties of everyday concepts is an important prerequisite to language un...
IEEE Generating the precise semantic representation of a word/concept is a fundamental task in natur...
Terms are linguistic signifiers of domain–specific concepts. Semantic similarity between terms refer...
This work introduces a strategy for estimating the semantic likeness between ideas in Knowledge Grap...
Large language models show human-like performance in knowledge extraction, reasoning and dialogue, b...
Distilling knowledge from Large Language Models (LLMs) has emerged as a promising strategy for popul...
International audienceMethods for estimating people's conceptual knowledge have the potential to be ...
To study concepts, cognitive scientists must first identify some. The prevailing assumption is that ...
Finding mappings between compatible ontologies is an important but difficult open problem. Instance-...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
While computer programs and logical theories begin by declaring the concepts of interest, be it as d...
If a Large Language Model (LLM) answers "yes" to the question "Are mountains tall?" then does it kno...
Document similarity measures are crucial components of many text-analysis tasks, including informati...
Contains fulltext : 142811.pdf (preprint version ) (Open Access)Concepts are so fu...
We are interested in providing semi-automatic support for the task of integrating large knowledge ba...