[EN] The development of a model to quantify semantic similarity and relatedness between words has been the major focus of many studies in various fields, e.g. psychology, linguistics, and natural language processing. Unlike the measures proposed by most previous research, this article is aimed at estimating automatically the strength of associative words that can be semantically related or not. We demonstrate that the performance of the model depends not only on the combination of independently constructed word embeddings (namely, corpus- and network-based embeddings) but also on the way these word vectors interact. The research concludes that the weighted average of the cosine-similarity coefficients derived from independent word embedding...
Identifying the relations that exist between words (or entities) is important for various natural la...
To judge how much a pair of words (or texts) are semantically related is acognitive process. However...
These two problems were solved at once deriving the high-dimensional semantic space from a lexical c...
This paper is the fruit of a multidisciplinary project gathering researchers in Psycholinguistics, N...
We describe the automatic acquisition of a semantic network in which over 7,500 of the most frequent...
International audienceA computational model of the construction of word meaning through exposure to ...
We present SeVeN (Semantic Vector Networks), a hybrid resource that encodes relationships between wo...
We have elicited human quantitative judgments of semantic relatedness for 122 pairs of nouns and com...
International audienceThis work presents a framework for word similarity evaluation grounded on cogn...
Semantic relations are core to how humans understand and express concepts in the real world using la...
We consider the following problem: given neural language models (embeddings) each of which is traine...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
In this article, we describe the most extensive set of word associations collected to date. The data...
Measuring semantic relatedness between two words is a significant problem in many areas such as natu...
Proceedings of the 17th Nordic Conference of Computational Linguistics NODALIDA 2009. Editors: Kri...
Identifying the relations that exist between words (or entities) is important for various natural la...
To judge how much a pair of words (or texts) are semantically related is acognitive process. However...
These two problems were solved at once deriving the high-dimensional semantic space from a lexical c...
This paper is the fruit of a multidisciplinary project gathering researchers in Psycholinguistics, N...
We describe the automatic acquisition of a semantic network in which over 7,500 of the most frequent...
International audienceA computational model of the construction of word meaning through exposure to ...
We present SeVeN (Semantic Vector Networks), a hybrid resource that encodes relationships between wo...
We have elicited human quantitative judgments of semantic relatedness for 122 pairs of nouns and com...
International audienceThis work presents a framework for word similarity evaluation grounded on cogn...
Semantic relations are core to how humans understand and express concepts in the real world using la...
We consider the following problem: given neural language models (embeddings) each of which is traine...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
In this article, we describe the most extensive set of word associations collected to date. The data...
Measuring semantic relatedness between two words is a significant problem in many areas such as natu...
Proceedings of the 17th Nordic Conference of Computational Linguistics NODALIDA 2009. Editors: Kri...
Identifying the relations that exist between words (or entities) is important for various natural la...
To judge how much a pair of words (or texts) are semantically related is acognitive process. However...
These two problems were solved at once deriving the high-dimensional semantic space from a lexical c...