Semantic change detection (i.e., identifying words whose meaning has changed over time) started emerging as a growing area of research over the past decade, with important downstream applications in natural language processing, historical linguistics and computational social science. However, several obstacles make progress in the domain slow and difficult. These pertain primarily to the lack of well-established gold standard datasets, resources to study the problem at a fine-grained temporal resolution, and quantitative evaluation approaches. In this work, we aim to mitigate these issues by (a) releasing a new labelled dataset of more than 47K word vectors trained on the UK Web Archive over a short time-frame (2000-2013); (b) proposing a v...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Semantic change has mostly been studied by historical linguists and typically at the scale of centur...
Semantic change detection (i.e., identifying words whose meaning has changed over time) started emer...
Semantic change detection (i.e., identify- ing words whose meaning has changed over time) started em...
Semantic change detection (i.e., identify- ing words whose meaning has changed over time) started em...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Our languages are in constant flux driven by external factors such as cultural, societal and technol...
While there is a large amount of research in the field of Lexical Semantic Change Detection, only fe...
Contrary to what has been done to date in the hybrid field of natural language processing (NLP), thi...
© Springer Nature Switzerland AG 2020. The article proposes a method for detecting semantic change u...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Semantic change has mostly been studied by historical linguists and typically at the scale of centur...
Semantic change detection (i.e., identifying words whose meaning has changed over time) started emer...
Semantic change detection (i.e., identify- ing words whose meaning has changed over time) started em...
Semantic change detection (i.e., identify- ing words whose meaning has changed over time) started em...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Detecting significant linguistic shifts in the meaning and usage of words has gained more attention ...
Our languages are in constant flux driven by external factors such as cultural, societal and technol...
While there is a large amount of research in the field of Lexical Semantic Change Detection, only fe...
Contrary to what has been done to date in the hybrid field of natural language processing (NLP), thi...
© Springer Nature Switzerland AG 2020. The article proposes a method for detecting semantic change u...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Semantic change has mostly been studied by historical linguists and typically at the scale of centur...