In this work, we explore the usefulness of contextualized embeddings from language models on lexical semantic change (LSC) detection. With diachronic corpora spanning two time periods, we construct word embeddings for a selected set of target words, aiming at detecting potential LSC of each target word across time. We explore different systems of embeddings to cover three topics: contextualized vs static word embeddings, token- vs type-based embeddings, and multilingual vs monolingual language models. We use a multilingual dataset covering three languages (English, German, Swedish) and explore each system of embedding with two subtasks, a binary classification task and a ranking task. We compare the performance of different systems of embed...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
Detecting lexical semantic change in smaller data sets, e.g. in historical linguistics and digital h...
Nowadays, contextual language models can solve a wide range of language tasks such as text classific...
The way the words are used evolves through time, mirroring cultural or technological evolution of so...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
Static word embeddings that represent words by a single vector cannot capture the variability of wor...
Words of human languages change their meaning over time. This linguistic phenomenon is known as ‘dia...
Recent years have witnessed a surge of publications aimed at tracing temporal changes in lexical sem...
The use of language is subject to variation over time as well as across social groups and knowledge ...
This paper presents the first unsupervised approach to lexical semantic change that makes use of con...
In this thesis, we study lexical semantic change: temporal variations in the use and meaning of word...
Static word embeddings that represent words by a single vector cannot capture the variability of wor...
While there is a large amount of research in the field of Lexical Semantic Change Detection, only fe...
This paper describes the approaches used by the Discovery Team to solve SemEval-2020 Task 1 - Unsupe...
This paper describes the approaches used by the Discovery Team to solve SemEval-2020 Task 1 - Unsupe...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
Detecting lexical semantic change in smaller data sets, e.g. in historical linguistics and digital h...
Nowadays, contextual language models can solve a wide range of language tasks such as text classific...
The way the words are used evolves through time, mirroring cultural or technological evolution of so...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
Static word embeddings that represent words by a single vector cannot capture the variability of wor...
Words of human languages change their meaning over time. This linguistic phenomenon is known as ‘dia...
Recent years have witnessed a surge of publications aimed at tracing temporal changes in lexical sem...
The use of language is subject to variation over time as well as across social groups and knowledge ...
This paper presents the first unsupervised approach to lexical semantic change that makes use of con...
In this thesis, we study lexical semantic change: temporal variations in the use and meaning of word...
Static word embeddings that represent words by a single vector cannot capture the variability of wor...
While there is a large amount of research in the field of Lexical Semantic Change Detection, only fe...
This paper describes the approaches used by the Discovery Team to solve SemEval-2020 Task 1 - Unsupe...
This paper describes the approaches used by the Discovery Team to solve SemEval-2020 Task 1 - Unsupe...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
Detecting lexical semantic change in smaller data sets, e.g. in historical linguistics and digital h...
Nowadays, contextual language models can solve a wide range of language tasks such as text classific...