This paper describes the approaches used by the Discovery Team to solve SemEval-2020 Task 1 - Unsupervised Lexical Semantic Change Detection. The proposed method is based on clustering of BERT contextual embeddings, followed by a comparison of cluster distributions across time. The best results were obtained by an ensemble of this method and static Word2Vec embeddings. According to the official results, our approach proved the best for Latin in Subtask 2
This data collection contains the Latin test data for SemEval 2020 Task 1: Unsupervised Lexical Sema...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Článek popisuje naší metodu pro určení změny sémantiky slov v čase (Lexical Semantic Change Detectio...
This paper describes the approaches used by the Discovery Team to solve SemEval-2020 Task 1 - Unsupe...
Several cluster-based methods for semantic change detection with contextual embeddings emerged recen...
This paper describes the system proposed by the Random team for SemEval-2020 Task 1: Unsupervised Le...
The way the words are used evolves through time, mirroring cultural or technological evolution of so...
Each dataset consists of samples, containing two sentences with positions of one of the given target...
This paper presents the first unsupervised approach to lexical semantic change that makes use of con...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
In this work, we explore the usefulness of contextualized embeddings from language models on lexical...
While there is a large amount of research in the field of Lexical Semantic Change Detection, only fe...
Authors Dominik Schlechtweg, Barbara McGillivray, Simon Hengchen, Haim Dubossarsky, and Nina Tahmas...
Detecting lexical semantic change in smaller data sets, e.g. in historical linguistics and digital h...
Semantic change detection task in a rel atively low-resource language like Italian is challenging. B...
This data collection contains the Latin test data for SemEval 2020 Task 1: Unsupervised Lexical Sema...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Článek popisuje naší metodu pro určení změny sémantiky slov v čase (Lexical Semantic Change Detectio...
This paper describes the approaches used by the Discovery Team to solve SemEval-2020 Task 1 - Unsupe...
Several cluster-based methods for semantic change detection with contextual embeddings emerged recen...
This paper describes the system proposed by the Random team for SemEval-2020 Task 1: Unsupervised Le...
The way the words are used evolves through time, mirroring cultural or technological evolution of so...
Each dataset consists of samples, containing two sentences with positions of one of the given target...
This paper presents the first unsupervised approach to lexical semantic change that makes use of con...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
In this work, we explore the usefulness of contextualized embeddings from language models on lexical...
While there is a large amount of research in the field of Lexical Semantic Change Detection, only fe...
Authors Dominik Schlechtweg, Barbara McGillivray, Simon Hengchen, Haim Dubossarsky, and Nina Tahmas...
Detecting lexical semantic change in smaller data sets, e.g. in historical linguistics and digital h...
Semantic change detection task in a rel atively low-resource language like Italian is challenging. B...
This data collection contains the Latin test data for SemEval 2020 Task 1: Unsupervised Lexical Sema...
Word embeddings are increasingly used for the automatic detection of semantic change; yet, a robust ...
Článek popisuje naší metodu pro určení změny sémantiky slov v čase (Lexical Semantic Change Detectio...