Automatically detecting shifts of meaning over time is desirable for Natural Language Processing tasks as well as research in the Digital Humanities. We train diachronic word embeddings on Dutch newspaper data and compare representations of the same terms from different times to each other. The aim is verifying whether such comparison can highlight the emergence of a new (figurative) meaning for a given term. The most interesting outcome of this experiment is methodological: while in some cases we observe that this method is efficient, as it has been shown to be in previous work on Italian, we also observe that in many other cases results are not what we would expect. This leads us to an in-depth analysis of interfering aspects and to a dis...
© Springer Nature Switzerland AG 2020. The article proposes a method for detecting semantic change u...
In recent years, there has been a significant increase in interest in lexical semantic change detect...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
Automatically detecting shifts of meaning over time is desirable for Natural Language Processing tas...
Recent years have witnessed a surge of publications aimed at tracing temporal changes in lexical sem...
Words of human languages change their meaning over time. This linguistic phenomenon is known as ‘dia...
Contrary to what has been done to date in the hybrid field of natural language processing (NLP), thi...
Orlikowski M, Hartung M, Cimiano P. Learning diachronic analogies to analyze concept change. In: Pr...
In this paper, a method for measuring synchronic corpus (dis-)similarity put forward by Kilgarriff (...
Our languages are in constant flux driven by external factors such as cultural, societal and technol...
This paper presents a new approach to detecting and tracking changes in word meaning by visually mod...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
In this thesis, we study lexical semantic change: temporal variations in the use and meaning of word...
In this paper, we propose several methods for the diachronic analysis of the Italian language. We bu...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
© Springer Nature Switzerland AG 2020. The article proposes a method for detecting semantic change u...
In recent years, there has been a significant increase in interest in lexical semantic change detect...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
Automatically detecting shifts of meaning over time is desirable for Natural Language Processing tas...
Recent years have witnessed a surge of publications aimed at tracing temporal changes in lexical sem...
Words of human languages change their meaning over time. This linguistic phenomenon is known as ‘dia...
Contrary to what has been done to date in the hybrid field of natural language processing (NLP), thi...
Orlikowski M, Hartung M, Cimiano P. Learning diachronic analogies to analyze concept change. In: Pr...
In this paper, a method for measuring synchronic corpus (dis-)similarity put forward by Kilgarriff (...
Our languages are in constant flux driven by external factors such as cultural, societal and technol...
This paper presents a new approach to detecting and tracking changes in word meaning by visually mod...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
In this thesis, we study lexical semantic change: temporal variations in the use and meaning of word...
In this paper, we propose several methods for the diachronic analysis of the Italian language. We bu...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
© Springer Nature Switzerland AG 2020. The article proposes a method for detecting semantic change u...
In recent years, there has been a significant increase in interest in lexical semantic change detect...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...