International audienceDiachronic word embeddings play a key role in capturing interesting patterns about how language evolves over time. Most of the existing work focuses on studying corpora spanning across several decades, which is understandably still not a possibility when working on social media-based user-generated content. In this work, we address the problem of studying semantic changes in a large Twitter corpus collected over five years, a much shorter period than what is usually the norm in di-achronic studies. We devise a novel attentional model, based on Bernoulli word embeddings, that are conditioned on contextual extra-linguistic (social) features such as network, spatial and socioeconomic variables, which are associated with T...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
Identifying temporal linguistic patterns and tracing social amplification across communities has alw...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
International audienceDiachronic word embeddings play a key role in capturing interesting patterns a...
Words of human languages change their meaning over time. This linguistic phenomenon is known as ‘dia...
International audienceIn this contribution, we propose a computational model to predict the semantic...
In this thesis, we study lexical semantic change: temporal variations in the use and meaning of word...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
Recent years have witnessed a surge of publications aimed at tracing temporal changes in lexical sem...
The increasing pace of change in languages affects many applications and algorithms for text process...
The research described in this paper focused on exploring the domain of user profiling, a nascent a...
International audienceWords are malleable objects, influenced by events reflectedin written texts. S...
This paper introduces growth curve modeling for the analysis of language change in corpus linguistic...
In the last few years, the increasing availability of large corpora spanning several time periods ha...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
Identifying temporal linguistic patterns and tracing social amplification across communities has alw...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...
International audienceDiachronic word embeddings play a key role in capturing interesting patterns a...
Words of human languages change their meaning over time. This linguistic phenomenon is known as ‘dia...
International audienceIn this contribution, we propose a computational model to predict the semantic...
In this thesis, we study lexical semantic change: temporal variations in the use and meaning of word...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
Recent years have witnessed a surge of publications aimed at tracing temporal changes in lexical sem...
The increasing pace of change in languages affects many applications and algorithms for text process...
The research described in this paper focused on exploring the domain of user profiling, a nascent a...
International audienceWords are malleable objects, influenced by events reflectedin written texts. S...
This paper introduces growth curve modeling for the analysis of language change in corpus linguistic...
In the last few years, the increasing availability of large corpora spanning several time periods ha...
Lexical semantic change (detecting shifts in the meaning and usage of words) is an important task fo...
Identifying temporal linguistic patterns and tracing social amplification across communities has alw...
We propose a new method that leverages contextual embeddings for the task of diachronic semantic shi...