Large text temporal collections provide insights into social and cultural change over time. To quantify changes in topics in these corpora, embedding methods have been used as a diachronic tool. However, they have limited utility for modeling changes in topics due to the stochastic nature of training. We propose a new computational approach for tracking and detecting temporal evolution of topics in a large collection of texts. This approach for identifying dynamic topics and modeling their evolution combines the advantages of two methods: (1) word embeddings to learn contextual semantic representation of words from temporal snapshots of the data and (2) dynamic network analysis to identify dynamic topics by using dynamic semantic similarity...
Abstract—We present ThemeDelta, a visual analytics system for extracting and visualizing temporal tr...
International audienceIn this contribution, we propose a computational model to predict the semantic...
The rapidly expanding corpus of medical research literature presents major challenges in the underst...
A large document collection that builds up over time usually contains a number of different ...
A large document collection that builds up over time usually contains a number of different themes. ...
The extraction of significant, relevant, and useful trends from massive document collections, such a...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Text corpora with documents from a range of time epochs are natu-ral and ubiquitous in many fields, ...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
In this paper we describe a novel framework for the discovery of the topical content of a data corpu...
Abstract—We present ThemeDelta, a visual analytics system for extracting and visualizing temporal tr...
International audienceIn this contribution, we propose a computational model to predict the semantic...
The rapidly expanding corpus of medical research literature presents major challenges in the underst...
A large document collection that builds up over time usually contains a number of different ...
A large document collection that builds up over time usually contains a number of different themes. ...
The extraction of significant, relevant, and useful trends from massive document collections, such a...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Text corpora with documents from a range of time epochs are natu-ral and ubiquitous in many fields, ...
We propose Word Embedding Networks, a novel method that is able to learn word embeddings of individu...
In this paper we describe a novel framework for the discovery of the topical content of a data corpu...
Abstract—We present ThemeDelta, a visual analytics system for extracting and visualizing temporal tr...
International audienceIn this contribution, we propose a computational model to predict the semantic...
The rapidly expanding corpus of medical research literature presents major challenges in the underst...