Language in social media is extremely dynamic: new words emerge, trend and disappear, while the meaning of existing words can fluctuate over time. This work addresses several important tasks of visualizing and predicting short term text representation shift, i.e. the change in a word's contextual semantics. We study the relationship between short-term concept drift and representation shift on a large social media corpus — VKontakte collected during the Russia-Ukraine crisis in 2014 — 2015. We visualize short-term representation shift for example keywords and build predictive models to forecast short-term shifts in meaning from previous meaning as well as from concept drift. We show that short-term representation shift can be accurately pred...
8th International Conference on Computer Science and Information Technology (ICCSIT 2015) : December...
Text from social media is significant key information to understand social movement. However, the le...
Recently, researchers started to pay attention to the detection of temporal shifts in the meaning of...
Language in social media is extremely dynamic: new words emerge, trend and disappear, while the mean...
International audienceDiachronic word embeddings play a key role in capturing interesting patterns a...
Language use changes over time, and this impacts the effectiveness of NLP systems. This phenomenon i...
Semantic drift is a well-known concept in distributional semantics, which is used to demonstrate gra...
_Comunicació presentada a la Conference of the North American Chapter of the Association for Computa...
Language use changes over time, and this impacts the effectiveness of NLP systems. This phenomenon i...
International audienceIn this contribution, we propose a computational model to predict the semantic...
International audienceWords are malleable objects, influenced by events reflectedin written texts. S...
Social media data promise to inform the disaster response community, but effective mining remains el...
The extraction of significant, relevant, and useful trends from massive document collections, such a...
Social media is a valuable source of information for different domains, since users share their opin...
The event-indexing situation models are introduced as event models derived from language to facilita...
8th International Conference on Computer Science and Information Technology (ICCSIT 2015) : December...
Text from social media is significant key information to understand social movement. However, the le...
Recently, researchers started to pay attention to the detection of temporal shifts in the meaning of...
Language in social media is extremely dynamic: new words emerge, trend and disappear, while the mean...
International audienceDiachronic word embeddings play a key role in capturing interesting patterns a...
Language use changes over time, and this impacts the effectiveness of NLP systems. This phenomenon i...
Semantic drift is a well-known concept in distributional semantics, which is used to demonstrate gra...
_Comunicació presentada a la Conference of the North American Chapter of the Association for Computa...
Language use changes over time, and this impacts the effectiveness of NLP systems. This phenomenon i...
International audienceIn this contribution, we propose a computational model to predict the semantic...
International audienceWords are malleable objects, influenced by events reflectedin written texts. S...
Social media data promise to inform the disaster response community, but effective mining remains el...
The extraction of significant, relevant, and useful trends from massive document collections, such a...
Social media is a valuable source of information for different domains, since users share their opin...
The event-indexing situation models are introduced as event models derived from language to facilita...
8th International Conference on Computer Science and Information Technology (ICCSIT 2015) : December...
Text from social media is significant key information to understand social movement. However, the le...
Recently, researchers started to pay attention to the detection of temporal shifts in the meaning of...