Detecting events and their evolution through time is a crucial task in natural language understanding. Recent neural approaches to event temporal relation extraction typically map events to embeddings in the Euclidean space and train a classifier to detect temporal relations between event pairs. However, embeddings in the Euclidean space cannot capture richer asymmetric relations such as event temporal relations. We thus propose to embed events into hyperbolic spaces, which are intrinsically oriented at modeling hierarchical structures. We introduce two approaches to encode events and their temporal relations in hyperbolic spaces. One approach leverages hyperbolic embeddings to directly infer event relations through simple geometrical opera...
Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data represent...
Narratives in news stories typically describe a real-world event of coarse spatial and temporal gran...
This paper presents a comprehensive set of probing experiments using a multilingual language model, ...
Detecting events and their evolution through time is a crucial task in natural language understandin...
Relation extraction is a core task in natural language processing that concerns the extraction of re...
Representation learning over temporal networks has drawn considerable attention in recent years. Eff...
International audienceMost existing systems for identifying temporal relations between events heavil...
Extracting temporal relations usually entails identifying and classifying the relation between two m...
Reasoning and mining over temporal patterns has to be more specific and accurate for efficient knowl...
Temporal information extraction is a challenging task due to the inherent ambiguity of language. Eve...
Network embedding techniques are powerful to capture structural regularities in networks and to iden...
Thesis (Ph.D.)--University of Washington, 2015Relation extraction, the task of extracting facts from...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
We examine the task of temporal relation clas-sification. Unlike existing approaches to this task, w...
Temporal relation classification is a challenging task, especially when there are no explicit marker...
Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data represent...
Narratives in news stories typically describe a real-world event of coarse spatial and temporal gran...
This paper presents a comprehensive set of probing experiments using a multilingual language model, ...
Detecting events and their evolution through time is a crucial task in natural language understandin...
Relation extraction is a core task in natural language processing that concerns the extraction of re...
Representation learning over temporal networks has drawn considerable attention in recent years. Eff...
International audienceMost existing systems for identifying temporal relations between events heavil...
Extracting temporal relations usually entails identifying and classifying the relation between two m...
Reasoning and mining over temporal patterns has to be more specific and accurate for efficient knowl...
Temporal information extraction is a challenging task due to the inherent ambiguity of language. Eve...
Network embedding techniques are powerful to capture structural regularities in networks and to iden...
Thesis (Ph.D.)--University of Washington, 2015Relation extraction, the task of extracting facts from...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
We examine the task of temporal relation clas-sification. Unlike existing approaches to this task, w...
Temporal relation classification is a challenging task, especially when there are no explicit marker...
Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data represent...
Narratives in news stories typically describe a real-world event of coarse spatial and temporal gran...
This paper presents a comprehensive set of probing experiments using a multilingual language model, ...