We propose a scalable structured learning model that jointly predicts temporal relations between events and temporal expressions (TLINKS), and the relation between these events and the document creation time (DCTR). We employ a structured perceptron, together with integer linear programming constraints for document-level inference during training and prediction to exploit relational properties of temporality, together with global learning of the relations at the document level. Moreover, this study gives insights in the results of integrating constraints for temporal relation extraction when using structured learning and prediction. Our best system outperforms the state-of-the art on both the CONTAINS TLINK task, and the DCTR task.status: p...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
Recently there has been a lot of interest in using Statistical Relational Learning (SRL) models for ...
There has been a steady need in the medical community to precisely extract the temporal relations be...
We propose a scalable structured learning model that jointly predicts temporal relations between eve...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
Recently there has been a lot of interest in using Statistical Relational Learning (SRL) models for ...
There has been a steady need in the medical community to precisely extract the temporal relations be...
We propose a scalable structured learning model that jointly predicts temporal relations between eve...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
Recently there has been a lot of interest in using Statistical Relational Learning (SRL) models for ...
There has been a steady need in the medical community to precisely extract the temporal relations be...