Litcius/Paper detail

Recurrent Interaction Network for Jointly Extracting Entities and Classifying Relations

Kai Sun, Richong Zhang, Samuel Mensah, Yongyi Mao, Xudong Liu

202035 citationsDOIOpen Access PDF

Abstract

The idea of using multi-task learning approaches to address the joint extraction of entity and relation is motivated by the relatedness between the entity recognition task and the relation classification task. Existing methods using multi-task learning techniques to address the problem learn interactions among the two tasks through a shared network, where the shared information is passed into the taskspecific networks for prediction. However, such an approach hinders the model from learning explicit interactions between the two tasks to improve the performance on the individual tasks. As a solution, we design a multitask learning model which we refer to as recurrent interaction network which allows the learning of interactions dynamically, to effectively model task-specific features for classification. Empirical studies on two real-world datasets confirm the superiority of the proposed model.

Topics & Concepts

Computer scienceTask (project management)Relation (database)Artificial intelligenceMachine learningMulti-task learningRelationship extractionTask analysisJoint (building)Data miningEconomicsManagementEngineeringArchitectural engineeringTopic ModelingData Quality and ManagementNatural Language Processing Techniques
Recurrent Interaction Network for Jointly Extracting Entities and Classifying Relations | Litcius