International audienceThis paper proposes a new method for significantly improving the performance of pairwise coreference models. Given a set of indicators, our method learns how to best separate types of mention pairs into equivalence classes for which we construct distinct classification models. In effect, our approach finds an optimal feature space (derived from a base feature set and indicator set) for discriminating coreferential mention pairs. Although our approach explores a very large space of possible feature spaces, it remains tractable by exploiting the structure of the hierarchies built from the indicators. Our experiments on the CoNLL-2012 Shared Task English datasets (gold mentions) indicate that our method is robust relative to...
International audienceThis paper describes coreference chain resolution with Bayesian Networks. Seve...
International audienceThis paper investigates two strategies for improving coreference resolution: (...
We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to ...
International audienceThis paper proposes a new method for significantly improving the performance of...
Proceedings of the Second Workshop on Anaphora Resolution (WAR II). Editor: Christer Johansson. N...
This chapter introduces one of the early and most influential machine learning approaches to corefer...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
This thesis explores ways to define automated coreference resolution systems by using structured mac...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
International audienceThis paper introduces a new structured model for learninganaphoricity detectio...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
Coreference resolution is one of the most fundamental Natural Language Processing tasks, aiming to i...
Pairwise coreference resolution models must merge pairwise coreference decisions to generate final o...
We investigate methods to improve the recall in coreference resolution by also trying to resolve tho...
We describe a structure learning system for unrestricted coreference resolution that explores two ke...
International audienceThis paper describes coreference chain resolution with Bayesian Networks. Seve...
International audienceThis paper investigates two strategies for improving coreference resolution: (...
We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to ...
International audienceThis paper proposes a new method for significantly improving the performance of...
Proceedings of the Second Workshop on Anaphora Resolution (WAR II). Editor: Christer Johansson. N...
This chapter introduces one of the early and most influential machine learning approaches to corefer...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
This thesis explores ways to define automated coreference resolution systems by using structured mac...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
International audienceThis paper introduces a new structured model for learninganaphoricity detectio...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
Coreference resolution is one of the most fundamental Natural Language Processing tasks, aiming to i...
Pairwise coreference resolution models must merge pairwise coreference decisions to generate final o...
We investigate methods to improve the recall in coreference resolution by also trying to resolve tho...
We describe a structure learning system for unrestricted coreference resolution that explores two ke...
International audienceThis paper describes coreference chain resolution with Bayesian Networks. Seve...
International audienceThis paper investigates two strategies for improving coreference resolution: (...
We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to ...