This paper introduces a new structured model for learning anaphoricity detection and coreference resolution in a joint fashion. Specifically,we use a latent tree to represent the full coreference and anaphoric structure of a document at a global level, and we jointly learn the parameters of the two models using a version of the structured perceptron algorithm. Our joint structured model is further refined by the use of pairwise constraints which help the model to capture accurately certain patterns of coreference. Our experiments on the CoNLL-2012 English datasets show large improvements in both coreference resolution and anaphoricity detection, compared to various competing architectures. Our best coreference system obtains a CoNLL score o...
International audienceThis paper describes coreference chain resolution with Bayesian Networks. Seve...
This work is focused on research in machine learning for coreference resolution. Coreference resolut...
Coreference resolution is a well known clus-tering task in Natural Language Processing. In this pape...
This paper introduces a new structured model for learning anaphoricity detection and coreference res...
We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to ...
We describe a structure learning system for unrestricted coreference resolution that explores two ke...
Recent work has shown that explicitly iden-tifying and filtering non-anaphoric mentions prior to cor...
This thesis explores ways to define automated coreference resolution systems by using structured mac...
Coreference Resolution is an important step in many NLP tasks and has been a popular topic within th...
Coreference resolution is the task of finding all expressions that refer to the same entity in a tex...
Proceedings of the Second Workshop on Anaphora Resolution (WAR II). Editor: Christer Johansson. N...
Coreference resolution is the task of finding expressions that refer to the same entity in a text. C...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
Interpreting anaphoric expressions is one of the most fundamental aspects of lan-guage interpretatio...
Interpreting anaphoric references is a fundamental aspect of our language competence that has long a...
International audienceThis paper describes coreference chain resolution with Bayesian Networks. Seve...
This work is focused on research in machine learning for coreference resolution. Coreference resolut...
Coreference resolution is a well known clus-tering task in Natural Language Processing. In this pape...
This paper introduces a new structured model for learning anaphoricity detection and coreference res...
We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to ...
We describe a structure learning system for unrestricted coreference resolution that explores two ke...
Recent work has shown that explicitly iden-tifying and filtering non-anaphoric mentions prior to cor...
This thesis explores ways to define automated coreference resolution systems by using structured mac...
Coreference Resolution is an important step in many NLP tasks and has been a popular topic within th...
Coreference resolution is the task of finding all expressions that refer to the same entity in a tex...
Proceedings of the Second Workshop on Anaphora Resolution (WAR II). Editor: Christer Johansson. N...
Coreference resolution is the task of finding expressions that refer to the same entity in a text. C...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
Interpreting anaphoric expressions is one of the most fundamental aspects of lan-guage interpretatio...
Interpreting anaphoric references is a fundamental aspect of our language competence that has long a...
International audienceThis paper describes coreference chain resolution with Bayesian Networks. Seve...
This work is focused on research in machine learning for coreference resolution. Coreference resolut...
Coreference resolution is a well known clus-tering task in Natural Language Processing. In this pape...