Coreference is an important and frequent concept in any form of discourse, and Coreference Resolution (CR) a widely used task in Natural Language Understanding (NLU). In this thesis, we implement and explore two recent models that include the concept of coreference in Recurrent Neural Network (RNN)-based Language Models (LM). Entity and reference decisions are modeled explicitly in these models using attention mechanisms. Both models learn to save the previously observed entities in a set and to decide if the next token created by the LM is a mention of one of the entities in the set, an entity that has not been observed yet, or not an entity. After a theoretical analysis where we compare the two LMs to each other and to a state of the art ...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
Coreference resolution deals with resolving mentions of the same underlying entity in a given text. ...
Recent work on extending coreference resolution across domains and languages relies on annotated dat...
Coreference is an important and frequent concept in any form of discourse, and Coreference Resolutio...
Coreference resolution is the task of finding expressions that refer to the same entity in a text. C...
Coreference resolution is a core task in natural language processing and in creating language techno...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Though extensively investigated since the 1960s, entity coreference resolution, a core task in natur...
International audienceWe propose an end-to-end coreference resolution system obtained by adapting ne...
Human speakers generally have no difficulty in determining which noun phrases in a text or dialogue ...
Coreference resolution is an intermediate step for text understanding. It is used in tasks and domai...
Coreference resolution is the task of determining which expressions in a text are used to refer to t...
Coreference resolution is the task of extracting referential expressions, or mentions, in text and c...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
We introduce a modular, hybrid coreference resolution system that extends a rule-based baseline with...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
Coreference resolution deals with resolving mentions of the same underlying entity in a given text. ...
Recent work on extending coreference resolution across domains and languages relies on annotated dat...
Coreference is an important and frequent concept in any form of discourse, and Coreference Resolutio...
Coreference resolution is the task of finding expressions that refer to the same entity in a text. C...
Coreference resolution is a core task in natural language processing and in creating language techno...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Though extensively investigated since the 1960s, entity coreference resolution, a core task in natur...
International audienceWe propose an end-to-end coreference resolution system obtained by adapting ne...
Human speakers generally have no difficulty in determining which noun phrases in a text or dialogue ...
Coreference resolution is an intermediate step for text understanding. It is used in tasks and domai...
Coreference resolution is the task of determining which expressions in a text are used to refer to t...
Coreference resolution is the task of extracting referential expressions, or mentions, in text and c...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
We introduce a modular, hybrid coreference resolution system that extends a rule-based baseline with...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
Coreference resolution deals with resolving mentions of the same underlying entity in a given text. ...
Recent work on extending coreference resolution across domains and languages relies on annotated dat...