Recently, many advanced machine learning approaches have been proposed for coreference resolution; however, all of the discriminatively-trained models reason over mentions, rather than entities. That is, they do not explicitly contain variables indicating the ``canonical\u27\u27 values for each attribute of an entity (e.g., name, venue, title, etc.). This canonicalization step is typically implemented as a post-processing routine to coreference resolution prior to adding the extracted entity to a database. In this paper, we propose a discriminatively-trained model that jointly performs coreference resolution and canonicalization, enabling features over hypothesized entities. We validate our approach on two different coreference problems: ne...
This chapter introduces one of the early and most influential machine learning approaches to corefer...
This work is focused on research in machine learning for coreference resolution. Coreference resolut...
Coreference resolution is the task of determining which expressions in a text are used to refer to t...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
Many errors in coreference resolution come from semantic mismatches due to inadequate world knowledg...
Coreference Resolution is an important step in many NLP tasks and has been a popular topic within th...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
Many errors in coreference resolution come from semantic mismatches due to inadequate world knowledg...
Traditionally, coreference resolution is done by mining the reference relationships between NP pairs...
posterCoreference resolution is the task of identifying coreferent expressions in text. Accurate c...
This paper investigates two strategies for im-proving coreference resolution: (1) training separate ...
Entity resolution, the task of automatically determining which mentions refer to the same real-world...
State-of-the-art coreference resolution systems are mostly knowledge-based systems that operate by ...
International audienceThis paper investigates two strategies for improving coreference resolution: (...
This chapter introduces one of the early and most influential machine learning approaches to corefer...
This work is focused on research in machine learning for coreference resolution. Coreference resolut...
Coreference resolution is the task of determining which expressions in a text are used to refer to t...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
Many errors in coreference resolution come from semantic mismatches due to inadequate world knowledg...
Coreference Resolution is an important step in many NLP tasks and has been a popular topic within th...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
Many errors in coreference resolution come from semantic mismatches due to inadequate world knowledg...
Traditionally, coreference resolution is done by mining the reference relationships between NP pairs...
posterCoreference resolution is the task of identifying coreferent expressions in text. Accurate c...
This paper investigates two strategies for im-proving coreference resolution: (1) training separate ...
Entity resolution, the task of automatically determining which mentions refer to the same real-world...
State-of-the-art coreference resolution systems are mostly knowledge-based systems that operate by ...
International audienceThis paper investigates two strategies for improving coreference resolution: (...
This chapter introduces one of the early and most influential machine learning approaches to corefer...
This work is focused on research in machine learning for coreference resolution. Coreference resolut...
Coreference resolution is the task of determining which expressions in a text are used to refer to t...