Coreference analysis, also known as record linkage or identity uncertainty, is a difficult and important problem in natural language processing, databases, citation matching and many other tasks. This paper introduces several discriminative, conditional-probability models for coreference analysis, all examples of undirected graphical models. Unlike many historical approaches to coreference, the models presented here are relational---they do not assume that pairwise coreference decisions should be made independently from each other. Unlike other relational models of coreference that are generative, the conditional model here can incorporate a great variety of features of the input without having to be concerned about their dependencies---par...
Coreference Resolution is an important step in many NLP tasks and has been a popular topic within th...
Cross-document coreference, the problem of resolving entity mentions across multi-document collectio...
Identity uncertainty is a pervasive problem in real-world data analysis. It arises whenever objects ...
Coreference analysis, also known as record linkage or identity uncertainty, is a difficult and impor...
Coreference analysis, also known as record linkage or identity uncer-tainty, is a difficult and impo...
Although information extraction and coref- erence resolution appear together in many applications, m...
Traditional noun phrase coreference resolution systems represent features only of pairs of noun phra...
Traditional noun phrase coreference resolution systems represent features only of pairs of noun phra...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
Coreference is an important and frequent concept in any form of discourse, and Coreference Resolutio...
This article examines the mainstream categorical definition of coreference as "identity of reference...
International audienceWhen studying references to human beings in narrative texts, we observe exampl...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Coreference Resolution is an important step in many NLP tasks and has been a popular topic within th...
Cross-document coreference, the problem of resolving entity mentions across multi-document collectio...
Identity uncertainty is a pervasive problem in real-world data analysis. It arises whenever objects ...
Coreference analysis, also known as record linkage or identity uncertainty, is a difficult and impor...
Coreference analysis, also known as record linkage or identity uncer-tainty, is a difficult and impo...
Although information extraction and coref- erence resolution appear together in many applications, m...
Traditional noun phrase coreference resolution systems represent features only of pairs of noun phra...
Traditional noun phrase coreference resolution systems represent features only of pairs of noun phra...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
Coreference is an important and frequent concept in any form of discourse, and Coreference Resolutio...
This article examines the mainstream categorical definition of coreference as "identity of reference...
International audienceWhen studying references to human beings in narrative texts, we observe exampl...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Coreference Resolution is an important step in many NLP tasks and has been a popular topic within th...
Cross-document coreference, the problem of resolving entity mentions across multi-document collectio...
Identity uncertainty is a pervasive problem in real-world data analysis. It arises whenever objects ...