Performing event and entity coreference resolution across documents vastly increases the number of candidate mentions, making it intractable to do the full $n^2$ pairwise comparisons. Existing approaches simplify by considering coreference only within document clusters, but this fails to handle inter-cluster coreference, common in many applications. As a result cross-document coreference algorithms are rarely applied to downstream tasks. We draw on an insight from discourse coherence theory: potential coreferences are constrained by the reader's discourse focus. We model the entities/events in a reader's focus as a neighborhood within a learned latent embedding space which minimizes the distance between mentions and the centroids of their g...
Datasets and methods for cross-document coreference resolution (CDCR) focus on events or entities wi...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Coreference resolution is one of the most fundamental Natural Language Processing tasks, aiming to i...
Event coreference resolution aims to determine and cluster event mentions that refer to the same rea...
Cross-document coreference, the problem of resolving entity mentions across multi-document collectio...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
The introduction and maintenance of reference in discourse is subject to a number of language-univer...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
The phenomenon of coreference, covering entities, their mentions and their properties, is intricatel...
The task of event coreference resolution plays a critical role in many natural language pro-cessing ...
This paper presents our participation in the CoNLL-2011 shared task, Modeling Unrestricted Coreferen...
We introduce a novel coreference resolution system that models entities and events jointly. Our iter...
Coreference resolution is the task of extracting referential expressions, or mentions, in text and c...
In this paper we present a new empirical method for coreference resolution, implemented in the COCKT...
Datasets and methods for cross-document coreference resolution (CDCR) focus on events or entities wi...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Coreference resolution is one of the most fundamental Natural Language Processing tasks, aiming to i...
Event coreference resolution aims to determine and cluster event mentions that refer to the same rea...
Cross-document coreference, the problem of resolving entity mentions across multi-document collectio...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
The introduction and maintenance of reference in discourse is subject to a number of language-univer...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
The phenomenon of coreference, covering entities, their mentions and their properties, is intricatel...
The task of event coreference resolution plays a critical role in many natural language pro-cessing ...
This paper presents our participation in the CoNLL-2011 shared task, Modeling Unrestricted Coreferen...
We introduce a novel coreference resolution system that models entities and events jointly. Our iter...
Coreference resolution is the task of extracting referential expressions, or mentions, in text and c...
In this paper we present a new empirical method for coreference resolution, implemented in the COCKT...
Datasets and methods for cross-document coreference resolution (CDCR) focus on events or entities wi...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Coreference resolution is one of the most fundamental Natural Language Processing tasks, aiming to i...