International audienceThis paper investigates two strategies for improving coreference resolution: (1) training separate models that specialize in particular types of mentions (e.g., pronouns versus proper nouns) and (2) using a ranking loss function rather than a classification function. In addition to being conceptually simple, these modifications of the standard single-model, classification-based approach also deliver significant performance improvements. Specifically, we show that on the ACE corpus both strategies produce f-score gains of more than 3% across the three coreference evaluation metrics (MUC, B^3, and CEAF)
In this paper we describe experiments aimed at improving matching techniques for the Coreference Res...
Motivation: Coreference resolution, the process of identifying different mentions of an entity, is a...
We propose an adaptive ensemble method to adapt coreference resolution across domains. This method h...
This paper investigates two strategies for im-proving coreference resolution: (1) training separate ...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to ...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Journal ArticleWe aim to shed light on the state-of-the-art in NP coreference resolution by teasing...
Despite the existence of several noun phrase coref-erence resolution data sets as well as several fo...
State-of-the-art coreference resolution systems are mostly knowledge-based systems that operate by ...
posterCoreference resolution is the task of identifying coreferent expressions in text. Accurate c...
This chapter introduces one of the early and most influential machine learning approaches to corefer...
In this paper we describe experiments aimed at improving matching techniques for the Coreference Res...
Motivation: Coreference resolution, the process of identifying different mentions of an entity, is a...
We propose an adaptive ensemble method to adapt coreference resolution across domains. This method h...
This paper investigates two strategies for im-proving coreference resolution: (1) training separate ...
Traditional learning-based coreference re-solvers operate by training a mention-pair classifier for ...
We describe a scaffolding approach to the task of coreference resolution that incrementally combines...
We introduce a simple, non-linear mention-ranking model for coreference resolution that attempts to ...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
Mention pair models that predict whether or not two mentions are coreferent have historically been v...
Recently, many advanced machine learning approaches have been proposed for coreference resolution; h...
Journal ArticleWe aim to shed light on the state-of-the-art in NP coreference resolution by teasing...
Despite the existence of several noun phrase coref-erence resolution data sets as well as several fo...
State-of-the-art coreference resolution systems are mostly knowledge-based systems that operate by ...
posterCoreference resolution is the task of identifying coreferent expressions in text. Accurate c...
This chapter introduces one of the early and most influential machine learning approaches to corefer...
In this paper we describe experiments aimed at improving matching techniques for the Coreference Res...
Motivation: Coreference resolution, the process of identifying different mentions of an entity, is a...
We propose an adaptive ensemble method to adapt coreference resolution across domains. This method h...