Coreference resolution is a core task in natural language processing and in creating language technologies. Neural methods and models for automatically resolving references have emerged and developed over the last several years. This progress is largely marked by continuous improvements on a single dataset and metric. In this thesis, the assumptions that underlie these improvements are shown to be unrealistic for real-world use due to the computational and data tradeoffs made to achieve apparently high performance. The thesis outlines and proposes solutions to three issues. First, to address the growing memory requirements and restrictions on input document length, a novel, constant memory neural model for coreference resolution is proposed...
Though extensively investigated since the 1960s, entity coreference resolution, a core task in natur...
Coreference is an important and frequent concept in any form of discourse, and Coreference Resolutio...
In this paper we present an approach to coref-erence resolution that integrates empirical meth-ods w...
State-of-the-art coreference resolution systems are mostly knowledge-based systems that operate by ...
Over the past few years, research in coreference resolution, one of the core tasks in Natural Langua...
Coreference resolution is the task of extracting referential expressions, or mentions, in text and c...
One foundational goal of artificial intelligence is to build intelligent agents which interact with ...
This dissertation presents a new approach to solving the coreference resolution problem for a natura...
Coreference resolution is the task of finding expressions that refer to the same entity in a text. C...
posterCoreference resolution is the task of identifying coreferent expressions in text. Accurate c...
Recent work on extending coreference resolution across domains and languages relies on annotated dat...
Coreference resolution (CR) is one of the most challenging areas of natural language processing. Thi...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
We introduce a modular, hybrid coreference resolution system that extends a rule-based baseline with...
An important challenge for the automatic understanding of natural language texts is the correct com...
Though extensively investigated since the 1960s, entity coreference resolution, a core task in natur...
Coreference is an important and frequent concept in any form of discourse, and Coreference Resolutio...
In this paper we present an approach to coref-erence resolution that integrates empirical meth-ods w...
State-of-the-art coreference resolution systems are mostly knowledge-based systems that operate by ...
Over the past few years, research in coreference resolution, one of the core tasks in Natural Langua...
Coreference resolution is the task of extracting referential expressions, or mentions, in text and c...
One foundational goal of artificial intelligence is to build intelligent agents which interact with ...
This dissertation presents a new approach to solving the coreference resolution problem for a natura...
Coreference resolution is the task of finding expressions that refer to the same entity in a text. C...
posterCoreference resolution is the task of identifying coreferent expressions in text. Accurate c...
Recent work on extending coreference resolution across domains and languages relies on annotated dat...
Coreference resolution (CR) is one of the most challenging areas of natural language processing. Thi...
We propose an algorithm for coreference resolution based on analogy with shift-reduce pars-ing. By r...
We introduce a modular, hybrid coreference resolution system that extends a rule-based baseline with...
An important challenge for the automatic understanding of natural language texts is the correct com...
Though extensively investigated since the 1960s, entity coreference resolution, a core task in natur...
Coreference is an important and frequent concept in any form of discourse, and Coreference Resolutio...
In this paper we present an approach to coref-erence resolution that integrates empirical meth-ods w...