Mention Detection Using Pointer Networks for Coreference Resolution
A mention has a noun or noun phrase as its head and constructs a chunk that defines any meaning, including a modifier. Mention detection refers to the extraction of mentions from a document. In mentions, coreference resolution refers to determining any mentions that have the same meaning. Pointer ne...
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doaj-c7cc01c20ccb4f65b2cc9c1b84796b932020-11-25T03:31:22ZengElectronics and Telecommunications Research Institute (ETRI)ETRI Journal1225-64632233-73262017-10-0139565266110.4218/etrij.17.0117.014010.4218/etrij.17.0117.0140Mention Detection Using Pointer Networks for Coreference ResolutionCheoneum ParkChangki LeeSoojong LimA mention has a noun or noun phrase as its head and constructs a chunk that defines any meaning, including a modifier. Mention detection refers to the extraction of mentions from a document. In mentions, coreference resolution refers to determining any mentions that have the same meaning. Pointer networks, which are models based on a recurrent neural network encoder–decoder, outputs a list of elements corresponding to an input sequence. In this paper, we propose mention detection using pointer networks. This approach can solve the problem of overlapped mention detection, which cannot be solved by a sequence labeling approach. The experimental results show that the performance of the proposed mention detection approach is F1 of 80.75%, which is 8% higher than rule‐based mention detection, and the performance of the coreference resolution has a CoNLL F1 of 56.67% (mention boundary), which is 7.68% higher than coreference resolution using rule‐based mention detection.https://doi.org/10.4218/etrij.17.0117.0140Coreference resolutionDeep learningMention detectionPointer networks |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Cheoneum Park Changki Lee Soojong Lim |
spellingShingle |
Cheoneum Park Changki Lee Soojong Lim Mention Detection Using Pointer Networks for Coreference Resolution ETRI Journal Coreference resolution Deep learning Mention detection Pointer networks |
author_facet |
Cheoneum Park Changki Lee Soojong Lim |
author_sort |
Cheoneum Park |
title |
Mention Detection Using Pointer Networks for Coreference Resolution |
title_short |
Mention Detection Using Pointer Networks for Coreference Resolution |
title_full |
Mention Detection Using Pointer Networks for Coreference Resolution |
title_fullStr |
Mention Detection Using Pointer Networks for Coreference Resolution |
title_full_unstemmed |
Mention Detection Using Pointer Networks for Coreference Resolution |
title_sort |
mention detection using pointer networks for coreference resolution |
publisher |
Electronics and Telecommunications Research Institute (ETRI) |
series |
ETRI Journal |
issn |
1225-6463 2233-7326 |
publishDate |
2017-10-01 |
description |
A mention has a noun or noun phrase as its head and constructs a chunk that defines any meaning, including a modifier. Mention detection refers to the extraction of mentions from a document. In mentions, coreference resolution refers to determining any mentions that have the same meaning. Pointer networks, which are models based on a recurrent neural network encoder–decoder, outputs a list of elements corresponding to an input sequence. In this paper, we propose mention detection using pointer networks. This approach can solve the problem of overlapped mention detection, which cannot be solved by a sequence labeling approach. The experimental results show that the performance of the proposed mention detection approach is F1 of 80.75%, which is 8% higher than rule‐based mention detection, and the performance of the coreference resolution has a CoNLL F1 of 56.67% (mention boundary), which is 7.68% higher than coreference resolution using rule‐based mention detection. |
topic |
Coreference resolution Deep learning Mention detection Pointer networks |
url |
https://doi.org/10.4218/etrij.17.0117.0140 |
work_keys_str_mv |
AT cheoneumpark mentiondetectionusingpointernetworksforcoreferenceresolution AT changkilee mentiondetectionusingpointernetworksforcoreferenceresolution AT soojonglim mentiondetectionusingpointernetworksforcoreferenceresolution |
_version_ |
1724572036098949120 |