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Phrase chunking
Phrase chunking is a natural language process that separates and segments a sentence into its subconstituents, such as noun, verb, and prepositional…
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Computational linguistics
NIST (metric)
Natural language processing
Ontology learning
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Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2018
2018
A Named Entity Recognition System for Malayalam Using Conditional Random Fields
A. P. Ajees
,
S. M. Idicula
International Conferences on Data Science and…
2018
Corpus ID: 53285183
Named Entity Recognition(NER) is the process of classifying elementary units in a text document into predefined categories such…
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2016
2016
SemAligner: A Method and Tool for Aligning Chunks with Semantic Relation Types and Semantic Similarity Scores
Nabin Maharjan
,
Rajendra Banjade
,
Nobal B. Niraula
,
V. Rus
International Conference on Language Resources…
2016
Corpus ID: 28525144
This paper introduces a ruled-based method and software tool, called SemAligner, for aligning chunks across texts in a given pair…
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2014
2014
New Phrase Chunking Algorithm for Myanmar Natural Language Processing
M. Aung
,
aung lwin Moe
2014
Corpus ID: 35304950
Chunking is the subdivision of sentences into non recursive regular syntactical groups: verbal chunks, nominal chunks, adjective…
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2010
2010
Chinese base phrases chunking based on latent semi-CRF model
Xiao Sun
,
Xiaoli Nan
International Conference on Natural Language…
2010
Corpus ID: 3669048
In the fields of Chinese natural language processing, recognizing simple and non-recursive base phrases is an important task for…
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2008
2008
A Character n-gram Based Approach for Improved Recall in Indian Language NER
Praneeth Shishtla
,
Prasad Pingali
,
Vasudeva Varma
International Joint Conference on Natural…
2008
Corpus ID: 16824638
Named Entity Recognition (NER) is the task of identifying and classifying all proper nouns in a document as person names…
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Highly Cited
2007
Highly Cited
2007
Extracting relation information from text documents by exploring various types of knowledge
Guodong Zhou
,
Min Zhang
Information Processing & Management
2007
Corpus ID: 37129484
Review
2006
Review
2006
Noun Phrase Chunking in Hebrew: Influence of Lexical and Morphological Features
Yoav Goldberg
,
M. Adler
,
Michael Elhadad
Annual Meeting of the Association for…
2006
Corpus ID: 5944544
We present a method for Noun Phrase chunking in Hebrew. We show that the traditional definition of base-NPs as non-recursive noun…
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Highly Cited
2006
Highly Cited
2006
A Pattern Learning Approach to Question Answering Within the Ephyra Framework
Nico Schlaefer
,
Petra Gieselmann
,
Thomas Schaaf
,
A. Waibel
International Conference on Text, Speech and…
2006
Corpus ID: 6178111
This paper describes the Ephyra question answering engine, a modular and extensible framework that allows to integrate multiple…
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2005
2005
INAOE-UPV Joint Participation in CLEF 2005: Experiments in Monolingual Question Answering
M. Montes-y-Gómez
,
Luis Villaseñor-Pineda
,
Manuel Alberto Pérez-Coutiño
,
J. M. Soriano
,
E. Arnal
,
Paolo Rosso
Conference and Labs of the Evaluation Forum
2005
Corpus ID: 2559221
Recent works on question answering are based on complex natural language processing tech- niques: named entity extractors…
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2003
2003
A SNoW Based Supertagger with Application to NP Chunking
Libin Shen
,
A. Joshi
Annual Meeting of the Association for…
2003
Corpus ID: 14033789
Supertagging is the tagging process of assigning the correct elementary tree of LTAG, or the correct supertag, to each word of an…
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