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Semantic relations between nominals

People make sense of a text by identifying the semantic relations which connect the entities or concepts described by that text. A system which aspires to human-like performance must also be equipped to identify, and learn from, semantic relations in the texts it processes. Understanding even a simp...

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Detalles Bibliográficos
Outros autores: Nastase, Vivi
Formato: eBook
Idioma:English
Publicado: San Rafael, Calif. (1537 Fourth Street, San Rafael, CA 94901 USA) : Morgan & Claypool, c2013.
Series:Synthesis digital library of engineering and computer science.
Synthesis lectures on human language technologies ; # 19.
Subjects:
Acceso en liña:Abstract with links to full text
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024 7 |a 10.2200/S00489ED1V01Y201303HLT019  |2 doi 
035 |a (CaBNVSL)swl00402434 
035 |a (OCoLC)844063325 
040 |a CaBNVSL  |c CaBNVSL  |d CaBNVSL 
050 4 |a P98.5.S45  |b S467 2013 
082 0 4 |a 410.285  |2 23 
245 0 0 |a Semantic relations between nominals  |h [electronic resource] /  |c Vivi Nastase ... [et al.]. 
260 |a San Rafael, Calif. (1537 Fourth Street, San Rafael, CA 94901 USA) :  |b Morgan & Claypool,  |c c2013. 
300 |a 1 electronic text (xii, 107 p.) :  |b ill., digital file. 
490 1 |a Synthesis lectures on human language technologies,  |x 1947-4059 ;  |v # 19 
500 |a Part of: Synthesis digital library of engineering and computer science. 
500 |a Series from website. 
504 |a Includes bibliographical references (p. 85-102) and index. 
505 0 |a 1. Introduction -- 1.1 Motivation -- 1.2 Applications -- 1.3 What this book is about -- 1.4 What this book is not about --  
505 8 |a 2. Relations between nominals, relations between concepts -- 2.1 Historical overview -- 2.2 A menagerie of relation schemata -- 2.2.1 Relations between words, relations within noun compounds -- 2.2.2 Relations in ontologies and knowledge bases -- 2.2.3 A conclusion -- 2.3 Dimensions of variation across relations -- 2.3.1 Properties of relations -- 2.3.2 Properties of relation schemata -- 2.4 Summary --  
505 8 |a 3. Extracting semantic relations with supervision -- 3.1 Data -- 3.1.1 MUC and ACE -- 3.1.2 SemEval-2007/2010 -- 3.1.3 Datasets for relations in noun-noun compounds -- 3.1.4 Relations in manually built ontologies -- 3.1.5 Relations from collaboratively built resources -- 3.1.6 Domain-specific data -- 3.2 Features -- 3.2.1 Entity features -- 3.2.2 Relational features -- 3.3 Learning methods -- 3.3.1 Supervised machine learning -- 3.3.2 Learning algorithms -- 3.3.3 Determining the semantic class of relation arguments -- 3.4 Beyond binary relations -- 3.5 Practical considerations -- 3.6 Summary --  
505 8 |a 4. Extracting semantic relations with little or no supervision -- 4.1 Mining ontologies from machine-readable dictionaries -- 4.2 Mining relations with patterns -- 4.2.1 Bootstrapping relations from large corpora -- 4.2.2 Tackling semantic drift -- 4.3 Distant supervision -- 4.4 Unsupervised relation extraction -- 4.4.1 Extracting IS-A relations -- 4.4.2 Emergent relations in open relation extraction -- 4.4.3 Extreme unsupervised relation extraction -- 4.5 Self-supervised relation extraction -- 4.6 Web-scale relation extraction -- 4.6.1 Never-ending language learner -- 4.6.2 Machine reading at the University of Washington -- 4.7 Summary --  
505 8 |a 5. Conclusion -- Bibliography -- Authors' biographies -- Index. 
506 |a Abstract freely available; full-text restricted to subscribers or individual document purchasers. 
510 0 |a Compendex 
510 0 |a Google book search 
510 0 |a Google scholar 
510 0 |a INSPEC 
520 3 |a People make sense of a text by identifying the semantic relations which connect the entities or concepts described by that text. A system which aspires to human-like performance must also be equipped to identify, and learn from, semantic relations in the texts it processes. Understanding even a simple sentence such as "Opportunity and Curiosity find similar rocks on Mars" requires recognizing relations (rocks are located on Mars, signalled by the word on) and drawing on already known relations (Opportunity and Curiosity are instances of the class of Mars rovers). A language-understanding system should be able to find such relations in documents and progressively build a knowledge base or even an ontology. Resources of this kind assist continuous learning and other advanced language-processing tasks such as text summarization, question answering and machine translation. 
530 |a Also available in print. 
538 |a Mode of access: World Wide Web. 
538 |a System requirements: Adobe Acrobat Reader. 
588 |a Title from PDF t.p. (viewed on May 20, 2013). 
650 0 |a Computational linguistics. 
650 0 |a Grammar, Comparative and general  |x Nominals. 
653 |a computational linguistics 
653 |a information extraction 
653 |a lexical semantics 
653 |a natural language processing 
653 |a nominals 
653 |a noun compounds 
653 |a semantic relations 
700 1 |a Nastase, Vivi. 
776 0 8 |i Print version:  |z 9781608459797 
830 0 |a Synthesis digital library of engineering and computer science. 
830 0 |a Synthesis lectures on human language technologies ;  |v # 19.  |x 1947-4059 
856 4 8 |3 Abstract with links to full text  |u http://dx.doi.org/10.2200/S00489ED1V01Y201303HLT019 
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