Information extraction; Text analytics
Definition
Information extraction (IE) is the process of automatically extracting structured pieces of information from unstructured or semi-structured text documents. Classical problems in information extraction include named-entity recognition (identifying mentions of persons, places, organizations, etc.) and relationship extraction (identifying mentions of relationships between such named entities). Web information extraction is the application of IE techniques to process the vast amounts of unstructured content on the Web. Due to the nature of the content on the Web, in addition to named-entity and relationship extraction, there is growing interest in more complex tasks such as extraction of reviews, opinions, and sentiments.
Historical Background
Historically, information extraction was studied by the Natural Language Processing community in the context of identifying organizations, locations, and person names in news...
Recommended Reading
Akbik A, Konomi O, Melnikov M. Propminer: a workflow for interactive information extraction and exploration using dependency trees. In:ACL (conference system demonstrations). 2013.
Appelt DE, Onyshkevych B. The common pattern specification language. In: TIPSTER. 1998.
Atasu K, Polig R, Hagleitner C, Reiss FR. Hardware-accelerated regular expression matching for high-throughput text analytics. In: FPL. IEEE; 2013. p. 1–7.
Boguraev B. Annotation-based finite state processing in a large-scale NLP architecture. In: RANLP. 2003.
Bohannon P, Merugu S, Yu C, Agarwal V, DeRose P, Iyer AS, Jain A, Kakade V, Muralidharan M, Ramakrishnan R, Shen W. Purple sox extraction management system.: SIGMOD Rec. 2008;37(4):21–27.
Brauer F, Rieger R, Mocan A, Barczynski WM. Enabling information extraction by inference of regular expressions from sample entities. In: CIKM. 2011.
Burdick D, Hernández M, Ho H, Koutrika G, Krishnamurthy R, Popa L, Stanoi IR, Vaithyanathan S, Das S. Extracting, linking and integrating data from public sources: a financial case study.: IEEE Data Eng Bull. 2011;34(3):60–67.
Cafarella MJ, Etzion O. A search engine for natural language applications. In: WWW. 2005.
Chiticariu L, Krishnamurthy R, Li Y, Raghavan S, Reiss F, Vaithyanathan S. Systemt: an algebraic approach to declarative information extraction. In: ACL. 2010.
Chiticariu L, Krishnamurthy R, Li Y, Reiss F, Vaithyanathan S. Domain adaptation of rule-based annotators for named-entity recognition tasks. In: EMNLP. 2010.
Chiticariu L, Li Y, Reiss FR. Rule-based information extraction is dead! long live rule-based information extraction systems! In: EMNLP. 2013.
Cohen W, McCallum A. Information extraction from the world wide web. In: KDD. 2003.
Cunningham H. Information extraction, automatic. In: Encyclopedia of language and linguistics. 2nd ed. 2005.
Doan A, Ramakrishnan R, Vaithyanathan S. Managing information extraction: state of the art and research directions. In: SIGMOD. 2006.
Grishman R, Sundheim B. Message understanding conference-6: a brief history. In: COLING. 1996.
Huang J, Chen T, Doan A, Naughton JF. On the provenance of non-answers to queries over extracted data. vol. 1. 2008.
Lafferty J, McCallum A, Pereira F. Conditional random fields: probabilistic models for segmenting and labeling sequence data. In: ICML. 2001.
Li Y, Chu V, Blohm S, Zhu H, Ho H. Facilitating pattern discovery for relation extraction with semantic-signature-based clustering. In: CIKM. 2011.
Li Y, Krishnamurthy R, Raghavan S, Vaithyanathan S, Jagadish HV. Regular expression learning for information extraction. In: EMNLP. 2008.
Li Y, Krishnamurthy R, Vaithyanathan S, Jagadish H. Getting work done on the web: supporting transactional queries. In: SIGIR. 2006.
Liu B, Chiticariu L, Chu V, Jagadish HV, Reiss F. Automatic rule refinement for information extraction.: PVLDB. 2010;3(1):588–97.
Nagesh A, Ramakrishnan G, Chiticariu L, Krishnamurthy R, Dharkar A, Bhattacharyya P. Towards efficient named-entity rule induction for customizability. In: EMNLP-CoNLL. 2012.
Reiss F, Raghavan S, Krishnamurthy R, Zhu H, Vaithyanathan S. An algebraic approach to rule-based information extraction. In: ICDE. 2008.
Riloff E. Automatically constructing a dictionary for information extraction tasks. In: AAAI. 1993.
Roy S, Chiticariu L, Feldman V, Reiss F, Zhu H. Provenance-based dictionary refinement in information extraction. In: SIGMOD. 2013.
Sarma AD, Jain A, Bohannon P. Building a generic debugger for information extraction pipelines. In: CIKM. 2011.
Sarma AD, Jain A, Srivastava D. I4e: interactive investigation of iterative information extraction. In: SIGMOD. 2010.
Shen W, Doan A, Naughton J, Ramakrishnan R. Declarative information extraction using datalog with embedded extraction predicates. In: VLDB. 2007.
Wandelt S, Deng D, Gerdjikov S, Mishra S, Mitankin P, Patil M, Siragusa E, Tiskin A, Wang W, Wang J, Leser U. State-of-the-art in string similarity search and join. SIGMOD Rec. 2014;43(1):64–76.
Wang DZ, Wei L, Li Y, Reiss F, Vaithyanathan S. Selectivity estimation for extraction operators over text data. In: ICDE. 2011.
Zhang C, Baldwin T, Ho H, Kimelfeld B, Li Y. Adaptive parser-centric text normalization. In: ACL (1). 2013. p. 1159–68.
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Section Editor information
Rights and permissions
Copyright information
© 2016 Springer Science+Business Media LLC
About this entry
Cite this entry
Chiticariu, L. et al. (2016). Web Information Extraction. In: Liu, L., Özsu, M. (eds) Encyclopedia of Database Systems. Springer, New York, NY. https://doi.org/10.1007/978-1-4899-7993-3_459-2
Download citation
DOI: https://doi.org/10.1007/978-1-4899-7993-3_459-2
Received:
Accepted:
Published:
Publisher Name: Springer, New York, NY
Online ISBN: 978-1-4899-7993-3
eBook Packages: Springer Reference Computer SciencesReference Module Computer Science and Engineering