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Author, Editor

Author(s):

Metzger, Steffen
Stoll, Michael
Hose, Katja
Schenkel, Ralf

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Not MPG Author(s):

Stoll, Michael

Editor(s):

Chen, Xue-Wen
Lebanon, Guy
Wang, Haixun
Zaki, Mohammed J.

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dblp
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Not MPII Editor(s):

Chen, Xue-Wen
Lebanon, Guy
Wang, Haixun
Zaki, Mohammed J.

BibTeX cite key*:

MetzgerSHS_CIKM2012

Title, Booktitle

Title*:

LUKe and MIKe: Learning from User Knowledge and Managing Interactive Knowledge Extraction


de0434-metzger.pdf (355.71 KB)

Booktitle*:

CIKM'12 : The Proceedings of the 21st ACM International Conference on
Information and Knowledge Management

Event, URLs

URL of the conference:


URL for downloading the paper:

http://doi.acm.org/10.1145/2396761.2398721

Event Address*:

Maui, USA

Language:

English

Event Date*
(no longer used):


Organization:


Event Start Date:

29 October 2012

Event End Date:

2 November 2012

Publisher

Name*:

ACM

URL:


Address*:

New York, NY

Type:


Vol, No, Year, pp.

Series:


Volume:


Number:


Month:


Pages:

2671-2673

Year*:

2012

VG Wort Pages:


ISBN/ISSN:

978-1-4503-1156-4

Sequence Number:


DOI:

10.1145/2396761.2398721



Note, Abstract, ©


(LaTeX) Abstract:

Semantic recognition and annotation of unqiue enities and their relations is a key in understanding the essence contained in large text corpora. It typically requires a combination of efficient automatic methods and manual verification. Usually, both parts are seen as consecutive steps. In this demo we present MIKE, a user interface enabling the integration of user feedback into an iterative extraction process. We show how an extraction system can directly learn from such integrated user supervision. In general, this setup allows for stepwise training of the extraction system to a particular domain, while using user feedback early in the iterative extraction process improves extraction quality and reduces the overall human effort needed.



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Access Level:

Public

Correlation

MPG Unit:

Max-Planck-Institut für Informatik



MPG Subunit:

Databases and Information Systems Group

Appearance:

MPII WWW Server, MPII FTP Server, MPG publications list, university publications list, working group publication list, Fachbeirat, VG Wort



BibTeX Entry:

@INPROCEEDINGS{MetzgerSHS_CIKM2012,
AUTHOR = {Metzger, Steffen and Stoll, Michael and Hose, Katja and Schenkel, Ralf},
EDITOR = {Chen, Xue-Wen and Lebanon, Guy and Wang, Haixun and Zaki, Mohammed J.},
TITLE = {{LUKe} and {MIKe}: Learning from User Knowledge and Managing Interactive Knowledge Extraction},
BOOKTITLE = {CIKM'12 : The Proceedings of the 21st ACM International Conference on
Information and Knowledge Management},
PUBLISHER = {ACM},
YEAR = {2012},
PAGES = {2671--2673},
ADDRESS = {Maui, USA},
ISBN = {978-1-4503-1156-4},
DOI = {10.1145/2396761.2398721},
}


Entry last modified by Anja Becker, 03/12/2013
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Editor(s)
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Created
08/06/2012 11:10:11 AM
Revisions
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Editor(s)
Anja Becker
Klaus Berberich
Anja Becker
Anja Becker
Anja Becker
Edit Dates
12.03.2013 09:50:24
02/28/2013 11:40:47 AM
25.02.2013 10:43:59
25.02.2013 10:42:21
25.02.2013 10:42:14
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