12.1313, Calls: Information Processing, Machine Learning
The LINGUIST Network
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Sat May 12 19:58:49 UTC 2001
LINGUIST List: Vol-12-1313. Sat May 12 2001. ISSN: 1068-4875.
Subject: 12.1313, Calls: Information Processing, Machine Learning
Moderators: Anthony Aristar, Wayne State U.<aristar at linguistlist.org>
Helen Dry, Eastern Michigan U. <hdry at linguistlist.org>
Andrew Carnie, U. of Arizona <carnie at linguistlist.org>
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Terence Langendoen, U. of Arizona
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Lydia Grebenyova, EMU Jody Huellmantel, WSU
James Yuells, WSU Michael Appleby, EMU
Marie Klopfenstein, WSU Ljuba Veselinova, Stockholm U.
Heather Taylor-Loring, EMU
Software: John Remmers, E. Michigan U. <remmers at emunix.emich.edu>
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=================================Directory=================================
1)
Date: Fri, 11 May 2001 16:32:49 EDT
From: Priscilla Rasmussen <rasmusse at cs.rutgers.edu>
Subject: Temporal & Spatial Information Processing (ACL 2001)
2)
Date: Fri, 11 May 2001 16:48:35 EDT
From: Priscilla Rasmussen <rasmusse at cs.rutgers.edu>
Subject: Special Issue of the Journal of Machine Learning Research
-------------------------------- Message 1 -------------------------------
Date: Fri, 11 May 2001 16:32:49 EDT
From: Priscilla Rasmussen <rasmusse at cs.rutgers.edu>
Subject: Temporal & Spatial Information Processing (ACL 2001)
*** CALL FOR PARTICIPATION IN TEMPORAL AND SPATIAL INFORMATION PROCESSING***
An ACL'2001 Workshop to be held in Toulouse, France
July 7, 2001
URL: http://www.irit.fr/ACTIVITES/EQ_ILPL/aclWeb/acl2001.html
REGISTRATION: see
http://www.irit.fr/ACTIVITES/EQ_ILPL/aclWeb/acl2001.html
* Early registration: by May 24 (lower registration fee)
* Late registration: May 25 - June 24
* After June 24th, registration will be on site only
PRELIMINARY PROGRAM
- -----------------
http://epsilon3.georgetown.edu/~discours/spacetime.html
INVITED SPEAKERS
- -------------
Fabio Pianesi, ITC-IRST, Italy
Barbara Tversky, Stanford University, USA
SPONSORS
- ------
MITRE
ACL SIGMEDIA
Automatic Content Extraction (ACE) Program
PROGRAM COMMITTEE
- ---------------
Elisabeth Andre, DFKI, Germany
Myriam Bras, IRIT, France
Rob Gaizauskas, Sheffield, UK
Udo Hahn, Freiburg University, Germany
Eduard Hovy, USC-ISI, USA
G=E9rard Ligozat, LIMSI-CNSRS, France,
Ruslan Mitkov, University of Wolverhampton, UK
Marc Moens, University of Edinburgh, UK
Dragomir Radev, University of Michigan, USA
Ellen Riloff, University of Utah, USA
Laure Vieu, IRIT, France
Clare Voss, US Army Research Lab, USA
Michael White, Cogentex, USA
Janyce Wiebe, University of Pittsburgh, USA
George Wilson, MITRE, USA
Cornelia Zelinsky-Wibbelt, Hannover, Germany
ORGANIZERS
- --------
Lisa Harper, MITRE, USA
Inderjeet Mani, MITRE and Georgetown University, USA
Beth Sundheim, SPAWAR Systems Center, USA
-------------------------------- Message 2 -------------------------------
Date: Fri, 11 May 2001 16:48:35 EDT
From: Priscilla Rasmussen <rasmusse at cs.rutgers.edu>
Subject: Special Issue of the Journal of Machine Learning Research
Call for Papers: Special Issue of the Journal of Machine Learning
Research -- "Machine Learning Approaches to Shallow Parsing"
Editors: James Hammerton james.hammerton at ucd.ie, University College Dublin
Miles Osborne osborne at cogsci.ed.ac.uk, University of Edinburgh
Susan Armstrong susan.armstrong at issco.unige.ch, University of Geneva
Walter Daelemans walter.daelemans at uia.ua.ac.be, University of Antwerp
The Journal of Machine Learning Research invites authors to submit
papers for the Special Issue on Machine Learning approaches to Shallow
Parsing.
Background
- --------
Over the last decade there has been an increased interest in applying
machine learning techniques to corpus-based natural language
processing. In particular many techniques have been applied to shallow
parsing of large corpora, where rather than produce a detailed
syntactic or semantic analysis of each sentence, key parts of the
syntactic structure or key pieces of semantic information are
identified or extracted. For example, such tasks include identifying
the noun phrases in a text, extracting non-overlapping chunks of text
that identify the major phrases in a sentence or extracting the
subject, main verb and object from a sentence.
Applications of shallow parsing include data mining from unstructured
textual material (e.g. web pages, newswires), information extraction,
question answering, automated annotation of linguistic corpora and the
preprocessing of data for linguistic tasks such as machine translation
or full scale parsing.
Shallow parsing of realistic, naturally occuring language poses a number
of challenges for a machine learning system. Firstly, the training set
is usually large which will push batch techniques to the limit. The
training material is often noisy and frequently only partially
determines a model (that is, only some aspects of the target model are
observed). Secondly, shallow parsing requires making large numbers
of decisions which translates as learning large models. The size of
such models usually results in extremely sparse counts, which makes
reliable estimation difficult. In sum, learning how to do shallow
parsing will tax almost any machine learning algorithm and will thus
provide valuable insight into real-world performance.
In a number of workshops and publications, a variety of machine
learning techniques have been applied in this area including memory
based (instance based) learning, inductive logic programming,
probabilistic context free grammars, maximum entropy, transformation
based learning, artificial neural networks and more recently support
vector machines. However there has not been an opportunity to
compare and contrast these techniques in a systematic manner. The
special issue will thus provide a venue for drawing together the relevant
ML techniques.
TOPICS
- ----
The aim of the special issue is to solicit and publish papers that
provide a clear view of the state of the art in machine learning for
shallow parsing. We therefore encourage submissions in the following
areas:
* applications of machine learning techniques to shallow parsing
tasks, including the development of new techniques.
* comparisons of machine learning techniques for shallow parsing
* analyses of the complexity of machine learning for shallow
parsing tasks
To facilitate cross-paper comparison and thus strengthen the special
issue as a whole, authors are encouraged to consider using one of the
following data sets provided via the CoNLL workshops (please note
however that this is not mandatory):
http://lcg-www.uia.ac.be/conll2000/chunking/
or:
http://lcg-www.uia.ac.be/conll2001/clauses/
We emphasise that authors will not be solely judged in terms of raw
performance and this is not to be considered as a competition: insight
into the strengths and weaknesses of a given system is deemed to be
more important.
High quality papers reviewing machine learning for shallow parsing
will also be welcome.
Instructions
- ----------
Articles should be submitted electronically. Postcript or PDF format
are acceptable and submissions should be single column and typeset in
11 pt font format, and include all author contact information on the
first page. See the author instructions at www.jmlr.org for more
details.
To submit a paper send the normal emails asked for by the JMLR in
their author instructions to submissions at jmlr.org (NOT to the editors
directly), indicating in the subject headers that the submission is
intended for the Special Issue on Machine Learning Approaches to
Shallow Parsing.
Key dates
- -------
Submission deadline: 2nd September 2001
Notification of acceptance: 16th November 2001
Final drafts: 3rd February 2002
Further information
- -----------------
Please contact James Hammerton <james.hammerton at ucd.ie> with any queries.
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