LINGUIST List 20.725
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Sat Mar 07 2009
Calls: Lexicography/Italy; Computational Ling/USA
Editor for this issue: Kate Wu
<kate linguistlist.org>
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Directory
1. Cinzia
Citraro,
Il Lessico come Strumento per Organizzare gli Etnosaper
2. Katrin
Tomanek,
NAACL HLT 2009 Workshop on Active Learning for NLP
Message 1: Il Lessico come Strumento per Organizzare gli Etnosaper
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Date: 06-Mar-2009
From: Cinzia Citraro <cinzia.citraro libero.it>
Subject: Il Lessico come Strumento per Organizzare gli Etnosaper
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Full Title: Il Lessico come Strumento per Organizzare gli Etnosaper Date: 02-Jul-2009 - 04-Jul-2009 Location: Unical, Arcavacata di Rende (CS), Italy Contact Person: John B. Trumper Marta Maddalon Meeting Email: clt unical.it Web Site: http://clt.unical.it Linguistic Field(s): Lexicography; Semantics Call Deadline: 30-Apr-2009 Meeting Description: Il Lessico come Strumento per Organizzare gli Etnosaper Call for Papers All interested & who wish either to give a paper or attend are invited to forward an abstract of no more than 500 words within 30/04/2009 with title, author's affiliation, type of presentation (paper, poster or lexical note), format *.doc, *.rtf, *.pdf. via the Conference website http://clt.unical.it. The acts will be published. The Conference organised by the CLT has as its theme the lexicon as an instrument that is central to the organization & transmission of folk knowledge.The organization of homogeneous sectors of the lexicon, lexical learning, complex relationships between lexemes over time (long-term etymologies), space & social divisisms. Central themes are: 1) general lexicals problems, collection, collation & representation of such data; 2) sectorial lexicon (marginal or peripheral areas); 3) relationship between language & culture (folk knowledge in particular). Special theme: Padula, the 19th century & Calabrian lexicon (dialectal).
Message 2: NAACL HLT 2009 Workshop on Active Learning for NLP
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Date: 06-Mar-2009
From: Katrin Tomanek <katrin.tomanek uni-jena.de>
Subject: NAACL HLT 2009 Workshop on Active Learning for NLP
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Full Title: NAACL HLT 2009 Workshop on Active Learning for NLP Short Title: ALNLP Date: 05-Jun-2009 - 05-Jun-2009 Location: Boulder, Colorado, USA Contact Person: Eric Ringger Meeting Email: ringger cs.byu.edu Web Site: http://nlp.cs.byu.edu/alnlp/ Linguistic Field(s): Computational Linguistics Call Deadline: 10-Mar-2009 Meeting Description: NAACL HLT 2009 Workshop on Active Learning for Natural Language Processing June 5, 2009, Boulder, Colorado, USA http://nlp.cs.byu.edu/alnlp/ Call for Papers The Workshop on Active Learning for Natural Language Processing will explore the challenges and promise of active learning for NLP tasks, including classification, sequence labeling, parsing, semantics, and other more complex tasks. Both theoretical and applied research is welcome. Submission Deadline: extended to March 10, 2009 Endorsed by the following ACL Special Interest Groups: - Special Interest Group on Natural Language Learning (SIGNLL) - Special Interest Group for Annotation (SIGANN) Motivation Labeled data is a prerequisite for many popular algorithms in natural language processing and machine learning. While it is possible to obtain large amounts of annotated data for well-studied languages in well-studied domains and well-studied problems, labeled data are rarely available for less common languages, domains, or problems. Unfortunately, obtaining human annotations for linguistic data is labor-intensive and typically the costliest part of the acquisition of an annotated corpus. It has been shown before that active learning can be employed to reduce annotation costs but not at the expense of quality. While diverse work over the past decade has demonstrated the possible advantages of active learning for corpus annotation and NLP applications, active learning is not widely used in many ongoing data annotation tasks. Much of the machine learning literature on the topic has focused on active learning for classification problems with less attention devoted to the kinds of problems encountered in NLP. Topics We are interested in bringing together researchers to explore the challenges and opportunities of active learning for NLP tasks, language acquisition, and language learning. General work on active learning on NLP classification tasks, sequence labeling, parsing, semantics, and other more complex tasks will be welcome in the workshop. More specific topics of interest include, but are not limited to: - theoretical analysis of active learning in the context of NLP applications - novel active learning approaches to estimate the training utility of individual selection units - cost-sensitive active learning approaches incorporating data acquisition costs - approaches to model or predict annotation costs as well as studies on factors that influence annotation time - criteria for stopping or monitoring progress of active learning - overfitting of data acquired with active learning: how much is the data biased towards the learning scheme involved in the selection and what are the limitations of re-use with other learning schemes - Human-Computer Interaction aspects of annotation including requirements, impact of interface design on annotation time, and methods to deal with reliability of annotators - approaches to multi-task active learning - approaches to deal with or reduce computational complexity of active learning approaches including parallelization, issues of pool- or batch-size, varying degrees of look-ahead, etc. - active learning and domain adaption - active learning compared to or combined with other semi-supervised or even unsupervised learning approaches - application of active learning in real annotation projects and experiences gained thereby Submissions We invite submissions of two kinds: 1. original and unpublished work as full papers, limited to 8 pages of text (up to one extra page may be used for references); 2. position papers or papers describing ongoing work as short papers, limited to 4 pages in total (including references). Both kinds of papers will appear in the proceedings and will be presented orally. As reviewing will be double-blind, author information should not be included in the papers and self-reference should be avoided. All submissions must be made in PDF format using the START paper submission website: https://www.softconf.com/naacl-hlt09/ActiveLearningNLP2009/ Submissions must follow the NAACL HLT 2009 formatting requirements: http://clear.colorado.edu/NAACLHLT2009/stylefiles.html Authors are strongly encouraged to use the LaTeX or Microsoft Word style files available there. Papers not conforming to these requirements are subject to rejection without review. Important Dates Extended to March 10, 2009 (23:59 GMT-12): Submission Deadline March 30, 2009: Notification of acceptance April 12, 2009: Camera-ready copies due June 5, 2009: Workshop held in conjunctions with NAACL HLT Organizers and Contact - Eric Ringger, Brigham Young University, USA - Robbie Haertel, Brigham Young University, USA - Katrin Tomanek, University of Jena, Germany Please address any queries regarding the workshop to: al.nlp2009 googlemail.com Program Committee - Shlomo Argamon (Illinois Institute of Technology, USA) - Jason Baldridge (University of Texas at Austin, USA) - Markus Becker (SPSS, UK) - Ken Church (Microsoft Research, USA) - Hal Daume (University of Utah, USA) - Robbie Haertel (Brigham Young University, USA) - Ben Hachey (University of Edinburgh, UK) - Udo Hahn (University of Jena, Germany) - Eric Horvitz (Microsoft Research, USA) - Rebecca Hwa (University of Pittsburgh, USA) - Ashish Kapoor (Microsoft Research, USA) - Mark Liberman (University of Pennsylvania/LDC, USA) - Prem Melville (IBM T.J. Watson Research Center, USA) - Ray Mooney (University of Texas at Austin, USA) - Miles Osborne (University of Edinburgh, UK) - Eric Ringger (Brigham Young University, USA) - Kevin Seppi (Brigham Young University, USA) - Burr Settles (University of Wisconsin, USA) - Victor Sheng (New York University, USA) - Katrin Tomanek (University of Jena, Germany) - Jingbo Zhu (Northeastern University, China)
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