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NEALT Proceedings

Vol. 2

Proceedings of the Second Workshop on Anaphora Resolution

(WAR II)

August 29-31, 2008 Bergen, Norway

Editor

Christer Johansson

Northern European Association for Language Technology

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ISSN 1736-6305

Proceedings of the Second Workshop on Anaphora Resolution

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NEALT PROCEEDINGS SERIES, VOL. 2

© 2008 The editors and contributors.

ISSN 1736-6305

Printed in Tartu (Estonia) Published by

NORTHERN EUROPEAN ASSOCIATION FOR LANGUAGE TECHNOLOY (NEALT)

http://omilia.uio.no/nealt Electronically published at

Tartu University Library (Estonia) http://hdl.handle.net/10062/7129

Volume Editor Christer Johansson Series Editor-in-Chief Mare Koit

Series Editorial Board Lars Ahrenberg Koenraad De Smedt Kristiina Jokinen Joakim Nivre Patrizia Paggio Vytautas Rudžionis

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