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Lori Levin, Teruko Mitamura, Simon Fung

Interlingual Annotation of Multilingual Text Corpora (IAMTC) Project Overview for ITIC November 13, 2003 Carnegie Mellon University. Lori Levin, Teruko Mitamura, Simon Fung. Principal investigators and senior personnel. Bonnie Dorr, University of Maryland

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Lori Levin, Teruko Mitamura, Simon Fung

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  1. Interlingual Annotation of Multilingual Text Corpora (IAMTC)Project Overview for ITICNovember 13, 2003Carnegie Mellon University Lori Levin, Teruko Mitamura, Simon Fung

  2. Principal investigators and senior personnel • Bonnie Dorr, University of Maryland • Nizar Habash, University of Maryland and Columbia • Stephen Helmreich, NMSU • Eduard Hovy, USC • David Farwell, NMSU • Lori Levin, CMU • Keith Miller, MITRE • Teruko Mitamura, CMU • Owen Rambow, Columbia University • Florence Reeder, MITRE

  3. Cooperative Website: Wiki • http://sparky.umiacs.umd.edu:8000/IAMTC/IAMTC.wiki • Corpora • Documents and manuals • Discussion

  4. Goals of IAMTC • A practical interlingua for unrestricted text • Based on mismatch resolution between languages and between multiple English translations • Goal:Feasible human coding • Speed • Inter-coder agreement

  5. Benefits of IAMTC • Usable by many research communities, and by researchers using different approaches, working at different levels: • MT, information extraction, summarization, question-answering, etc. • Corpus-based, rule-based, machine learning-based, statistical approaches, etc. (note: heterogeneous list, not mutually exclusive) • Multiple levels of representation: • Syntactic dependency structure • Language-specific predicate argument structure • Interlingua (with resolution of some mismatches)

  6. Products of IAMTC • A coding manual for the interlingua • A multilingual tagged corpus • 25 original texts in: French, Spanish, Japanese, Korean, Arabic, Hindi • Three English translations of each text • An evaluation metric for the interlingua

  7. Representations • IL0: Language-specific dependency syntax • IL1: Language-specific semantic structurewith: • Labeling of nodes using ontology • Labeling of arcs with semantic role names • IL2: Interlingua

  8. IL2: Interlingua • Neutralize: support verbs; some multi-word expressions and non-literal language; some lexical converses (buy-sell); • some sentence planning differences • “john who is blond likes apples” <-> • “john is blond and likes apples” • conflational mismatches “tape” Verb <-> Japanese “teepu de tomeru” (tape with attach) • head-switching mismatches, etc. “I tend to go to school.” vs. “I usually go to school.”

  9. Examples(from Nizar Habash) • http://www.umiacs.umd.edu/~habash/artb_004.idg.5.IL.1 • The minister, who has his own website, also said: "I want Dubai to be the best place in the world for state -of-the-art technology companies.“ • http://www.umiacs.umd.edu/~habash/artb_004.idg.5.IL.2 • The minister who has a personal website on the internet, further said that he wanted Dubai to become the best place in the world for the advanced (hitech) technological companies.

  10. Example • Original English: • In its first five years of operation, PRODEM financedloansto over 13,300 micorentrepreneurs, 77 per cent of whom were women, disbursingover $27 million inloans averaging $273. • Original French: • Au bout de cinq ans, le programme avait consentiplus de 27 millions de dollars deprêts d'un montant moyen de 273 dollars, à plus de13 300 entrepreneurs, dont 77% de femmes .... • English Translation from French: • At the end of five years, the program had grantedmore than 27 million dollars inloans with an average amount of 273 dollars, to more than 13 300 entrepreneurs, of which 77% were women,....

  11. Example 1 • Original English: • financed • loans • to over 13,300 micorentrepreneurs, • disbursing • over $27 million • in loans • Original French: • consenti • plus de 27 millions de dollars • de prêts • à plus de 13 300 entrepreneurs, • English Translation from French: • granted • more than 27 million dollars • in loans • to more than 13 300 entrepreneurs

  12. Example 2 • Original English: • Its networkofeighteen independent organizations in Latin America has lent ….. • Original French: • le réseauregroupedix-huit organisations indépendantes qui ont déboursé ….. • English Translation from French: • the networkcompriseseighteen independent organizations which have disbursed …..

  13. Example 2 • Original English: • has lent • Its network • ofeighteen independent organizations • ….. • Original French: • regroupe • le réseau • dix-huit organisations indépendantes • ont déboursé …… • English Translation from French: • comprises • the network • eighteen independent organizations • have disbursed ……

  14. Language-faithful interlinguas Original English: financed loans to over 13,300 micorentrepreneurs disbursing over $27 million in loans Original French: consenti plus de 27 millions de dollars de prêts à plus de 13 300 entrepreneurs English Translation from French: granted more than 27 million dollars in loans to more than 13 300 entrepreneurs Merged Interlingua TRANSFER-MONEY over $27 million to over 13,300 micorentrepreneurs SOME-RELATION over $27 million loans Interlingua Merging

  15. Original English: has lent Its network ofeighteen independent organizations Original French: regroupe le réseau dix-huit organisations indépendantes ont déboursé English Translation from French: comprises the network eighteen independent organizations have disbursed Merged Interlingua HAS-AS-PART the network eighteen independent organizations TRANSFER-MONEY the network ….. Interlingua Merging

  16. Example 3 • Original English: • Three of the most advanced institutions in the ACCION network startedtheir programmes as non-profit organizations and have, in the last five years, converted into • Original French: • Trois des institutions les plus performantes rattachees a ACCION International qui etaient au departdes organisations a but nonlucratifsont devenues ces cinq dernieres annees • English Translation from French: • Three of the most successful institutions connected to ACCION International, which werenon-profit organizationsin the beginning, have become, in these last five years,

  17. Example 3 • Original English: • Started • their programmes • Institutions • as non-profit organizations • Converted • Institutions • ….. • Original French: • sont devenues • Institutions • relative-clause: etaient au depart • institutions • …… • English Translation from French: • Have become • Institutions • Relative-clause; Were …in the beginning • institutions • ……

  18. Meetings and Workshops • Meetings: • September, 2003: New Orleans during MT Summit • November 8 and 9, 2003: CMU • January 18 and 19,2004: ISI • Workshops: • September 2003: MT Summit • May 2004: Plan for a panel in the workshop organized by Adam Meyer at NAACL/HLT 2004 • July 2004: Plan to propose ACL workshop

  19. Timeline • November 10 to December 1: • Assembly of ENGLISH tools and knowledge sources • Tools committee: Hovy, Rambow, Miller • Omega ontology, ISI • LCS verb lexicon (connect to Omega via Propbank) • LDA (Lightweight Dependency Analyzer, Srinivas Bangalore) • Graph tool from Prague • New annotation tool (Dependency tree, Omega, Lexicon) • Draft of coding manual for IL1: • Annotation Committee: Rambow, Mitamura, Levin, Dorr, Habash, Helmreich • Ontology symbols– Hovy • IL0 – dependency structure – Rambow • IL1 markup format – Rambow and Habash • Semantic roles – Dorr, Habash, Mitamura, Levin • Nouns and compounds – Mitamura • Adverbs and adjectives– Helmreich • Prepositions – Miller • Named entities – Reeder • Modification vs Predication – Habash • Annotator training Phase 1: • All annotators will tag the same English text • Assembly of corpora: • Data committee: Mitamura, Hovy, Miller, Farwell • Five foreign language original texts in each language • Three English translations of each text

  20. Annotation Procedure (English) • Run LDA parser • Use tree editing tool to convert syntactic dependency parse into IL1 • Correct parsing errors • Choose symbols from the ontology as node labels • For verbs: • look the verb up in the lexicon to get a list of semantic role names • Match phrases to roles

  21. Timeline • December 1 to January 19: • Annotation development cycle: • Procedure committee: Hovy, Farwell, Mitamura • For each week, for each language: • Pick a text and two English translations of the text and one English translation from another site. • Each week: • Conference call on Friday at 1:00 pm Eastern Time • Revise annotation manuals as necessary • Development of inter-coder agreement metric • Evaluation committee: Reeder and Habash, leaders • Proposal for IL2 based on comparison of IL1’s for different translations of the same text

  22. Timeline • January 19-February 23 • Development of foreign language analysis tools • Large inter-coder agreement evaluation (IL1) • Continue working on the IL2 design • March 1: Mid year report • March 1 2004 to September 2004 • Annotation of full corpus: • 25 original texts in each of the six languages (French, Spanish, Hindi, Korean, Arabic, Japanese) • 3 translations of each text into English

  23. Plans for year 2 • Argument taking predicates other than verbs • Additional tools for automatic construction of IL1 and IL2 • More comprehensive set of divergences resolved in IL2 • Additional annotation topics: • Coreference • Scope • Tense and aspect • Etc. • Larger annotated corpus • Suitable for corpus-based methods and machine learning

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