User:Skh/Application GSoC 2010

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Improving multiword support in Apertium

About me

Name

Sonja Krause-Harder

Contact information

  • E-mail: krauseha@gmail.com
  • IRC: skh on freenode
  • Sourceforge: skh
  • Apertium wiki: Skh

List your skills and give evidence of your qualifications.

I am studying computational linguistics and indo-european studies at the University of Erlangen. I'm in my second year of a three-year undergraduate program. My courses so far include formal languages, data structures and algorithms, morphological analysis (with JSLIM, see http://www.linguistik.uni-erlangen.de/clue/en/research/jslim.html) and linguistics.

Before I started studying I worked 7 years at SuSE Linux / Novell as a linux packager and software developer. I maintained RPM packages related to java development (eclipse, tomcat, jakarta project) as well as the Apache webserver, and I helped programming internally used tools.

During the initial launch of the openSUSE project I was involved in concept discussions and community relations, presenting the project externally on conferences and internally to other departments at Novell, to improve the collaboration between the openSUSE community and SuSE / Novell R&D.

Examples of my work:

  • SWAMP: A workflow management system used internally at SuSE, I was working on the workflow definition language and the core workflow engine.
    http://swamp.sf.net

Language skills

  • native: German, near-native: English
  • some: French, Czech
  • little: Italian, Spanish, Dutch, Icelandic
  • ancient: Sanskrit, Ancient Greek, some Latin

Any non-Summer-of-Code plans for the Summer

Summer term at my university finishes on July 24th, so until then I have some class work to do. Should I be accepted in the program, I will pause the student programming job (20 hours/week) which I've been doing since I started studying, and spend at least these 20 hours/week on my Google Summer of Code project. After July 24th I have no other plans but GSoC.

Motivation

Why is it you are interested in machine translation?

I have been interested in languages for a long time, and I've been already working as a programmer, so my decision to study computational linguistics was a logical conclusion. Machine translation appeals to me because to do it successfully, both current research and real-world engineering methods and consideration of efficiency are necessary.

Also, while there are already translation tools with work well for specific subject areas and languages, there is still pioneer work to be done, especially for languages that don't have that many speakers.

Why is it that you are interested in the Apertium project?

It is one of not too many NLP projects that are completely open source. I really believe in open source, and in my opinion machine translation, as an intellectual achievement of humanity, should be accessible and usable for everyone, not only people who have money to pay for expensive proprietary translation tools. I like the architecture: small unix tools in a chain that do one thing only and can be used differently for different language pairs. There is a considerable variety of languages already in the project, and the project is very alive. I've already received lots of help on IRC and the mailing list and feel that Apertium is a mentoring organization that is willing to help its students, and is interested in good and usable results from its GSoC projects.

Project: Improving multiword support in Apertium

Supported multiword constructs

Missing multiword constructs

I would like to add support for the following kind of multiwords to Apertium:

Type "adj-noun"

type a:

  • complex multiwords which consist of two or more inflected words which agree with each other (adj-noun)
  • complex multiwords which consist of two or more inflected words which do not agree with each other (french passé composé) (gender agreement not possible in generation in 1st and 2nd person and proper nouns!)

Type "verb ... particle"

type b:

  • phrasal / particle verbs that are reordered depending on their position in the sentence, like V2 in icelandic. This also applies to reflexive verbs in czech, where the reflexive particle needs to be in the 2nd position in the sentence: jmenovat se -- jmenuju se Sonja -- Ona se jmenuje Sonja
  • the above also covers some cases of separable words, where nothing else stands between the finite verb and the particle, if the verb is intransitive and there's no additional thing in the sentence (adverbiale ergaenzung o.ae.) ankommen -- ich komme an

type c:

  • phrasal / particle verbs in which something else stands between the finite verb form and the particle -- to make it up
  • separable verbs as a special case of the above, where the particle, in some cases, is written together with the verb -- ankommen -- ich komme an -- ich komme am Bahnhof an / ich komme um sieben Uhr am Bahnhof an

Additional types, not covered unless there's extra time

(type d:

  • any combination of the above
  • ambiguous cases (the man threw off the dog who bites his hand off -> the man threw the dog, who bites his hand off, off. <- nesting, the man threw the dog, who bites his hand, off. <- commas, the man threw the dog biting his hand off. <- no way
  • recognize first and second, recognize third but ignore ambiguity,
  • generate none of these)

The multiword module will be a separate tool that can be run for languages that need it, and be left out of others, at the discretion of the language pair maintainer.

I would like to start with analysing these types of multiwords in the disambiguated data stream, i.e. after apertium-tagger has run. There is the possibility that the POS tagger destroys a multiword by assigning any of its constituent words to a wrong category / part of speech. That I have not found a good example for it does not mean there is none. However, for the sake of simplicity, I would like to start with the disambiguated stream. Also, some constructions can be analysed by the multiword module in different ways. I would like to start with just offering the "best bet", but later add a way to output several possible analyses, and leave it to a later module to decide between them.

Timeline

  • Now: read code, work on any language pair (en-de because I know it, nl-de was suggested on IRC) to get acquainted with the system and the work of a language pair maintainer.
  • Community bonding phase: Define format of the multiword dictionary
  • Week 1: Create new tool (multiword-transfer?), parse dictionary.
  • Week 2: read disambiguated stream with help of existing libraries
  • Week 3: recognize and generate multiwords of type adj-noun
  • Week 4: recognize and generate multiwords of type etre invitee
  • Deliverable #1: working binary that can analyse and generate multiwords of type A
  • Week 5 and 6: recognize and generate multiwords of type koma fra and jmenovat se
  • Week 7 and 8: recognize and generate particle verbs and separable verbs with single words between their parts
  • Deliverable #2: working binary that can analyse reordering and separating multiwords
  • Week 9: recognize particle verbs with arbitrarily long passages between verb and particle
  • Week 10: generate these sentences
  • Week 11: work on corner cases, nested expressions and ambiguous cases
  • Week 12: final clean-up and release preparation
  • Project completed: analyse multiwords of type a, b, c, generate sentences with multiwords of type a, b, and simplified c

Reasons why Google and Apertium should sponsor it

Enhanced multiword support will make Apertium usable for more languages. As it is now, some of the multiword constructs can only be implemented with workarounds in the dictionary, and some, like separable verbs, not at all. Having support or these will improve the translation quality for many languages. Also, a logical and documented way to describe these multiwords and handle them in the engine will make the work of language-pair maintainers easier. This will lead to more languages pairs and increase the scope and impact of the Apertium project.

A description of how and who it will benefit in society

The variety of languages currently spoken is an important part of cultural diversity. But still, people need to communicate, and have access to written information that is only available in some languages -- textbooks, manuals, news. Usable, open source machine translation for a broad range of languages will be a real help in people's lives.