User:Rafi kamal/Application
Contents
Contact Information
Name: Rafi Kamal
Email: rafikamal93@yahoo.com
IRC nick at #apertium: rafi
GitHub: github.com/rafi-kamal
SourceForge username: rafikamal93
Why are you interested in machine translation?
I'm from Bangladesh and Bangla is my native language. But I have to use English for a lot of purposes. For example, the medium of education in my university is English. So as a general user, I've felt the need of a good machine translation system numerous times.
I've created an open source English-Bangla dictionary. I've tried to enrich its database by adding words from an existing source, as well as integrated an machine translation system into it. But unfortunately, the existing machine translation systems (Google translate or Bing translate) are not free. So as a developer, I always feel the need of an open-source machine translation system.
And lastly, I'm planning to do research on natural language processing in Bangla to develop a Bangla search engine. I hope working experience in an existing machine translation system will help in my research.
Why is it that you are interested in the Apertium project?
Apertium is open source, that's the main reason of my interest. I've worked on open source projects before and I really like the experience. Another reason is, there has already been a lot of work done in Bangla-English translation in Apertium, and I have the opportunity to improve it.
Which of the published tasks are you interested in? What do you plan to do?
I'm interested on the project 'Adopt an unreleased language pair'. I want to work with Bangla-English language pair. Some work has already been done in this pair, focusing mainly on English to Bangla translation. I'll focus on Bangla to English translation in my project.
I plan to do the following in the project:
1. Expanding dictionaries
Currently the Bangla monodix has an 80% coverage of the Bangla wiki. My goal is to achieve about 90% coverage.
Currently there are 8230 entries in the Bangla monodix (3594 nouns, 1766 proper nouns, 1620 adjectives, 473 adverbs and 777 other lemmas). I've already collected a list of 35000 bangla words which is sorted according to their frequency from the developer of Ridmik Keyboard (A popular Bangla keyboard for Android). I plan to update the dictionary with ~3000 most frequently used words which is not currently in the dictionary.
The English monodix of this project was taken from the en-es language pair. Currently it has 7446 entries (3444 nouns, 1686 proper nouns, 1384 adjectives, 1243 other lemmas). I plan to update the English monodix with new entries of en-es pair.
Currently the bn-en bidix contains 7446 entries (444 nouns, 1686 proper nouns, 1384 adjectives, 1243 other lemmas). There is an open source English-Bangla dictionary from Ankur.org which contains about 17000 bn-en pair. I'll use this dictionary to enrich the bn-en bidix.
2. Handling Bangla Enclitic
Morphological analyzer can't analyze some enclitics (For example, 'টি'). I've to add appropriate paradigm definitions to solve this problem.
3. Disambiguation
I'll write lexical selection rules for disambiguation of bidix output. These rules will be used by Apertium's lexical selection module.
4. Adding transfer rules
Bangla and English are not closely related languages. So transfer rules play an important role to produce meaningful translation. The transfer system has been identified as the weakest part of the current system. So I've to work a lot to improve this part.
I've already identified some problem with negative form of verbs and modal auxiliaries. For example,
আমি কাজ করি
> I work
আমি কাজ করি না
> I work not (Should be: I don't work)
কাজটি করা উচিত
> work doing @উচিত (Should be: The work should be done)
To identify other problems, first I'll translate several corpora using the translator. Then I'll post-edit these, and identify which rules I need to add or which rules I need to modify.
Why Google and Apertium should sponsor it?
Bangla is the 7th most spoken language in the world, with about 220 million native users and 250 million total speakers (source: Wikipedia). But unfortunately there is no open source machine translation system, except the Apertium's one. If I can bring this language pair to release quality, it can help millions of people.
Work Plan
Community Bonding Period
- Take a deeper look at the Apertium pipeline
- Reading the wiki pages in detail, editing them and creating new wiki pages if necessary
- Prepare corpora which will be used to in the coding period
Week 1
- Add about 1200 nouns and 300 proper nouns in Bangla monodix
- Update English monodix using English-Spanish language pair
Week 2
- Add about 800 verbs, 300 adjectives, 250 adverbs and 150 other types of words in the Bangla monodix
Deliverable (Week 1-2): Updated Bangla and English monodix, where Bangla monodix would have a 90% wiki coverage
NB: Exact analysis on how many words should be added to the dictionary will be done in community bonding period
Week 3-4
- Update English-Bangla bidix to include the updated words from both Bangla and English monodix (Approximately 3000 new entry, containing words from both open and closed class)
Deliverable (Week 3-4): Updated English-Bangla bidix
Week 5
- Updating morphological analyzer to handle Bangla enclitic
Deliverable (Week 5): Updated morphological analyzer which can handle enclitics
Week 6
- Post-edit 2-3 corpora prepared during the community bonding period
- Analyze the corpora with their machine translated counterparts, calculate WER (Word Error Rate)
- Identify the areas with improvement opportunity
Week 7-8
- Writing lexical selection rules for disambiguation
- Writing tag definitions for PoS tagger, if necessary
Deliverable (Week 6-8): A rules.xml file containing the lexical selection rules, and a .tsx file containing the tag definitions
Week 9
- Writing transfer rules for translating negative form of verbs properly
- Writing transfer rules for modal auxiliaries
Week 10
- Adding transfer rules for interrogative sentences
- Adding transfer rules for imperative and exclamatory sentences
Week 11
- Adding transfer rules for complex and compound sentences
- Adding other transfer rules based on the post-edit analysis of the corpora
Deliverable (Week 9-11): Three updated transfer rule files
Week 12
- Running testvoc, creating and running regression tests
Week 13
- Evaluation, writing wiki pages
Deliverable (Week 12-13): Final project
Skills and Expertise
Academic
Currently I'm a 3rd year student of Computer Science & Engineering department at Bangladesh University of Engineering & Technology. At university I've taken courses on Discrete Math, Data Structure, Algorithm, Automata Theory and Compiler. Besides, I've taken a Machine Learning course provided by Coursera and successfully completed it.
Language
I'm a native speaker of Bangla. English is my second language. It's also the medium of my current study. I've studied Bangla grammar and English grammar in high school and college.
Programming
I know C++, Python and Java. Besides, I'm familiar with various Unix tools like sed, awk, grep. I regularly take part in competitive programming competitions. Here is my Codeforces profile.
Open-source Involvement
I've been involved in open source projects for a long time. Here are some of the open source projects I've worked on:
Ridmik Dictionary: It's an open source English-Bangla dictionary for Android, currently one of the most popular Bangla dictionaries for Android. I developed this when I was in 2nd year.
Mothur: The Mothur project seeks to develop a single piece of open-source, expandable software to fill the bioinformatics needs of the microbial ecology community. I've worked in this project to implement confusion matrix.
ACM-solutions: It's a collection of detailed analyses and solutions of problems taken from different online judges.
Coding Challange
As part of the coding challenge suggested by Francis, I've done the following:
- Installed Apertium and bn-en language pair from SVN
- Translated four 500 page articles from Bangla to English using Apertium
- Postedited these four articles to create reference translation
- Used
apertium-eval-translator
to calculate word error rate (WER) and position independent word error rate (PWER) of existing translation
Here is the evaluation result of existing bn-en translation:
Article Number | WER | PWER |
---|---|---|
1 | 94.35 % | 89.01 % |
2 | 93.39 % | 85.89 % |
3 | 94.54 % | 87.68 % |
4 | 89.15 % | 81.85 % |
Translated articles can be found here.
After adding new words and transfer rules, here is the updated evaluation table:
Article Number | WER | PWER |
---|---|---|
1 | 89.40 % | 71.52 % |
2 | 94.24 % | 76.07 % |
3 | 93.16 % | 75.58 % |
4 | 85.58 % | 67.23 % |
Article 1 and 4 are the development articles, and article 2 and 3 are held out articles.