Last Fall (2007), I taught an Applications of NLP course to a 50/50 mix of grads and senior undergrads. It was modeled partially after a course that I took from Kevin Knight while a grad student. It was essentially 1/3 on finite state methods for things like NER and tagging, then 1/3 on machine translation, then 1/3 on question answering and summarization. Overall, the course went over fairly well.
I had a significant problem, however, teaching machine translation. Here's the problem.
Students knew all about FSTs because we used them to do all the named-entity stuff in the first third of class. This enabled us to talk about things like IBM model 1 and the HMM model. (There's a technical difficult here, namely dealing with incomplete data, so we talk about EM a little bit.) We discuss, but they don't actually make use of, higher order MT models.
Now, we all know that there's a lot more to MT than model 4 (even limiting oneself to statistical translation techniques). Namely, there are phrase-based models and syntactic models. We had a very brief (one lecture) overview of syntactic models at the end. My beef is with phrase-based models.
The problem is that we've gone though all this prettiness to develop these word-based models, and then I have to teach them grow-diag-final, phrase extraction and phrase scoring. I almost felt embarrassed doing so. The problem is that these things are obviously so heuristic that throwing them on top of this really pretty word-for-word translation model just kills me. And it's not just me: the students were visibly upset by the lack of real modeling behind these techniques.
One option would be just not to teach this stuff. I don't really think that it sheds much light on the translation process. The reason I don't like this solution is because it's nice to be able to say that they will have a handle on a not-too-difficult to understand/implement method for doing real-world MT. Instead, I could just spend that time on syntactic models. The situation there is better (you can talk about the hierarchy of tree transducers, etc.), but not perfect (eg., all the work that goes in to rule extraction is not too dissimilar from all the work that goes into phrase extraction).
I suppose that this is just the defacto problem with a relatively immature field: there hasn't been enough time for us to really tease apart what's actually going on in these models and try to come up with some coherent story. I'd love a story that doesn't involve first doing word alignment and, is, in some sense, integrated.
We Will All Write Like AI
3 hours ago
12 comments:
Hal,
I think you bring up a really good point because I ran into a similar issue when teaching an 'intro to NLP' class last fall to first year graduate students. I have always thought that more recent "state-of-the-art" MT techniques sacrifice model elegance for practicality . However, it is hard to dispute the fact that the newer models do perform "better" translation than the older, more elegant models. I think the idea of scaling up to phrases as units of translation is a step in the right direction but its current execution is an ad-hoc one, nonetheless.
Playing devil's advocate for a minute, I could imagine how this could be beneficial for students. They could learn that theoretically elegant models do not always perform better than quick and dirty approximations. Take the Och et al. (2004) smorgasboard paper, for instance.
Hello,
I am really interested in NLP and AI. I am stuck in a Bank doing a some brain dead coding...
I want to get into NLP really bad.. Would you be kind enough to let me know where I can start? Not necessarly a paying-job... Any starting point.
Ram.
You could teach Marcu and Wong's model or the work that John DeNero is currently doing. They don't beat the heuristics but are a lot more interesting. Then you could mention the heuristics in 5 minutes and lament that the elegant models don't beat them -- which is in itself a very important lesson.
Or, maybe you can figure out a new method so you'll have something to teach next year :)
I second David's motion about teaching Marcu and Wong, as a way of transitioning into phrase-based translation without sacrificing the elegance of the word-based models.
Also, You might consider using Philipp Koehn's draft textbook for a reader.
Actually, I am not sure why I forgot to mention Marcu and Wong's joint phrase-based model. I second that as well :)
Another interesting blog, with discussions about languages is http://www.lingo24.com/blogs/company/
for anyone that wants to visit.
This is annoying -- for some reason Blogger stopped emailing me notifications of comments to posts, so I didn't know people had written!
I am actually using Philipp's book, but it (or at least the version I have) doesn't do Marcu and Wong. THis is actually quite a good suggestion, though!
Thanks a lot, this is really helpful. Really well for me and I’m not going back to the proprietary guys! If You Need More Information Please Visit us :- eTranslate is an international company specialising in the provision of Internationalization and Globalization Solutions.
Hi
As a master student in Saarland university, I'm interested to know how you are teaching NLP to your student. I wanted to compare it with my course. But I have found that your slide is not available for me. Why? In Saarland university every slides in Computational Linguistic is available for everyone without user name and password.
I think it would be good idea to allow other people to see you slides and try to understand your idea about it.
Anyway, thank you for sharing NLP things in your weblog
Saarland computational Linguistic course list and slides
Best
Ali Reza Ebadat
Ali -- What can't you access? The only thing that I think is passworded is Philipp Koehn's SMT book chapters, which I can't make public. Everything else should be accessible by anyone. (Note that there aren't many slides because I don't really like teaching with slides.)
Sorry, it was my mistake because I thought SMT is your slide. I didn't realize that it is from SMT text book.
I'm reading your weblog because it is useful for me and I can find fresh information about NLP.
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