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From Baby Steps to Leapfrog: How “Less is More” in Unsupervised Dependency Parsing
Talk by Martin Majliš
Report by Oldřich Krůza
Introduction
On Monday, October 24th 2011, we heard a talk about a paper by Valentin
Spitkovsky, Hiyan Alshawi and Daniel Jurafsky on enhancing unsupervised language
parsers. The paper itself focuses on improving the state of the art in
unsupervised parsing, and reports a success in a rate of percents, which
certainly makes it a paper worth notice.
Notes
Most of the attendants apparently understood the talk and the paper well, and a
lively discussion followed. One of our first topics of debate was the notion of
skyline presented in the paper. The skyline was somewhat of a supervised element
– the authors estimated initial parameters for a model from gold data and
trained it afterwards. They assumed that a model with parameters estimated from
gold data cannot be beaten by an unsupervisedly trained model. Verily, after
training the skyline model, its accuracy dropped very significantly. The reasons
of this were a point of surprise for us as well as for the paper's authors.
Complementary to the skyline, the authors presented a baseline which should
definitely be beaten by their final model. This baseline, they called
“uninformed”, but were vague about which exact probability distribution they
used in this model. We could only speculate it was a uniform or random
probability distribution.
A point about unsupervised language modeling came out: Many linguistic phenomena
are annotated in a way that is to some extent arbitrary, and reflects more the
linguistic theory used than the language itself, and an unsupervised model
cannot hope to get them right. The example we discussed was whether the word
“should” is governing the verb it's bound with, or vice versa. The authors
noticed that dependency orientation in general was not a particularly strong
point of their parser, and so they also included an evaluation metric that
ignored the dependency orientations.
Perhaps the most crucial observations the authors made was that there is a limit
where feeding more data to the model training hurts its accuracy. They
progressed from short sentences to longer, and identified the threshold, where
it's best to start ignoring any more training data, at sentences of length 15.
However, it seems they used evaluation on gold data to find out this threshold.
If the model was to be fully unsupervised, it remains a question, how to setup
this threshold, because it cannot be safely assumed that it would be the same
for all languages and setups.
The writing style of the paper was also a matter of differing opinions.
Undeniably, it is written in a vocabulary-intensive fashion, bringing readers
face to face with words like “unbridled” or “jettison”, which I personally had
never seen before.
Conclusion
All in all, it was a paper worth reading, well presented, and thoroughly
discussed, bringing useful general ideas as well as interesting details.