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The code uses two mechanisms for generating random numbers: srand()/rand(), which is not thread-safe, and srandom()/random(), which is POSIX-specific. Here I add a util/random.cc module that centralizes these calls, and unifies some common usage patterns. If the implementation is not good enough, we can now change it in a single place. To keep things simple, this uses the portable srand()/rand() but protects them with a lock to avoid concurrency problems. The hard part was to keep the regression tests passing: they rely on fixed sequences of random numbers, so a small code change could break them very thoroughly. Util::rand(), for wide types like size_t, calls std::rand() not once but twice. This behaviour was generalized into utils::wide_rand() and friends.
22 lines
933 B
Plaintext
22 lines
933 B
Plaintext
- check that mert-moses.pl emits devset score after every iteration
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- correctly for whichever metric we are optimizing
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- even when using --pairwise-ranked (PRO)
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- this may make use of 'evaluator', soon to be added by Matous Machacek
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- check that --pairwise-ranked is compatible with all optimization metrics
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- Use better random generators in util/random.cc, e.g. boost::mt19937.
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- Support plugging of custom random generators.
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Pros:
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- In MERT, you might want to use the random restarting technique to avoid
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local optima.
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- PRO uses a sampling technique to choose candidate translation pairs
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from N-best lists, which means the choice of random generators seems to
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be important.
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Cons:
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- This change will require us to re-create the truth results for regression
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testing related to MERT and PRO because the new random generator will
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generate different numbers from the current generator does.
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