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Better Hypothesis Testing for Statistical Machine Translation: Controlling for Optimizer Instability

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posted on 2011-06-01, 00:00 authored by Jonathan H. Clark, Chris Dyer, Alon LavieAlon Lavie, Noah A. Smith

In statistical machine translation, a researcher seeks to determine whether some innovation (e.g., a new feature, model, or inference algorithm) improves translation quality in comparison to a baseline system. To answer this question, he runs an experiment to evaluate the behavior of the two systems on held-out data. In this paper, we consider how to make such experiments more statistically reliable. We provide a systematic analysis of the effects of optimizer instability—an extraneous variable that is seldom controlled for—on experimental outcomes, and make recommendations for reporting results more accurately

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2011-06-01

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