Topic Models for Dynamic Translation Model Adaptation
Title | Topic Models for Dynamic Translation Model Adaptation |
Publication Type | Journal Articles |
Year of Publication | 2012 |
Authors | Eidelman V, Boyd-Graber J, Resnik P |
Journal | Association for Computational Linguistics |
Date Published | 2012/// |
Abstract | We propose an approach that biases machine translation systems toward relevant transla- tions based on topic-specific contexts, where topics are induced in an unsupervised way using topic models; this can be thought of as inducing subcorpora for adaptation with- out any human annotation. We use these topic distributions to compute topic-dependent lex- ical weighting probabilities and directly in- corporate them into our translation model as features. Conditioning lexical probabilities on the topic biases translations toward topic- relevant output, resulting in significant im- provements of up to 1 BLEU and 3 TER on Chinese to English translation over a strong baseline. |