首页> 外文会议>Annual meeting of the Association for Computational Linguistics;ACL 2011 >Rule Markov Models for Fast Tree-to-String Translation
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Rule Markov Models for Fast Tree-to-String Translation

机译:快速树到字符串转换的规则马尔可夫模型

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Most statistical machine translation systems rely on composed rules (rules that can be formed out of smaller rules in the grammar). Though this practice improves translation by weakening independence assumptions in the translation model, it nevertheless results in huge, redundant grammars, making both training and decoding inefficient. Here, we take the opposite approach, where we only use minimal rules (those that cannot be formed out of other rules), and instead rely on a rule Markov model of the derivation history to capture dependencies between minimal rules. Large-scale experiments on a state-of-the-art tree-to-string translation system show that our approach leads to a slimmer model, a faster decoder, yet the same translation quality (measured using B ) as composed rules.
机译:大多数统计机器翻译系统都依赖组合规则(可以由语法中较小的规则形成的规则)。尽管这种做法通过削弱翻译模型中的独立性假设来改善翻译,但仍会导致庞大的冗余语法,使训练和解码效率均低下。在这里,我们采用相反的方法,其中我们只使用最小规则(那些不能由其他规则形成的规则),而是依赖于派生历史的规则马尔可夫模型来捕获最小规则之间的依赖关系。在最新的树到字符串转换系统上的大规模实验表明,我们的方法导致了更苗条的模型,更快的解码器,但转换质量(使用B衡量)与组合规则相同。

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