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Learning finite-state models for machine translation

机译:学习机器翻译的有限状态模型

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摘要

In formal language theory, finite-state transducers are well-know models for simple "input-output" mappings between two languages. Even if more powerful, recursive models can be used to account for more complex mappings, it has been argued that the input-output relations underlying most usual natural language pairs can essentially be modeled by finite-state devices. Moreover, the relative simplicity of these mappings has recently led to the development of techniques for learning finite-state transducers from a training set of input-output sentence pairs of the languages considered. In the last years, these techniques have lead to the development of a number of machine translation systems. Under the statistical statement of machine translation, we overview here how modeling, learning and search problems can be solved by using stochastic finite-state transducers. We also review the results achieved by the systems we have developed under this paradigm. As a main conclusion of this review we argue that, as task complexity and training data scarcity increase, those systems which rely more on statistical techniques tend produce the best results.
机译:在形式语言理论中,有限状态换能器是众所周知的模型,用于两种语言之间的简单“输入-输出”映射。即使可以使用更强大的递归模型来说明更复杂的映射,也已经有人指出,最常见的自然语言对所基于的输入输出关系实质上可以由有限状态设备建模。而且,这些映射的相对简单性最近导致了用于从所考虑的语言的输入-输出句子对的训练集中学习有限状态换能器的技术的发展。在过去的几年中,这些技术导致了许多机器翻译系统的发展。在机器翻译的统计声明下,我们在这里概述了如何通过使用随机有限状态传感器来解决建模,学习和搜索问题。我们还将回顾在此范例下开发的系统所取得的结果。作为本综述的主要结论,我们认为,随着任务复杂性和培训数据稀缺性的增加,那些更加依赖统计技术的系统往往会产生最佳结果。

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