A tool for the acquisition of Japanese-English machine translation rules using inductive learning techniques

H. Almuallim, Y. Akiba, T. Yamazaki, A. Yokoo, S. Kaneda
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引用次数: 10

Abstract

Addresses the problem of constructing translation rules for ALT-J/E/spl minus/a knowledge-based Japanese-English translation system developed at NTT. We introduce the system ATRACT, which is a semi-automatic knowledge acquisition tool designed to facilitate the construction of the desired translation rules through the use of inductive machine learning techniques. Rather than building rules by hand from scratch, a user of ATRACT can obtain good candidate rules by providing the system with a collection of examples of Japanese sentences along with their English translations. This learning task is characterized by two factors: (i) it involves exploiting a huge amount of semantic information as background knowledge; (ii) training examples are "ambiguous". Currently, two learning methods are available in ATRACT. Experiments show that these methods lead to rules that are very close to those composed manually by human experts given only a reasonable number of examples. These results suggest that ATRACT will significantly contribute to reducing the cost and improving the quality of ALT-J/E translation rules.<>
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使用归纳学习技术习得日英机器翻译规则的工具
解决了NTT开发的基于知识的日语-英语翻译系统的ALT-J/E/spl - minus翻译规则的构建问题。我们介绍了draw系统,这是一个半自动的知识获取工具,旨在通过使用归纳机器学习技术来促进所需翻译规则的构建。与从头开始手工构建规则不同,attract的用户可以通过向系统提供一组日语句子示例及其英语翻译来获得良好的候选规则。这种学习任务有两个特点:(1)需要挖掘大量的语义信息作为背景知识;(ii)训练示例“模棱两可”。目前,在attraction中有两种学习方法。实验表明,在给定合理数量的示例的情况下,这些方法得出的规则与人类专家手动编写的规则非常接近。这些结果表明,draw将显著有助于降低ALT-J/E翻译规则的成本和提高翻译规则的质量
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