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Study and Comparison of Rule-Based and Statistical Catalan-Spanish Machine Translation Systems

机译:基于规则和统计加泰罗尼亚语-西班牙语机器翻译系统的研究和比较

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摘要

Machine translation systems can be classified into rule-based and corpus-based approaches, in terms of their core methodology. Since both paradigms have been largely used during the last years, one of the aims in the research community is to know how these systems differ in terms of translation quality. To this end, this paper reports a study and comparison of several specific Catalan-Spanish machine translation systems: two rule-based and two corpus-based (particularly, statistical-based) systems, all of them freely available on the web. The translation quality analysis is performed under two different domains: journalistic and medical. The systems are evaluated by using standard automatic measures, as well as by native human evaluators. In addition to these traditional evaluation procedures, this paper reports a novel linguistic evaluation, which provides information about the errors encountered at the orthographic, morphological, lexical, semantic and syntactic levels. Results show that while rule-based systems provide a better performance at orthographic and morphological levels, statistical systems tend to commit less semantic errors. Furthermore, results show all the evaluations performed are characterised by some degree of correlation, and human evaluators tend to be specially critical with semantic and syntactic errors.
机译:根据机器翻译系统的核心方法,可以将其分为基于规则的方法和基于语料库的方法。由于这两种范例在过去的几年中已被广泛使用,因此研究界的目标之一就是要了解这些系统在翻译质量方面的差异。为此,本文报告了对几种特定的加泰罗尼亚语-西班牙语机器翻译系统的研究和比较:两个基于规则的系统和两个基于语料库的(特别是基于统计的)系统,所有这些系统都可以在网上免费获得。翻译质量分析是在两个不同的领域进行的:新闻和医学。通过使用标准的自动测量以及本地人工评估人员对系统进行评估。除了这些传统的评估程序外,本文还报告了一种新颖的语言评估,它提供了有关在拼字,形态,词汇,语义和句法层面遇到的错误的信息。结果表明,尽管基于规则的系统在正交和形态学水平上提供了更好的性能,但统计系统却倾向于减少较少的语义错误。此外,结果表明,所有执行的评估都具有一定程度的相关性,而人类评估者往往在语义和句法错误方面尤为重要。

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