TransBooster is a wrapper technology designed to improve the performance of wide-coverage machine translation systems. Using linguistically motivated syntactic information, it automatically decomposes source language sentences into shorter and syntactically simpler chunks, and recomposes their translation to form target language sentences. This generally improves both the word order and lexical selection of the translation. To date, TransBooster has been successfully applied to rule-based MT, statistical MT, and multi-engine MT. This paper presents the application of TransBooster to Example-Based Machine Translation. In an experiment conducted on test sets extracted from Europarl and the Penn II Treebank we show that our method can raise th...
We describe a method for incorporating syntactic informa-tion in statistical machine translation sys...
We present a method for improving machine translation (MT) evaluation by targeted paraphrasing of r...
We present a method for improving statistical machine translation perfor-mance by using linguistical...
TransBooster is a wrapper technology designed to improve the performance of wide-coverage machine tr...
Machine Translation (MT) systems tend to underperform when faced with long, linguistically complex s...
Abstract. We propose the design, implementation and evaluation of a novel and modular approach to bo...
We propose the design, implementation and evaluation of a novel and modular approach to boost the tr...
This paper presents example-based machine translation (MT) based on syntactic trans-fer, which selec...
We present a method for improving statistical machine translation performance by using linguisticall...
Example-Based Machine Translation (EBMT) using partial exact matching against a database of translat...
We describe MSR-MT, a large-scale hybrid machine translation system under development for several la...
Abstract. The first research on integrating controlled language data in an Example-Based Machine Tra...
The first research on integrating controlled language data in an Example-Based Machine Translation (...
We describe a method for incorporating syntactic informa-tion in statistical machine translation sys...
We have developed an example-based machine translation (EBMT) system that uses the World Wide Web fo...
We describe a method for incorporating syntactic informa-tion in statistical machine translation sys...
We present a method for improving machine translation (MT) evaluation by targeted paraphrasing of r...
We present a method for improving statistical machine translation perfor-mance by using linguistical...
TransBooster is a wrapper technology designed to improve the performance of wide-coverage machine tr...
Machine Translation (MT) systems tend to underperform when faced with long, linguistically complex s...
Abstract. We propose the design, implementation and evaluation of a novel and modular approach to bo...
We propose the design, implementation and evaluation of a novel and modular approach to boost the tr...
This paper presents example-based machine translation (MT) based on syntactic trans-fer, which selec...
We present a method for improving statistical machine translation performance by using linguisticall...
Example-Based Machine Translation (EBMT) using partial exact matching against a database of translat...
We describe MSR-MT, a large-scale hybrid machine translation system under development for several la...
Abstract. The first research on integrating controlled language data in an Example-Based Machine Tra...
The first research on integrating controlled language data in an Example-Based Machine Translation (...
We describe a method for incorporating syntactic informa-tion in statistical machine translation sys...
We have developed an example-based machine translation (EBMT) system that uses the World Wide Web fo...
We describe a method for incorporating syntactic informa-tion in statistical machine translation sys...
We present a method for improving machine translation (MT) evaluation by targeted paraphrasing of r...
We present a method for improving statistical machine translation perfor-mance by using linguistical...