R. Cattoni


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2012

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FBK’s machine translation systems for IWSLT 2012’s TED lectures
N. Ruiz | A. Bisazza | R. Cattoni | M. Federico
Proceedings of the 9th International Workshop on Spoken Language Translation: Evaluation Campaign

This paper reports on FBK’s Machine Translation (MT) submissions at the IWSLT 2012 Evaluation on the TED talk translation tasks. We participated in the English-French and the Arabic-, Dutch-, German-, and Turkish-English translation tasks. Several improvements are reported over our last year baselines. In addition to using fill-up combinations of phrase-tables for domain adaptation, we explore the use of corpora filtering based on cross-entropy to produce concise and accurate translation and language models. We describe challenges encountered in under-resourced languages (Turkish) and language-specific preprocessing needs.

2005

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A Look inside the ITC-irst SMT System
M. Cettolo | M. Federico | N. Bertholdi | R. Cattoni | B. Chen
Proceedings of Machine Translation Summit X: Posters

This paper presents a look inside the ITC-irst large-vocabulary SMT system developed for the NIST 2005 Chinese-to-English evaluation campaign. Experiments on official NIST test sets provide a thorough overview of the performance of the system, supplying information on how single components contribute to the global performance. The presented system exhibits performance comparable to that of the best systems participating in the NIST 2002-2004 MT evaluation campaigns: on the three test sets, achieved BLEU scores are 26.35%, 26.92% and 28.13%, respectively.