This paper investigates optimal ways to get maximal coverage from minimal input training corpus. In effect, it seems antagonistic to think of minimal input training with a statistical machine translation system. Since statistics work well with repetition and thus capture well highly occurring words, one challenge has been to figure out the optimal number of “new ” words that the system needs to be appropriately trained. Additionally, the goal is to minimize the human translation time for training a new language. In order to account for rapid ramp-up translation, we ran several experiments to figure out the minimal amount of data to obtain optimal translation results.
We report on findings of exploiting large data sets for translation modeling, language mod-eling and...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
This paper investigates parameter adap-tation in Statistical Machine Transla-tion(SMT). To overcome ...
We describe an experiment in rapid development of a statistical machine translation (SMT) system fro...
Often, the training procedure for statistical machine translation models is based on maximum likel...
Parallel corpus is an indispensable resource for translation model training in statistical machine t...
Machine translation is the application of machines to translate text or speech from one natural lang...
Statistical machine translation relies heavily on the available training data. However, in some case...
Sentence-aligned bilingual texts are a crucial resource to build statistical machine translation (SM...
Statistical machine translation, the task of translating text from one natural language into another...
This book provides a unified view on a new methodology for Machine Translation (MT). This methodolog...
The field of machine translation is almost as old as the modern digital computer. In 1949 Warren Wea...
This paper deals with the task of statistical machine transla-tion of spontaneous speech using a lim...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
We report on findings of exploiting large data sets for translation modeling, language mod-eling and...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
This paper investigates parameter adap-tation in Statistical Machine Transla-tion(SMT). To overcome ...
We describe an experiment in rapid development of a statistical machine translation (SMT) system fro...
Often, the training procedure for statistical machine translation models is based on maximum likel...
Parallel corpus is an indispensable resource for translation model training in statistical machine t...
Machine translation is the application of machines to translate text or speech from one natural lang...
Statistical machine translation relies heavily on the available training data. However, in some case...
Sentence-aligned bilingual texts are a crucial resource to build statistical machine translation (SM...
Statistical machine translation, the task of translating text from one natural language into another...
This book provides a unified view on a new methodology for Machine Translation (MT). This methodolog...
The field of machine translation is almost as old as the modern digital computer. In 1949 Warren Wea...
This paper deals with the task of statistical machine transla-tion of spontaneous speech using a lim...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
We report on findings of exploiting large data sets for translation modeling, language mod-eling and...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
This paper investigates parameter adap-tation in Statistical Machine Transla-tion(SMT). To overcome ...