Science of Computation and Language

Exhibition Program 12

How to get your favorite translation

Controlling neural machine translation by prefix constraints

Abstract

Neural machine translation is attracting attention because it can generate very fluent translation compared with conventional statistical machine translation. However, since neural machine translation learns the probabilistic model expressing the relationship between the source sentence and the target sentence only from the parallel bilingual text, there is a problem that it is difficult for the users to finely control the sentence output by the translation system. In this exhibition, we show how users can customize the output of neural machine translation systems by using tags which represent arbitrary features of the sentence output.

Photos

Poster


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Presenters

Masaaki Nagata
Masaaki Nagata
Innovative Communication Laboratory
Takaaki Tanaka
Takaaki Tanaka
Innovative Communication Laboratory
 Satoshi Suzuki
Satoshi Suzuki
Innovative Communication Laboratory
Wang Xun
Wang Xun
Innovative Communication Laboratory
Makoto Morishita
Makoto Morishita
Innovative Communication Laboratory