A probabilistic fusion framework
Yael Anava, Anna Shtok, et al.
CIKM 2016
The language that we produce reflects our personality, and various personal and demographic characteristics can be detected in natural language texts. We focus on one particular personal trait of the author, gender, and study how it is manifested in original texts and in translations. We show that author's gender has a powerful, clear signal in originals texts, but this signal is obfuscated in human and machine translation. We then propose simple domainadaptation techniques that help retain the original gender traits in the translation, without harming the quality of the translation, thereby creating more personalized machine translation systems.
Yael Anava, Anna Shtok, et al.
CIKM 2016
Gabriel Stanovsky, Daniel Gruhl, et al.
EACL 2017
Charles Jochim, Léa A. Deleris
EACL 2017
Francesco Barbieri, Miguel Ballesteros, et al.
EACL 2017