Title
Gender in Danger? Evaluating Speech Translation Technology on the MuST-SHE Corpus
Abstract
Translating from languages without productive grammatical gender like English into gender-marked languages is a well-known difficulty for machines. This difficulty is also due to the fact that the training data on which models are built typically reflect the asymmetries of natural languages, gender bias included. Exclusively fed with textual data, machine translation is intrinsically constrained by the fact that the input sentence does not always contain clues about the gender identity of the referred human entities. But what happens with speech translation, where the input is an audio signal? Can audio provide additional information to reduce gender bias? We present the first thorough investigation of gender bias in speech translation, contributing with: i) the release of a benchmark useful for future studies, and ii) the comparison of different technologies (cascade and end-to-end) on two language directions (English-Italian/French).
Year
Venue
DocType
2020
ACL
Conference
Volume
Citations 
PageRank 
2020.acl-main
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Luisa Bentivogli141233.63
Beatrice Savoldi201.35
Matteo Negri377582.49
Mattia Antonino Di Gangi487.27
R. Cattoni5265.38
Marco Turchi656057.79