User-Centric Gender Rewriting
This addresses personalized gender adaptation in Arabic communication, though it appears incremental as an extension of prior work on first-person-only rewriting.
The paper tackles gender rewriting for Arabic text involving first and second grammatical persons with independent gender preferences, developing a multi-step system combining rule-based and neural approaches that achieves 88.42 M2 F0.5 on a blind test set and improves over previous work by 3.05 absolute points.
In this paper, we define the task of gender rewriting in contexts involving two users (I and/or You) - first and second grammatical persons with independent grammatical gender preferences. We focus on Arabic, a gender-marking morphologically rich language. We develop a multi-step system that combines the positive aspects of both rule-based and neural rewriting models. Our results successfully demonstrate the viability of this approach on a recently created corpus for Arabic gender rewriting, achieving 88.42 M2 F0.5 on a blind test set. Our proposed system improves over previous work on the first-person-only version of this task, by 3.05 absolute increase in M2 F0.5. We demonstrate a use case of our gender rewriting system by using it to post-edit the output of a commercial MT system to provide personalized outputs based on the users' grammatical gender preferences. We make our code, data, and models publicly available.