CLOct 18, 2021

The Arabic Parallel Gender Corpus 2.0: Extensions and Analyses

arXiv:2110.09216v1586 citations
Originality Synthesis-oriented
AI Analysis

It addresses gender bias in poorly resourced, morphologically rich languages like Arabic, providing a dataset for personalized NLP applications, but is incremental as it builds on an existing corpus.

The paper tackles gender bias in NLP for Arabic by introducing APGC v2.0, a corpus that expands on a previous version by adding second-person targets and increasing the dataset size to over 590K words, aiding research in gender identification and controlled text generation.

Gender bias in natural language processing (NLP) applications, particularly machine translation, has been receiving increasing attention. Much of the research on this issue has focused on mitigating gender bias in English NLP models and systems. Addressing the problem in poorly resourced, and/or morphologically rich languages has lagged behind, largely due to the lack of datasets and resources. In this paper, we introduce a new corpus for gender identification and rewriting in contexts involving one or two target 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. The corpus has multiple parallel components: four combinations of 1st and 2nd person in feminine and masculine grammatical genders, as well as English, and English to Arabic machine translation output. This corpus expands on Habash et al. (2019)'s Arabic Parallel Gender Corpus (APGC v1.0) by adding second person targets as well as increasing the total number of sentences over 6.5 times, reaching over 590K words. Our new dataset will aid the research and development of gender identification, controlled text generation, and post-editing rewrite systems that could be used to personalize NLP applications and provide users with the correct outputs based on their grammatical gender preferences. We make the Arabic Parallel Gender Corpus (APGC v2.0) publicly available.

Foundations

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