Publication | Open Access
Bleaching Text: Abstract Features for Cross-lingual Gender Prediction
43
Citations
27
References
2018
Year
Unknown Venue
Gender prediction has typically focused on lexical and social network features, yielding good performance, but making systems highly language-, topic-, and platformdependent. Cross-lingual embeddings circumvent some of these limitations, but capture gender-specific style less. We propose an alternative: bleaching text, i.e., transforming lexical strings into more abstract features. This study provides evidence that such features allow for better transfer across languages. Moreover, we present a first study on the ability of humans to perform cross-lingual gender prediction. We find that human predictive power proves similar to that of our bleached models, and both perform better than lexical models.
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