arXiv Analytics

Sign in

arXiv:2102.03692 [cs.LG]AbstractReferencesReviewsResources

What's in a Name? -- Gender Classification of Names with Character Based Machine Learning Models

Yifan Hu, Changwei Hu, Thanh Tran, Tejaswi Kasturi, Elizabeth Joseph, Matt Gillingham

Published 2021-02-07Version 1

Gender information is no longer a mandatory input when registering for an account at many leading Internet companies. However, prediction of demographic information such as gender and age remains an important task, especially in intervention of unintentional gender/age bias in recommender systems. Therefore it is necessary to infer the gender of those users who did not to provide this information during registration. We consider the problem of predicting the gender of registered users based on their declared name. By analyzing the first names of 100M+ users, we found that genders can be very effectively classified using the composition of the name strings. We propose a number of character based machine learning models, and demonstrate that our models are able to infer the gender of users with much higher accuracy than baseline models. Moreover, we show that using the last names in addition to the first names improves classification performance further.

Related articles: Most relevant | Search more
arXiv:2104.04148 [cs.LG] (Published 2021-04-09)
Individual Explanations in Machine Learning Models: A Case Study on Poverty Estimation
arXiv:2005.09512 [cs.LG] (Published 2020-05-18)
Applying Genetic Programming to Improve Interpretability in Machine Learning Models
arXiv:2003.08820 [cs.LG] (Published 2020-03-13)
Experimental Comparison of Semi-parametric, Parametric, and Machine Learning Models for Time-to-Event Analysis Through the Concordance Index