CLAINov 24, 2023

Gender inference: can chatGPT outperform common commercial tools?

U of Toronto
arXiv:2312.00805v18 citationsh-index: 14
Originality Synthesis-oriented
AI Analysis

This addresses the need for accurate gender inference in research datasets lacking self-reported data, though it is incremental as it compares existing tools rather than introducing a new method.

The study compared ChatGPT's performance against three commercial gender inference tools (Namsor, Gender-API, genderize.io) on an Olympic athlete dataset, finding that ChatGPT often outperformed Namsor, especially for female samples with country or last name information, and all tools performed better on medalists and English-speaking names.

An increasing number of studies use gender information to understand phenomena such as gender bias, inequity in access and participation, or the impact of the Covid pandemic response. Unfortunately, most datasets do not include self-reported gender information, making it necessary for researchers to infer gender from other information, such as names or names and country information. An important limitation of these tools is that they fail to appropriately capture the fact that gender exists on a non-binary scale, however, it remains important to evaluate and compare how well these tools perform in a variety of contexts. In this paper, we compare the performance of a generative Artificial Intelligence (AI) tool ChatGPT with three commercially available list-based and machine learning-based gender inference tools (Namsor, Gender-API, and genderize.io) on a unique dataset. Specifically, we use a large Olympic athlete dataset and report how variations in the input (e.g., first name and first and last name, with and without country information) impact the accuracy of their predictions. We report results for the full set, as well as for the subsets: medal versus non-medal winners, athletes from the largest English-speaking countries, and athletes from East Asia. On these sets, we find that Namsor is the best traditional commercially available tool. However, ChatGPT performs at least as well as Namsor and often outperforms it, especially for the female sample when country and/or last name information is available. All tools perform better on medalists versus non-medalists and on names from English-speaking countries. Although not designed for this purpose, ChatGPT may be a cost-effective tool for gender prediction. In the future, it might even be possible for ChatGPT or other large scale language models to better identify self-reported gender rather than report gender on a binary scale.

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