# Advance gender prediction tool of first names and its use in analysing   gender disparity in Computer Science in the UK, Malaysia and China

**Authors:** Hua Zhao, Fairouz Kamareddine

arXiv: 1906.05769 · 2019-08-08

## TL;DR

This paper introduces an improved, free gender prediction tool capable of handling large datasets of names from multiple languages, aiding in analyzing gender disparities in science across different countries.

## Contribution

The authors develop a novel, accurate, and freely accessible gender prediction tool that supports multiple languages and large-scale data processing for social analysis.

## Key findings

- The tool outperforms existing gender prediction methods.
- It effectively analyzes gender disparity in computer science.
- The tool supports dynamic data processing and visualization.

## Abstract

Global gender disparity in science is an unsolved problem. Predicting gender has an important role in analysing the gender gap through online data. We study this problem within the UK, Malaysia and China. We enhance the accuracy of an existing gender prediction tools of names that can predict the sex of Chinese characters and English characters simultaneously and with more precision. During our research, we found that there is no free gender forecasting tool to predict an arbitrary number of names. We addressed this shortcoming by providing a tool that can predict an arbitrary number of names with free requests. We demonstrate our tool through a number of experimental results. We show that this tool is better than other gender prediction tools of names for analysing social problems with big data. In our approach, lists of data can be dynamically processed and the results of the data can be displayed with a dynamic graph. We present experiments of using this tool to analyse the gender disparity in computer science in the UK, Malaysia and China.

## Full text

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## Figures

11 figures with captions in the complete paper: https://tomesphere.com/paper/1906.05769/full.md

## References

18 references — full list in the complete paper: https://tomesphere.com/paper/1906.05769/full.md

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Source: https://tomesphere.com/paper/1906.05769