Monitoring global digital gender inequality using the online populations of Facebook and Google

<b>Background</b>: In recognition of the empowering potential of digital technologies, gender equality in internet access and digital skills is an important target in the United Nations (UN) Sustainable Development Goals (SDGs). Gender-disaggregated data on internet use are limited, part...

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Main Authors: Ridhi Kashyap, Masoomali Fatehkia, Reham Al Tamime, Ingmar Weber
Format: Article
Language:English
Published: Max Planck Institute for Demographic Research 2020-09-01
Series:Demographic Research
Subjects:
Online Access:https://www.demographic-research.org/articles/volume/43/27
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author Ridhi Kashyap
Masoomali Fatehkia
Reham Al Tamime
Ingmar Weber
author_facet Ridhi Kashyap
Masoomali Fatehkia
Reham Al Tamime
Ingmar Weber
author_sort Ridhi Kashyap
collection DOAJ
description <b>Background</b>: In recognition of the empowering potential of digital technologies, gender equality in internet access and digital skills is an important target in the United Nations (UN) Sustainable Development Goals (SDGs). Gender-disaggregated data on internet use are limited, particularly in less developed countries. <b>Objective</b>: We leverage anonymous, aggregate data on the online populations of Google and Facebook users available from their advertising platforms to fill existing data gaps and measure global digital gender inequality. <b>Methods</b>: We generate indicators of country-level gender gaps on Google and Facebook. Using these online indicators independently and in combination with offline development indicators, we build regression models to predict gender gaps in internet use and digital skills computed using available survey data from the International Telecommunications Union (ITU). <b>Results</b>: We find that women are significantly underrepresented in the online populations of Google and Facebook in South Asia and sub-Saharan Africa. These platform-specific gender gaps are a strong predictor that women lack internet access and basic digital skills in these populations. Comparing platforms, we find Facebook gender gap indicators perform better than Google indicators at predicting ITU internet use and low-level digital-skill gender gaps. Models using these online indicators outperform those using only offline development indicators. The best performing models, however, are those that combine Facebook and Google online indicators with a country's development indicators such as the Human Development Index. <b>Contribution</b>: Our work highlights how appropriate regression models built on novel, digital data from online populations can be used to complement traditional data sources to monitor global development indicators linked to digital gender inequality.
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spelling doaj.art-ddd2e68919d64f539fffdf33ef8f16242023-08-22T09:45:04ZengMax Planck Institute for Demographic ResearchDemographic Research1435-98712020-09-01432710.4054/DemRes.2020.43.274775Monitoring global digital gender inequality using the online populations of Facebook and GoogleRidhi Kashyap0Masoomali Fatehkia1Reham Al Tamime2Ingmar Weber3University of OxfordQatar Computing Research Institute (QCRI)University of SouthamptonQatar Computing Research Institute (QCRI)<b>Background</b>: In recognition of the empowering potential of digital technologies, gender equality in internet access and digital skills is an important target in the United Nations (UN) Sustainable Development Goals (SDGs). Gender-disaggregated data on internet use are limited, particularly in less developed countries. <b>Objective</b>: We leverage anonymous, aggregate data on the online populations of Google and Facebook users available from their advertising platforms to fill existing data gaps and measure global digital gender inequality. <b>Methods</b>: We generate indicators of country-level gender gaps on Google and Facebook. Using these online indicators independently and in combination with offline development indicators, we build regression models to predict gender gaps in internet use and digital skills computed using available survey data from the International Telecommunications Union (ITU). <b>Results</b>: We find that women are significantly underrepresented in the online populations of Google and Facebook in South Asia and sub-Saharan Africa. These platform-specific gender gaps are a strong predictor that women lack internet access and basic digital skills in these populations. Comparing platforms, we find Facebook gender gap indicators perform better than Google indicators at predicting ITU internet use and low-level digital-skill gender gaps. Models using these online indicators outperform those using only offline development indicators. The best performing models, however, are those that combine Facebook and Google online indicators with a country's development indicators such as the Human Development Index. <b>Contribution</b>: Our work highlights how appropriate regression models built on novel, digital data from online populations can be used to complement traditional data sources to monitor global development indicators linked to digital gender inequality.https://www.demographic-research.org/articles/volume/43/27big datadevelopment indicatorsdigital dividegender inequalitiesnovel digital data sourcessustainable development goals
spellingShingle Ridhi Kashyap
Masoomali Fatehkia
Reham Al Tamime
Ingmar Weber
Monitoring global digital gender inequality using the online populations of Facebook and Google
Demographic Research
big data
development indicators
digital divide
gender inequalities
novel digital data sources
sustainable development goals
title Monitoring global digital gender inequality using the online populations of Facebook and Google
title_full Monitoring global digital gender inequality using the online populations of Facebook and Google
title_fullStr Monitoring global digital gender inequality using the online populations of Facebook and Google
title_full_unstemmed Monitoring global digital gender inequality using the online populations of Facebook and Google
title_short Monitoring global digital gender inequality using the online populations of Facebook and Google
title_sort monitoring global digital gender inequality using the online populations of facebook and google
topic big data
development indicators
digital divide
gender inequalities
novel digital data sources
sustainable development goals
url https://www.demographic-research.org/articles/volume/43/27
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AT rehamaltamime monitoringglobaldigitalgenderinequalityusingtheonlinepopulationsoffacebookandgoogle
AT ingmarweber monitoringglobaldigitalgenderinequalityusingtheonlinepopulationsoffacebookandgoogle