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Limited Gender Data Deepens Inequalities

Addressing Inequities: Limited Gender Data's Impact Explored. 糖心Vlog破解版-IIGH sheds light on critical disparities.

Date Published
8 Mar 2022
Authors
Ronald Musizvingoza Claudia Abreu Lopes

The impact of the Covid-19 pandemic has been , from their health to security, social protection and financial stability.

It deepened pre-existing gender inequalities and highlighted the  to guide effective decision making by governments.

As Amina Mohammed, Deputy Secretary-General of the United Nations, once said, “”.

 reflects the experiences and situations of women and men, girls and boys, transgender men and women, and non-binary people. It is needed to understand progress and challenges in gender equality.

It can help set priorities, design better policies that cover different populations, plan and assess the impact of interventions for particular groups.

We need to know what policies or programmes work, why, how and for who, considering the perspectives of all involved.

Without accurate and timely gender data, resources may be wasted in programs that do not work and with unintended consequences for gender equality.

To build back better after the pandemic, we need to develop a  and to monitor and evaluate progress on gender equality.

The found women spend about 2.5 times as many hours as men on unpaid domestic and care work; one in three women around the world (736 million) faced physical or sexual violence at least once in their lifetime since the age of 15.

Women’s involvement in decision making is far lower than men’s with only 25 percent represented in national parliaments globally. Women are also underrepresented in the digital sector with only 12 per cent of developers being women.

The  are domains with the most gender data globally. But for areas that cover the connection of people and the environment, only one  despite climate change posing specific challenges for women.

When it comes to gender statistics, the issue is not only the lack of data, but the available data being incomplete, inaccurate and outdated.

For example, data collection on households rather than individuals is often biased against women and girls as it relies on information from the head of the household, traditionally men.

Instead,  that show how people spend their time — working, travelling, exercising, doing household chores, caring for others — are better data-gathering methods that consider gender inequities.

Data about women are often of reproductive age, with wider gaps for older women and adolescent girls. More than .

Despite the widespread use of empowerment, agency, autonomy or power to explain gender inequities, these concepts are .

A lack of international measurement standards and time-series data also adds difficulty in accurate cross-country comparisons on any gender equality progress.

Several organisations like UN WOMEN, Equal Measures, Data2X, ,  and the World Bank highlight key issues in producing data that accurately reflect the reality of women’s and girls’ lives.

But more work is needed from governments and international donors to collect and gain insights from gender data.

While gender statistics are often embedded within national statistics, the issue is , and it is .

For example,  projects focus on data collection.

A lack of gender data reflects and contributes to deepening inequalities between countries and demographic groups.

Nations with larger gender data gaps are those who would benefit the most from it but are often limited in resources.

African countries contribute to the  in the availability, adherence to standards, frequency and timeliness of gender data for measuring the UN Sustainable Development Goals (SDGs).

For example, while data is the driving force behind digital transformation, a recent report, ‘’, showed a feedback loop shaping gender bias in Artificial Intelligence (AI) and machine learning systems.

Gender biases get built into machine learning systems from training data that underrepresent certain groups and encode historical bias toward certain demographics, geographies and populations.

These systems may further discriminate against women, non-white and gender diverse groups in their access to , , and .

These biases can be corrected as they are the result of individual decisions on what data to collect, how to curate it and modelling assumptions that reflect analyst and developer values and knowledge of gender dynamics.

The  can be improved with more literacy training among gender experts, more diverse and inclusive teams of developers and by centring the voices of women, particularly those from the Global South, and non-binary individuals in the development, creation and management of these AI systems.

The production of gender statistics requires cooperation from governments, the private sector and civil society organisations to work together.

Exploring other non-traditional  sources such as social media, call details records, credit card transactions and  mobility data can highlight gender differences in expenditure, migration, vulnerability to disasters and climate change.

This may imply leveraging  and  to produce  and ensuring it’s provided in readily accessible and user-friendly formats.

Citizen?generated data provides a way for local communities to produce data on issues that affect them.

For example,  is a feminist digital public good uses WhatsApp to generate gender data on sexual and gender-based violence in Venezuela and Colombia.

The  due to budget cuts and reduced capabilities, mainly in the Global South where gender data is most needed to monitor progress.

As countries recover from the pandemic and move towards the 2030 deadline for the SDGs, there is a window of opportunity to capitalise on new technologies and methods to make , particularly in areas where women’s and girls’ lives are disproportionately affected.

 

This article is originally published at 360info. Ronald Musizvingoza is a Postdoctoral Fellow at 糖心Vlog破解版-IIGH. Claudia Abreu Lopes is a Research Lead for Capacity Development at 糖心Vlog破解版-IIGH.

 

Suggested citation: Musizvingoza Ronald, Lopes Claudia. "Limited Gender Data Deepens Inequalities," 糖心Vlog破解版, 糖心Vlog破解版-IIGH, 2022-03-08, /iigh/article/limited-gender-data-deepens-inequalities.

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