Gender & Inclusion

Gender Economic Visibility in Developing Economies

A Data Framework for Inclusive Economic Policy

Overview

Gender Economic Visibility Index (GEVI)

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Short explanation

This framework measures the extent to which women are represented in economic and data systems across five dimensions: financial inclusion, labor participation, enterprise visibility, data representation, and policy inclusion.

The pilot application to Papua New Guinea shows that women participate actively in the economy while remaining weakly visible in formal systems, creating policy blind spots and missed fiscal opportunities.

Index Explorer

Papua New Guinea

Pilot country score based on proxy measures across five visibility dimensions.

40.7
Financial Visibility 38
Labor Market Visibility 52
Enterprise Visibility 34
Data Representation 30
Policy Inclusion 48
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Dimension Breakdown

Explore each visibility dimension.

Data Representation

Structural data gaps are a major constraint.

  • • Limited gender-disaggregated tax data
  • • Fragmented statistical systems
  • • Weak integration across agencies

Policy Insights Panel

Dynamic interpretation for governments and development institutions.

Top 3 gaps

  • • Data invisibility remains the core constraint, not participation.
  • • Informal sector dominance weakens institutional recognition of women’s contribution.
  • • Tax and financial systems undercapture economically active women.

Recommended interventions

  • • Embed gender-disaggregated fields into tax and statistical systems
  • • Improve cross-agency data integration standards
  • • Invest in integrated data infrastructure that supports gender tagging across systems.

Classification

Limited Visibility Economy

PNG shows high real participation but low statistical visibility, leading to underestimated GDP contribution, inefficient policy targeting, and missed tax base opportunities.

Executive Summary

The paper proposes a visibility-based framework for assessing how women appear, or fail to appear, inside formal data systems.

This research examines the consequences of partial visibility in economic data systems. Women are often active in labor, enterprise, and informal markets while remaining weakly represented in official datasets.

The paper argues that visibility is not just a statistical issue. It is a policy constraint that affects targeting, taxation, financial inclusion, and the design of public interventions.

Maitras.ai frames visibility as a measurable policy problem and lays groundwork for composite indices such as GEVI.