Skip to content

Economic Development and Convergence Analysis of BRICS using the Principal Component Analysis (PCA) Method

Notifications You must be signed in to change notification settings

Petrosdevri/BRICS-Econ-Analysis

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

5 Commits
 
 
 
 
 
 
 
 

Repository files navigation

🌍 BRICS Economic Convergence Analysis

📊 Economic Development and Convergence Analysis of BRICS using the Principal Component Analysis (PCA) Method

  • 📊 In this project, we compare the economic performance of the five main BRICS member states (🇧🇷 Brazil, 🇨🇳 China, 🇮🇳 India, 🇷🇺 Russia, 🇿🇦 South Africa) and identify patterns of convergence.
  • 🧮 The comparison runs from 1990 to 2023, uses Principal Component Analysis (PCA), and covers key economic indicators.
  • 🤝 The project was done together with my friend Jason Kehagias (@JasonKeha).

📚 Data Sources

📈 Economic Indicators

  • 📉 GDP Growth (%)
  • 💵 GDP per Capita (US$)
  • 💰 GDP per Capita, PPP (US$)
  • 🌍 FDI Inflows (% of GDP)
  • 🔥 Inflation (%)
  • 🪖 Military Expenditure (% of GDP)

🔍 Main Findings

pca-graph

scree-plot

🧠 Interpretation of the Correlation of Variables:
  • ➡️ The variables GDP_capita and GDP_capita_PPP tend to be in Principal Component 1 (PC1).
  • ↗️ The GDP_growth and FDI variables tend to be in Principal Component 2 (PC2).
  • ⚠️ Inflation does not trend positively in either PC.
  • 🪖 Military Expenditure (Military_Expenditure) has an intermediate relationship with the PCs.
📉 Interpretation of Variance by Principal Components (PCs):
  • PC1 covers 35.1% of the total volume of information, while PC2 covers 24.7%.
  • In sum, the two PCs cover 59.8% of the indicators, a satisfactory percentage.
  • PC3 covers around 18.9% and mainly concerns inflation, while the other PCs do not concern important data.

contributions-pc1

contributions-pc2

📊 Interpretation of the indicators in PC1:
  • 🥇 GDP_capita_PPP (40%): Largest contribution to PC1, suggesting that fluctuations in GDP per capita explain a significant part of the overall variation in PC1.
  • 🥈 GDP_capita (35%): Second strongest indicator, closely related to PC1, but less so than the PPP estimate.
  • 🥉 GDP_growth (15%): Significant but minor influence; annual growth rates do not dominate the PC1 axis.
📊 Interpretation of the indicators in PC2:
  • 🥇 FDI (33%): Largest contribution to PC2, suggesting that FDI fluctuations explain a significant part of the overall variation in PC2.
  • 🥈 Inflation (21%): Second strongest indicator, closely related to PC2, but less so than FDI.
  • 🥉 Military_Expenditure (15%): Significant but secondary influence; military expenditure does not dominate the PC2 axis.
🌐 Interpretation of indicators by country:

pca-biplot

  • 🇧🇷 Brazil performs positively in PC1, records balanced growth rates in all indicators, has a broad cloud and year-to-year volatility.
  • 🇨🇳 China is in PC2 and particularly on the GDP growth axis, reflecting the country's high growth rates.
  • 🇮🇳 India tends towards PC2 and negatively in PC1, showing concentration in GDP growth (small cloud) and indicating high growth but low incomes.
  • 🇷🇺 Russia is positioned in PC1 and leads in a wide range of indicators (GDP per capita, Inflation, Military Expenditure), indicating strong volatility.
  • 🇿🇦 South Africa is intermediate in the PCs, recording modest figures in the indicators and positioned closer to FDI.

🧾 Conclusion

  • ❗ BRICS is not a homogeneous organisation in terms of economic growth: different rates per country and strong volatility.
  • 📌 The comparison highlights the difference between developing countries (Russia, Brazil/South Africa, India/China).
  • 🔄 The divergence between states has an impact on the policies of the organisation and affects the convergence potential of its member states.

About

Economic Development and Convergence Analysis of BRICS using the Principal Component Analysis (PCA) Method

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages