This project analyzes crime trends in Mexico from 2015 to 2024, integrating crime statistics with socioeconomic data such as poverty indicators and population distribution.
Dataset&Poverty.ipynb: Jupyter notebook visualizations exploring the correlation between poverty and crime.Population&Crime.ipynb: Jupyter notebook analyzing crime trends, population data, and spatial distributions.
- Time series of monthly and annual crime rates
- Crime rates per 100,000 inhabitants
- Correlation matrix with poverty, healthcare, and education indicators
- Crime rate maps and comparisons between states
- Design inspired by Tufte and Nathan Yauβs visualization principles
- Interactive map using Plotly and GeoJSON
- Regression and correlation plots
- Normalization of crime counts based on population
- Insight into underreporting and data limitations
- Python (Pandas, Plotly, Seaborn)
- Jupyter Notebook
- HTML Export (from Jupyter or Dash)
- GitHub
MIT License β feel free to use and adapt with credit.
Guadalupe Armenta Mendoza
MSc Data Science & Analytics (2024/25)
Looking for roles in data science, analytics, or data visualization.