Social Progress Index

Overview

The Amazon Social Progress Index (IPS) is a comprehensive indicator framework that measures social and environmental progress in the Legal Amazon region. This collaborative initiative combines:

  • Imazon (Instituto do Homem e Meio Ambiente da AmazĂ´nia): Brazilian research organization
  • Social Progress Imperative: International organization focused on measuring societal well-being

This dataset captures:

  • Multi-dimensional development indicators: Spanning 8 domains of social and environmental progress
  • Municipality-level data: All Legal Amazon municipalities assessed
  • Quality of life metrics: Health, education, sanitation, infrastructure
  • Environmental indicators: Forest cover, deforestation risk, sustainability
  • Violence and safety: Public safety and security metrics
  • Temporal coverage: Data from 2014, 2018, 2021, 2023
  • Geographic coverage: 570+ municipalities across Legal Amazon

The IPS provides a holistic view of sustainable development, moving beyond simple economic measures (GDP) to encompass environmental sustainability and social well-being.

Data Source and Methodology

The Social Progress Index: - Based on 50+ individual indicators across 12 domains - Uses data from government agencies, NGOs, and research institutions - Aggregated into 3 main dimensions and 12 subdimensions - Indexed to 0-100 scale for comparability - Methodologically rigorous with transparent weighting

For detailed methodology, visit Social Progress Imperative.


Available Dimensions

The IPS framework includes 8 main dataset options:

1. all

Complete Social Progress Index with all dimensions and indicators.

  • Coverage: Comprehensive assessment across all domains
  • Variables: All indicators and index scores
  • Use cases: Holistic development analysis, overall progress tracking, multi-dimensional comparisons

2. life_quality

Indicators related to quality of life and well-being.

  • Variables: Healthcare quality, life expectancy, nutrition, shelter quality
  • Use cases: Health and wellness analysis, living standards assessment, healthcare quality evaluation

3. sanit_habit

Sanitation and habitat indicators.

  • Variables: Access to improved sanitation, water quality, housing conditions
  • Use cases: Infrastructure assessment, water and sanitation access analysis, housing quality evaluation

4. violence

Public safety and violence indicators.

  • Variables: Crime rates, safety perceptions, homicide data
  • Use cases: Public safety analysis, violence hotspot identification, security trends

5. educ

Education and literacy indicators.

  • Variables: School enrollment, literacy rates, educational attainment, quality of education
  • Use cases: Education access analysis, literacy trends, human capital assessment

6. communic

Communication and connectivity indicators.

  • Variables: Internet access, mobile phone coverage, communication infrastructure
  • Use cases: Digital divide analysis, connectivity assessment, tech adoption patterns

7. mortality

Health and mortality indicators.

  • Variables: Child mortality, maternal mortality, mortality rates by cause
  • Use cases: Health outcomes analysis, maternal/child health assessment, disease burden evaluation

8. deforest

Environmental and deforestation indicators.

  • Variables: Forest cover, deforestation rates, environmental sustainability
  • Use cases: Forest monitoring, environmental assessment, climate/conservation analysis

Function Parameters

1. dataset

Selects which dimension(s) to download.

dataset = "all"         # All dimensions
dataset = "life_quality" # Quality of life metrics
dataset = "sanit_habit"  # Sanitation and habitat
dataset = "violence"     # Public safety and violence
dataset = "educ"         # Education indicators
dataset = "communic"     # Communication and connectivity
dataset = "mortality"    # Health and mortality
dataset = "deforest"     # Environmental and deforestation

2. raw_data

Controls whether to download original or processed data.

  • TRUE: Returns raw data exactly as published
  • FALSE: Returns treated data with standardized English variable names and formatting
raw_data = FALSE  # logical

3. time_period

Specifies which assessment year(s) to download.

Available years: 2014, 2018, 2021, 2023

time_period = 2023              # Most recent
time_period = c(2018, 2023)     # Specific years
time_period = c(2014, 2018, 2021, 2023)  # Multiple years

4. language

Output language for variable names and labels.

  • "pt": Portuguese
  • "eng": English
language = "eng"  # character string

Examples

# download raw IPS data from 2014
data <- load_ips(
  dataset = "all",
  raw_data = TRUE,
  time_period = 2014,
  language = "eng"
)

# download treated deforestation IPS data from 2018 in portuguese
data <- load_ips(
  dataset = "deforest",
  raw_data = FALSE,
  time_period = 2018,
  language = "pt"
)

Data Notes

Index Scales

  • 0-100 scale: All indices standardized to 0-100 for comparison
  • Higher is better: Across all dimensions except deforestation (where higher forest index = better)
  • Comparable across dimensions: Standardized scale allows cross-dimension comparison

Dimensions and Indicators

Each dimension contains multiple indicators: - Life quality: 4-6 indicators - Sanitation/habitat: 3-5 indicators
- Violence: 3-4 indicators - Education: 3-4 indicators - Communication: 2-3 indicators - Mortality: 3-4 indicators - Deforestation: 2-3 indicators

(Exact number varies by year and methodology)

Temporal Comparisons

When comparing across years (2014, 2018, 2021, 2023): - Methodology may have evolved between assessments - New indicators may have been added - Some municipalities may not have data in all years - Use caution comparing very old (2014) with recent (2023) data

Missing Data

  • Some municipalities may lack data for specific indicators
  • Remote or less accessible areas may have less complete data
  • Use na.rm = TRUE in aggregations to handle missing values

Geographic Coverage

  • Covers 570+ municipalities in the Legal Amazon
  • Includes all states with Amazon territory
  • Some frontier/protected areas may lack complete data