Uruguay Cannabis Market Dataset: CBDT Framework Natural Experiment Validation (2017-2025)
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This dataset documents Uruguay's cannabis market from 2017-2025, capturing a natural experiment where legal cannabis quality (THC potency) systematically increased from 3% to 20% while price remained constant at approximately $1.40/gram. Key Finding: When Uruguay increased legal cannabis from 9% to 15% THC in December 2022, sales increased 84% (1,774 to 3,258 kg) in one year while price remained constant, isolating quality as the primary driver of legal market adoption. The data validates the Consumer-Driven Black Market Displacement (CBDT) Framework across four distinct quality eras. Statistical validation shows the framework explains 92.9% of variance in adoption rates (R² = 0.9288, p = 0.036) with mean absolute error of 2.0 percentage points. Dataset Contents: 6 CSV files with complete market data (registrations, sales, THC levels, framework scores) Era-level analysis (4 periods: 2017, 2018-2021, 2022-2023, 2024-2025) Time-series data (14 observations across 8 years) Statistical validation results (regression analysis, confidence intervals) Complete source documentation (11 independent sources cross-verified) Python replication code for all analyses Related Publications: The Silent Majority 420 (2025). Consumer-Driven Black Market Displacement (CBDT) Framework: A Behavioral-Utility Heuristic for Illicit-to-Legal Market Transition. Zenodo. https://doi.org/10.5281/zenodo.17593077 The Silent Majority 420 (2025). CBDT Framework Canadian Validation: Cross-National Evidence of Cultural Homogeneity Effects. Zenodo. https://doi.org/10.5281/zenodo.17611991 Primary Data Sources: IRCCA (Instituto de Regulación y Control del Cannabis, Uruguay), European Union Drugs Agency (2018), London School of Economics Journal of Illicit Economies and Development (2025). Replication: All analyses fully reproducible using provided CSV files and Python scripts. Complete methodology documented in DATASET_README.md included in files.
创建时间:
2025-11-24



