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My research focuses mainly on applied micro in Empirical IO & Health, using causal machine learning and structural IO to measure heterogeneous own- and cross-price elasticities and to evaluate pricing and welfare in pharmaceutical markets. Methodologically, I adopted Neyman-orthogonal DML/IV for continuous treatments with cross-fitting on high-dimensional panels and multi-product pricing to recover marginal costs and run Ramsey/Boiteux counterfactuals. I also study innovation responses to demand shocks (e.g., safety recalls) to quantify market-size elasticities in the Pharmaceutical. Complementary work in ML theory (orthogonalized learners, optimal data collection) in health economics and production networks was pursued to strengthen identification, feature construction, and cross-product interaction modeling required by my IO agenda. 

Research 

Learning trade opportunities via Production Network

Assessing the Heterogeneous Impact of Economy-Wide Shocks: A Causal Machine Learning Approach Applied to Colombian Firms

Product recalls, market size and innovation in the pharmaceutical industry

Ramsey Pricing of Pharmaceuticals: A Theoretical and Machine Learning Analysis

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