Machine Learning for Structural Econometrics With Python: A Hands-On Guide to Lasso, Boosting, and Deep IV for Credible Structural Inference - Couverture souple

Livre 27 sur 29: Richman Computational Economics

Richman, Grant

 
9798264517730: Machine Learning for Structural Econometrics With Python: A Hands-On Guide to Lasso, Boosting, and Deep IV for Credible Structural Inference

Synopsis

The definitive, hands-on path to modern structural econometrics

Built for economists who need results, this book fuses rigor and implementation to deliver structural identification with state-of-the-art machine learning. Across 24 laser-focused chapters, you’ll move from orthogonal moments and cross-fitting to Lasso instrument selection, boosting for conditional moments, and full-blown neural approaches like Deep IV and deep GMM—then stress-test everything with MCQs and end-to-end Python code.

No fluff. No filler. Just the theory you need, followed by immediate self-checks and production-quality implementations for credible, policy-relevant counterfactuals.

Why this book stands out
  • Focused and practical: 24 dense chapters each designed to get you from theory to working code fast.
  • Inference-first: Orthogonal scores, debiased ML, cross-fitting, and weak-instrument robustness are baked into every workflow.
  • Structural credibility: Shape restrictions, moment inequalities, dynamic choices, auctions, platforms, and demand estimation done with ML the right way.
  • End-to-end thinking: From identification and tuning to diagnostics, stability checks, and reproducible pipelines.
What you’ll master
  • Lasso and post-lasso for instrument and control selection, double selection, and partialling out in high dimensions.
  • Boosting for first-stage estimation and overidentified moment systems, with early-stopping as regularization.
  • Deep IV and control functions with flexible conditional density estimation (mixture density nets, flows).
  • Deep GMM and adversarial moments for conditional moment restrictions.
  • Panels and time series with regularization (VAR-lasso, factor-lasso), HAC/cluster-robust inference, and dynamic endogeneity.
  • Shape-restricted ML (monotonicity, convexity, homogeneity) for demand systems and game-theoretic models.
  • Policy learning and counterfactual evaluation with orthogonal value estimators and robust off-policy tools.
Who this is for
  • Graduate students and researchers in economics, public policy, finance, and marketing.
  • Quantitative analysts and data scientists moving from prediction to causal and structural analysis.
  • Practitioners building decision systems that must withstand scrutiny, replication, and policy stakes.


Get the playbook economists use to deliver credible counterfactuals with modern ML.

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