CATE meets ML
Abstract For treatment effects—one of the core issues in modern econometric analysis—prediction and estimation are two sides of the same coin. As it turns out, machine learning methods are the tool for generalized prediction models. Combined with econometric theory, they allow us to estimate not only the average but a personalized treatment effect—the conditional average treatment effect (CATE). In this tutorial, we give an overview of novel methods, explain them in detail, and apply them via Quantlets in real data applications. We study the effect that microcredit availability has on the amount of money borrowed and if 401(k) pension plan eligibility has an impact on net financial assets, as two empirical examples. The presented toolbox of methods contains meta-learners, like the doubly-robust, R-, T- and X-learner, and methods that are specially designed to estimate the CATE like the causal BART and the generalized random forest. In both, the microcredit and 401(k) example, we find a positive treatment effect for all observations but conflicting evidence of treatment effect heterogeneity. An additional simulation study, where the true treatment effect is known, allows us to compare the different methods and to observe patterns and similarities.
Machine learning for financial forecasting, planning and analysis: recent developments and pitfalls
Helmut Wasserbacher, Martin Spindler · Digital Finance
Artificial intelligence for anti-money laundering: a review and extension
Jingguang Han, Yuyun Huang, Sha Liu, Kieran Towey · Digital Finance
Forex exchange rate forecasting using deep recurrent neural networks
Alexander Jakob Dautel, Wolfgang Karl Härdle, Stefan Lessmann, Hsin‐Vonn Seow · Digital Finance
Neural networks and arbitrage in the VIX
Joerg Osterrieder, Dariusz Kucharczyk, Silas Rudolf, Daniel Wittwer · Digital Finance
Accuracy of deep learning in calibrating HJM forward curves
Fred Espen Benth, Nils Detering, Silvia Lavagnini · Digital Finance
Improving credit risk assessment in P2P lending with explainable machine learning survival analysis
Gero Friedrich Bone-Winkel, Felix Reichenbach · Digital Finance
Hybrid ARDL-MIDAS-Transformer time-series regressions for multi-topic crypto market sentiment driven by price and technology factors
Ioannis Chalkiadakis, Gareth W. Peters, Matthew M. Ames · Digital Finance
Locally Robust Semiparametric Estimation
Victor Chernozhukov, Juan Carlos Escanciano, Hidehiko Ichimura, Whitney K. Newey, James M. Robins · Econometrica