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Regular version of the site

Seminar «Using machine learning methods to support causal inference in econometrics»

Event ended

IZA-HSE University International Labor Seminar will be held on Tuesday, July 6, 2021 at 16:00 (MSK, GMT+3).

Speaker: Mark E. Schaffer (Heriot-Watt University, Edinburgh and IZA)

Title: Using machine learning methods to support causal inference in econometrics


We provide an introduction to the use of machine learning methods in econometrics and how these methods can be employed to assist in causal inference. We begin with an extended presentation of the lasso (least absolute shrinkage and selection operator) of Tibshirani (1996). We then discuss the ‘Post-Double-Selection’ (PDS) estimator of Belloni et al. (2012, 2014) and show how it uses the lasso to address the omitted confounders problem. The PDS methodology is particularly powerful for the case where the researcher has a high-dimensional set of potential control variables, and needs to strike a balance between using enough controls to eliminate the omitted variable bias but not so many as to induce overfitting. The last part of the paper discusses recent developments in the field that go beyond the PDS approach. 
 
Joint paper with Achim Ahrens (ETH, Zürich) and Christopher Aitken (Heriot-Watt University, Edinburgh). 

Working language is English.

Seminar will be online via Zoom
The link to join Zoom: https://zoom.us/j/98487115170
Meeting ID: 984 8711 5170
Password: 206602


If you have questions please contact Liliya Gubaidullina (lgubajdullina@hse.ru ).