Double Machine Learning based Program Evaluation under Unconfoundedness

This paper consolidates recent methodological developments based on Double Machine Learning (DML) with a focus on program evaluation under unconfoundedness. DML based methods leverage flexible prediction methods to control for confounding in the estimation of (i) standard average effects, (ii) diffe...

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Main Author: Knaus, Michael C.
Format: Report
Language:unknown
Subjects:
DML
Online Access:http://ux-tauri.unisg.ch/RePEc/usg/econwp/EWP-2004.pdf
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spelling ftrepec:oai:RePEc:usg:econwp:2020:04 2023-05-15T16:01:18+02:00 Double Machine Learning based Program Evaluation under Unconfoundedness Knaus, Michael C. http://ux-tauri.unisg.ch/RePEc/usg/econwp/EWP-2004.pdf unknown http://ux-tauri.unisg.ch/RePEc/usg/econwp/EWP-2004.pdf preprint ftrepec 2020-12-04T13:34:57Z This paper consolidates recent methodological developments based on Double Machine Learning (DML) with a focus on program evaluation under unconfoundedness. DML based methods leverage flexible prediction methods to control for confounding in the estimation of (i) standard average effects, (ii) different forms of heterogeneous effects, and (iii) optimal treatment assignment rules. We emphasize that these estimators build all on the same doubly robust score, which allows to utilize computational synergies. An evaluation of multiple programs of the Swiss Active Labor Market Policy shows how DML based methods enable a comprehensive policy analysis. However, we find evidence that estimates of individualized heterogeneous effects can become unstable. Causal machine learning, conditional average treatment effects, optimal policy learning, individualized treatment rules, multiple treatments Report DML RePEc (Research Papers in Economics)
institution Open Polar
collection RePEc (Research Papers in Economics)
op_collection_id ftrepec
language unknown
description This paper consolidates recent methodological developments based on Double Machine Learning (DML) with a focus on program evaluation under unconfoundedness. DML based methods leverage flexible prediction methods to control for confounding in the estimation of (i) standard average effects, (ii) different forms of heterogeneous effects, and (iii) optimal treatment assignment rules. We emphasize that these estimators build all on the same doubly robust score, which allows to utilize computational synergies. An evaluation of multiple programs of the Swiss Active Labor Market Policy shows how DML based methods enable a comprehensive policy analysis. However, we find evidence that estimates of individualized heterogeneous effects can become unstable. Causal machine learning, conditional average treatment effects, optimal policy learning, individualized treatment rules, multiple treatments
format Report
author Knaus, Michael C.
spellingShingle Knaus, Michael C.
Double Machine Learning based Program Evaluation under Unconfoundedness
author_facet Knaus, Michael C.
author_sort Knaus, Michael C.
title Double Machine Learning based Program Evaluation under Unconfoundedness
title_short Double Machine Learning based Program Evaluation under Unconfoundedness
title_full Double Machine Learning based Program Evaluation under Unconfoundedness
title_fullStr Double Machine Learning based Program Evaluation under Unconfoundedness
title_full_unstemmed Double Machine Learning based Program Evaluation under Unconfoundedness
title_sort double machine learning based program evaluation under unconfoundedness
url http://ux-tauri.unisg.ch/RePEc/usg/econwp/EWP-2004.pdf
genre DML
genre_facet DML
op_relation http://ux-tauri.unisg.ch/RePEc/usg/econwp/EWP-2004.pdf
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