Double machine learning with gradient boosting and its application to the Big N audit quality effect

In this paper, we study the double machine learning (DML) approach of Chernozhukov et al. (2018) for estimating average treatment effect and apply this approach to examine the Big N audit quality effect in the accounting literature. This approach relies on machine learning methods and is suitable wh...

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Main Authors: Yang, Jui-Chung, Chuang, Hui-Ching, Kuan, Chung-Ming
Format: Article in Journal/Newspaper
Language:unknown
Subjects:
DML
Online Access:http://www.sciencedirect.com/science/article/pii/S0304407620300245
id ftrepec:oai:RePEc:eee:econom:v:216:y:2020:i:1:p:268-283
record_format openpolar
spelling ftrepec:oai:RePEc:eee:econom:v:216:y:2020:i:1:p:268-283 2024-04-14T08:10:55+00:00 Double machine learning with gradient boosting and its application to the Big N audit quality effect Yang, Jui-Chung Chuang, Hui-Ching Kuan, Chung-Ming http://www.sciencedirect.com/science/article/pii/S0304407620300245 unknown http://www.sciencedirect.com/science/article/pii/S0304407620300245 article ftrepec 2024-03-19T10:30:36Z In this paper, we study the double machine learning (DML) approach of Chernozhukov et al. (2018) for estimating average treatment effect and apply this approach to examine the Big N audit quality effect in the accounting literature. This approach relies on machine learning methods and is suitable when a high dimensional nuisance function with many covariates is present in the model. This approach does not suffer from the “regularization bias” when a learning method with a proper convergence rate is used. We demonstrate by simulations that, for the DML approach, the gradient boosting method is fairly robust and to be preferred to other methods, such as regression tree, random forest, support vector regression machine, and the conventional Nadaraya–Watson nonparametric estimator. We then apply the DML approach with gradient boosting to estimate the Big N effect. We find that Big N auditors have a positive effect on audit quality and that this effect is not only statistically significant but also economically important. We further show that, in contrast to the results of propensity score matching, our estimates of said effect are quite robust to the hyper-parameters in the gradient boosting algorithm. Audit quality; Average treatment effect; Big N effect; Double machine learning; Gradient boosting; Performance-matched discretionary accruals; Article in Journal/Newspaper DML RePEc (Research Papers in Economics)
institution Open Polar
collection RePEc (Research Papers in Economics)
op_collection_id ftrepec
language unknown
description In this paper, we study the double machine learning (DML) approach of Chernozhukov et al. (2018) for estimating average treatment effect and apply this approach to examine the Big N audit quality effect in the accounting literature. This approach relies on machine learning methods and is suitable when a high dimensional nuisance function with many covariates is present in the model. This approach does not suffer from the “regularization bias” when a learning method with a proper convergence rate is used. We demonstrate by simulations that, for the DML approach, the gradient boosting method is fairly robust and to be preferred to other methods, such as regression tree, random forest, support vector regression machine, and the conventional Nadaraya–Watson nonparametric estimator. We then apply the DML approach with gradient boosting to estimate the Big N effect. We find that Big N auditors have a positive effect on audit quality and that this effect is not only statistically significant but also economically important. We further show that, in contrast to the results of propensity score matching, our estimates of said effect are quite robust to the hyper-parameters in the gradient boosting algorithm. Audit quality; Average treatment effect; Big N effect; Double machine learning; Gradient boosting; Performance-matched discretionary accruals;
format Article in Journal/Newspaper
author Yang, Jui-Chung
Chuang, Hui-Ching
Kuan, Chung-Ming
spellingShingle Yang, Jui-Chung
Chuang, Hui-Ching
Kuan, Chung-Ming
Double machine learning with gradient boosting and its application to the Big N audit quality effect
author_facet Yang, Jui-Chung
Chuang, Hui-Ching
Kuan, Chung-Ming
author_sort Yang, Jui-Chung
title Double machine learning with gradient boosting and its application to the Big N audit quality effect
title_short Double machine learning with gradient boosting and its application to the Big N audit quality effect
title_full Double machine learning with gradient boosting and its application to the Big N audit quality effect
title_fullStr Double machine learning with gradient boosting and its application to the Big N audit quality effect
title_full_unstemmed Double machine learning with gradient boosting and its application to the Big N audit quality effect
title_sort double machine learning with gradient boosting and its application to the big n audit quality effect
url http://www.sciencedirect.com/science/article/pii/S0304407620300245
genre DML
genre_facet DML
op_relation http://www.sciencedirect.com/science/article/pii/S0304407620300245
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