Counterfactual Reconciliation: Incorporating Aggregation Constraints for More Accurate Causal Effect Estimates

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Date

2024

Journal Title

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Volume Title

Publisher

Elsevier

Open Access Color

Green Open Access

Yes

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Abstract

We extend the scope of the forecast reconciliation literature and use its tools in the context of causal inference. Researchers are interested in both the average treatment effect on the treated and treatment effect heterogeneity. We show that ex post correction of the counterfactual estimates using the aggregation constraints that stem from the hierarchical or grouped structure of the data is likely to yield more accurate estimates. Building on the geometric interpretation of forecast reconciliation, we provide additional insights into the exact factors determining the size of the accuracy improvement due to the reconciliation. We experiment with U.S. GDP and employment data. We find that the reconciled treatment effect estimates tend to be closer to the truth than the original (base) counterfactual estimates even in cases where the aggregation constraints are non-linear. Consistent with our theoretical expectations, improvement is greater when machine learning methods are used. (c) 2022 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.

Description

Tekguc, Hasan/0000-0002-3902-4486

Keywords

Forecast reconciliation, Non-linear constraints, Causal machine learning methods, Counterfactual estimation, Difference-in-differences, Difference-in-differences, Non-linear constraints, Forecast reconciliation, Causal machine learning methods, Counterfactual estimation

Fields of Science

0502 economics and business, 05 social sciences, 0101 mathematics, 01 natural sciences

Citation

WoS Q

Q1

Scopus Q

Q1
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N/A

Source

International Journal of Forecasting

Volume

40

Issue

2

Start Page

564

End Page

580
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