复制
水准点(测量)
机器学习
反事实条件
随机试验
随机森林
计量经济学
观察研究
计算机科学
Lasso(编程语言)
平均处理效果
人工智能
反事实思维
经济
统计
倾向得分匹配
数学
心理学
万维网
大地测量学
社会心理学
地理
作者
Brian Prest,Casey J. Wichman,Karen Palmer
出处
期刊:Journal of the Association of Environmental and Resource Economists
日期:2023-02-02
卷期号:10 (5): 1231-1264
被引量:6
摘要
We investigate how successfully machine-learning (ML) prediction algorithms can be used to estimate causal treatment effects in electricity demand applications with nonexperimental data. We use three prediction algorithms—XGBoost, random forests, and LASSO—to generate counterfactuals using observational data. Using those counterfactuals, we estimate nonexperimental treatment effects and compare them to experimental treatment effects from a randomized experiment for electricity customers who faced critical-peak pricing and information treatments. Our results show that nonexperimental treatment effects based on each algorithm replicate the true treatment effects, even when only using data from treated households. Additionally, when using both treatment households and nonexperimental comparison households, standard two-way fixed effects regressions replicate the experimental benchmark, suggesting little benefit from ML approaches over standard program evaluation methods in that setting.
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