Estimating heterogeneous policy impacts using causal machine learning: a case study of health insurance reform in Indonesia

被引:0
|
作者
Noemi Kreif
Karla DiazOrdaz
Rodrigo Moreno-Serra
Andrew Mirelman
Taufik Hidayat
Marc Suhrcke
机构
[1] University of York,Centre for Health Economics
[2] London School of Hygiene & Tropical Medicine,Department of Medical Statistics, Faculty of Epidemiology and Population Health
[3] Universitas Indonesia,Center for Health Economics and Policy Studies (CHEPS), Faculty of Public Health
[4] Luxembourg Institute of Socio-Economic Research,undefined
关键词
Policy evaluation; Machine learning; Heterogenous treatment effects; Health insurance;
D O I
暂无
中图分类号
学科分类号
摘要
Policymakers seeking to target health policies efficiently towards specific population groups need to know which individuals stand to benefit the most from each of these policies. While traditional approaches for subgroup analyses are constrained to only consider a small number of pre-defined subgroups, recently proposed causal machine learning (CML) approaches help explore treatment-effect heterogeneity in a more flexible yet principled way. Causal forests use a generalisation of the random forest algorithm to estimate heterogenous treatment effects both at the individual and the subgroup level. Our paper aims to explore this approach in the setting of health policy evaluation with strong observed confounding, applied specifically to the context of mothers’ health insurance enrolment in Indonesia. Comparing two health insurance schemes (subsidised and contributory) against no insurance, we find beneficial average impacts of enrolment in contributory health insurance on maternal health care utilisation and infant mortality, but no impact of subsidised health insurance. The causal forest algorithm identified significant heterogeneity in the impacts of contributory insurance, not just along socioeconomic variables that we pre-specified (indicating higher benefits for poorer, less educated, and rural women), but also according to some other characteristics not foreseen prior to the analysis, suggesting in particular important geographical impact heterogeneity. Our study demonstrates the power of CML approaches to uncover unexpected heterogeneity in policy impacts. The findings from our evaluation of past health insurance expansions can potentially guide the re-design of the eligibility criteria for subsidised health insurance in Indonesia.
引用
收藏
页码:192 / 227
页数:35
相关论文
共 50 条
  • [41] Estimating the Heterogeneous Causal Effects of Parent-Child Relationships among Chinese Children with Oppositional Defiant Symptoms: A Machine Learning Approach
    Zhou, Haiyan
    Han, Fengkai
    Chen, Ruoxi
    Huang, Jiajin
    Chen, Jianhui
    Lin, Xiuyun
    BEHAVIORAL SCIENCES, 2024, 14 (06)
  • [42] Health financing reform towards universal insurance coverage: a case study of six cities in China
    Li, Cheng
    Yu, Yuan
    Okma, Kieke G. H.
    Yu, Min
    HEALTHMED, 2011, 5 (06): : 1420 - 1429
  • [43] Anomaly Detection using Machine Learning with a Case Study
    Jidiga, Goverdhan Reddy
    Sammulal, P.
    2014 INTERNATIONAL CONFERENCE ON ADVANCED COMMUNICATION CONTROL AND COMPUTING TECHNOLOGIES (ICACCCT), 2014, : 1060 - 1065
  • [44] A Case Study on Reducing Auto Insurance Attrition with Econometrics, Machine Learning, and A/B testing
    Paredes, Miguel
    2018 IEEE 5TH INTERNATIONAL CONFERENCE ON DATA SCIENCE AND ADVANCED ANALYTICS (DSAA), 2018, : 410 - 414
  • [45] Cross-national policy learning in health system reform: The case of Diagnosis Related Groups
    Schmid, Achim
    Goetze, Ralf
    INTERNATIONAL SOCIAL SECURITY REVIEW, 2009, 62 (04) : 21 - 40
  • [46] SOLAR IRRADIANCE FORECASTING USING KERNEL EXTREME LEARNING MACHINE: CASE STUDY AT LAMONGAN AND MUARA KARANG REGIONS, INDONESIA
    Abdillah, Muhammad
    Pramudito, Wahyu Agung
    Nugroho, Teguh Aryo
    Fitria, Dina Nurul
    JOURNAL OF ENGINEERING SCIENCE AND TECHNOLOGY, 2022, 17 (02): : 1561 - 1576
  • [47] Predicting Cardiovascular Risk Level Based on Biochemical Risk Factor Indicators Using Machine Learning: A Case Study in Indonesia
    Heryadi, Yaya
    Kosala, Raymond
    Bahana, Raymond
    Suteja, Indrajani
    INTELLIGENT INFORMATION AND DATABASE SYSTEMS, ACIIDS 2019, PT II, 2019, 11432 : 707 - 717
  • [48] Flood impact assessment in remote areas using machine learning, SAR, and GIS: a case study of Ngabang District, Indonesia
    Sampurno, Joko
    Putra, Muhammad Ghaza Eka
    Faryuni, Irfana Diah
    Adriat, Riza
    JOURNAL OF HYDROINFORMATICS, 2024, 26 (11) : 2928 - 2938
  • [49] Association of preterm birth with medications: machine learning analysis using national health insurance data
    Kwang-Sig Lee
    In-Seok Song
    Eun Sun Kim
    Hae-In Kim
    Ki Hoon Ahn
    Archives of Gynecology and Obstetrics, 2022, 305 : 1369 - 1376
  • [50] Predicting Cross-Selling Health Insurance Products Using Machine-Learning Techniques
    Mavundla, Khulekani
    Thakur, Surendra
    Adetiba, Emmanuel
    Abayomi, Abdultaofeek
    JOURNAL OF COMPUTER INFORMATION SYSTEMS, 2024,