Publication:
Targeting resources efficiently and justifiably by combining causal machine learning and theory

dc.contributor.departmentDepartment of Business Administration
dc.contributor.kuauthorAli, Özden Gür
dc.contributor.kuprofileFaculty Member
dc.contributor.otherDepartment of Business Administration
dc.contributor.schoolcollegeinstituteCollege of Administrative Sciences and Economics
dc.contributor.yokid57780
dc.date.accessioned2024-11-10T00:04:33Z
dc.date.issued2022
dc.description.abstractIntroduction: Efficient allocation of limited resources relies on accurate estimates of potential incremental benefits for each candidate. these heterogeneous treatment effects (HTE) can be estimated with properly specified theory-driven models and observational data that contain all confounders. Using causal machine learning to estimate HTE from big data offers higher benefits with limited resources by identifying additional heterogeneity dimensions and fitting arbitrary functional forms and interactions, but decisions based on black-box models are not justifiable. MethodsOur solution is designed to increase resource allocation efficiency, enhance the understanding of the treatment effects, and increase the acceptance of the resulting decisions with a rationale that is in line with existing theory. the case study identifies the right individuals to incentivize for increasing their physical activity to maximize the population's health benefits due to reduced diabetes and heart disease prevalence. We leverage large-scale data from multi-wave nationally representative health surveys and theory from the published global meta-analysis results. We train causal machine learning ensembles, extract the heterogeneity dimensions of the treatment effect, sign, and monotonicity of its moderators with explainable aI, and incorporate them into the theory-driven model with our generalized linear model with the qualitative constraint (GLM_QC) method. Resultsthe results show that the proposed methodology improves the expected health benefits for diabetes by 11% and for heart disease by 9% compared to the traditional approach of using the model specification from the literature and estimating the model with large-scale data. Qualitative constraints not only prevent counter-intuitive effects but also improve achieved benefits by regularizing the model.
dc.description.indexedbyWoS
dc.description.indexedbyScopus
dc.description.indexedbyPubMed
dc.description.openaccessYES
dc.description.publisherscopeInternational
dc.description.sponsoredbyTubitakEuN/A
dc.description.volume5
dc.identifier.doi10.3389/frai.2022.1015604
dc.identifier.eissn2624-8212
dc.identifier.quartileQ3
dc.identifier.scopus2-s2.0-85144323557
dc.identifier.urihttp://dx.doi.org/10.3389/frai.2022.1015604
dc.identifier.urihttps://hdl.handle.net/20.500.14288/16272
dc.identifier.wos915871200001
dc.keywordsCausal machine learning
dc.keywordsInterpretability
dc.keywordsExplainable aI
dc.keywordsHeterogeneous treatment effects
dc.keywordsMonotonicity constraints
dc.keywordsPublic health
dc.keywordsEfficient resource allocation
dc.languageEnglish
dc.publisherFrontiers Media Sa
dc.sourceFrontiers in artificial intelligence
dc.subjectComputer science, Artificial intelligence
dc.subjectComputer science, information systems
dc.titleTargeting resources efficiently and justifiably by combining causal machine learning and theory
dc.typeJournal Article
dspace.entity.typePublication
local.contributor.authorid0000-0002-9409-4532
local.contributor.kuauthorAli, Özden Gür
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relation.isOrgUnitOfPublication.latestForDiscoveryca286af4-45fd-463c-a264-5b47d5caf520

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