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Autores principales: Cripps, Sally, Lopatnikova, Anna, Afshar, Hadi Mohasel, Gales, Ben, Marchant, Roman, Francis, Gilad, Moreira, Catarina, Fischer, Alex
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2406.02868
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author Cripps, Sally
Lopatnikova, Anna
Afshar, Hadi Mohasel
Gales, Ben
Marchant, Roman
Francis, Gilad
Moreira, Catarina
Fischer, Alex
author_facet Cripps, Sally
Lopatnikova, Anna
Afshar, Hadi Mohasel
Gales, Ben
Marchant, Roman
Francis, Gilad
Moreira, Catarina
Fischer, Alex
contents This paper proposes Bayesian Adaptive Trials (BAT) as both an efficient method to conduct trials and a unifying framework for evaluation social policy interventions, addressing limitations inherent in traditional methods such as Randomized Controlled Trials (RCT). Recognizing the crucial need for evidence-based approaches in public policy, the proposal aims to lower barriers to the adoption of evidence-based methods and align evaluation processes more closely with the dynamic nature of policy cycles. BATs, grounded in decision theory, offer a dynamic, ``learning as we go'' approach, enabling the integration of diverse information types and facilitating a continuous, iterative process of policy evaluation. BATs' adaptive nature is particularly advantageous in policy settings, allowing for more timely and context-sensitive decisions. Moreover, BATs' ability to value potential future information sources positions it as an optimal strategy for sequential data acquisition during policy implementation. While acknowledging the assumptions and models intrinsic to BATs, such as prior distributions and likelihood functions, the paper argues that these are advantageous for decision-makers in social policy, effectively merging the best features of various methodologies.
format Preprint
id arxiv_https___arxiv_org_abs_2406_02868
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Bayesian Adaptive Trials for Social Policy
Cripps, Sally
Lopatnikova, Anna
Afshar, Hadi Mohasel
Gales, Ben
Marchant, Roman
Francis, Gilad
Moreira, Catarina
Fischer, Alex
Applications
This paper proposes Bayesian Adaptive Trials (BAT) as both an efficient method to conduct trials and a unifying framework for evaluation social policy interventions, addressing limitations inherent in traditional methods such as Randomized Controlled Trials (RCT). Recognizing the crucial need for evidence-based approaches in public policy, the proposal aims to lower barriers to the adoption of evidence-based methods and align evaluation processes more closely with the dynamic nature of policy cycles. BATs, grounded in decision theory, offer a dynamic, ``learning as we go'' approach, enabling the integration of diverse information types and facilitating a continuous, iterative process of policy evaluation. BATs' adaptive nature is particularly advantageous in policy settings, allowing for more timely and context-sensitive decisions. Moreover, BATs' ability to value potential future information sources positions it as an optimal strategy for sequential data acquisition during policy implementation. While acknowledging the assumptions and models intrinsic to BATs, such as prior distributions and likelihood functions, the paper argues that these are advantageous for decision-makers in social policy, effectively merging the best features of various methodologies.
title Bayesian Adaptive Trials for Social Policy
topic Applications
url https://arxiv.org/abs/2406.02868