Javascript must be enabled to continue!
Designing Optimal, Data-Driven Policies from Multisite Randomized Trials
View through CrossRef
Optimal treatment regimes (OTRs) have been widely employed in computer science and personalized medicine to provide data-driven, optimal recommendations to individuals. However, previous research on OTRs has primarily focused on settings that are independent and identically distributed, with little attention given to the unique characteristics of educational settings, where students are nested within schools and there are hierarchical dependencies. The goal of this study is to propose a framework for designing OTRs from multisite randomized trials, a commonly used experimental design in education and psychology to evaluate educational programs. We investigate modifications to popular OTR methods, specifically Q-learning and weighting methods, in order to improve their performance in multisite randomized trials. A total of 12 modifications, 6 for Q-learning and 6 for weighting, are proposed by utilizing different multilevel models, moderators, and augmentations. Simulation studies reveal that all Q-learning modifications improve performance in multisite randomized trials and the modifications that incorporate random treatment effects show the most promise in handling cluster-level moderators. Among weighting methods, the modification that incorporates cluster dummies into moderator variables and augmentation terms performs best across simulation conditions. The proposed modifications are demonstrated through an application to estimate an OTR of conditional cash transfer programs using a multisite randomized trial in Colombia to maximize educational attainment.
Title: Designing Optimal, Data-Driven Policies from Multisite Randomized Trials
Description:
Optimal treatment regimes (OTRs) have been widely employed in computer science and personalized medicine to provide data-driven, optimal recommendations to individuals.
However, previous research on OTRs has primarily focused on settings that are independent and identically distributed, with little attention given to the unique characteristics of educational settings, where students are nested within schools and there are hierarchical dependencies.
The goal of this study is to propose a framework for designing OTRs from multisite randomized trials, a commonly used experimental design in education and psychology to evaluate educational programs.
We investigate modifications to popular OTR methods, specifically Q-learning and weighting methods, in order to improve their performance in multisite randomized trials.
A total of 12 modifications, 6 for Q-learning and 6 for weighting, are proposed by utilizing different multilevel models, moderators, and augmentations.
Simulation studies reveal that all Q-learning modifications improve performance in multisite randomized trials and the modifications that incorporate random treatment effects show the most promise in handling cluster-level moderators.
Among weighting methods, the modification that incorporates cluster dummies into moderator variables and augmentation terms performs best across simulation conditions.
The proposed modifications are demonstrated through an application to estimate an OTR of conditional cash transfer programs using a multisite randomized trial in Colombia to maximize educational attainment.
Related Results
Prediction of multisite pain incidence in adolescence using a machine learning approach
Prediction of multisite pain incidence in adolescence using a machine learning approach
Abstract
Importance
Multisite pain is a major adverse health outcome in the adolescent population, affecting the daily lives of...
How is missing data handled in cluster randomized controlled trials? A review of trials published in the NIHR Journals Library 1997–2024
How is missing data handled in cluster randomized controlled trials? A review of trials published in the NIHR Journals Library 1997–2024
Background:
Cluster randomized controlled trials are increasingly used to evaluate the effectiveness of interventions in clinical and public health research. However, m...
[RETRACTED] Optimal Max Keto - Does It ReallyWork? v1
[RETRACTED] Optimal Max Keto - Does It ReallyWork? v1
[RETRACTED]Shedding the unwanted weight and controlling the calories of your body is the most challenging and complicated process. As we start aging, we have to deal with lots of...
Current therapeutic strategies for erectile function recovery after radical prostatectomy – literature review and meta-analysis
Current therapeutic strategies for erectile function recovery after radical prostatectomy – literature review and meta-analysis
Radical prostatectomy is the most commonly performed treatment option for localised prostate cancer. In the last decades the surgical technique has been improved and modified in or...
Efficient and Effective Gas Sensor Calibration with Randomized Gas Mixtures
Efficient and Effective Gas Sensor Calibration with Randomized Gas Mixtures
Introduction
The selective quantification of target gases in complex mixtures is an important part of numerous applications of chemical gas sensors. ...
Rotavirus vaccine clinical trials: a cross-sectional analysis of clinical trials registries
Rotavirus vaccine clinical trials: a cross-sectional analysis of clinical trials registries
Abstract
Background
Rotavirus is a primary infectious virus causing childhood diarrhoea and is associated with significant mortality in children. Th...
Large Pediatric Randomized Clinical Trials in ClinicalTrials.gov
Large Pediatric Randomized Clinical Trials in ClinicalTrials.gov
BACKGROUND
Large, randomized controlled trials (RCTs) are essential in answering pivotal questions in child health.
...
Multisite PLM Platform
Multisite PLM Platform
Today, product development is a result of a collaborative design process in network. Taking into consideration this fact, a National Research Network for Integrated Product and Pro...

