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A propensity score approach for treatment evaluation based on Bayesian Networks

Authors :
Cugnata, F
Rancoita, PMV
i Conti, PL
Briganti, A
Di Serio, C
Mecatti, F
Vicard, P
Perna C., Salvati N., Schirripa Spagnolo F.
Cugnata, Federica
Rancoita, Paola M. V.
Luigi Conti, Pier
Briganti, Alberto
Di Serio, Clelia
Mecatti, Fulvia
Vicard, Paola
Perna, C
Salvati, N
Schirripa Spagnolo, F
Cugnata, F
Rancoita, P
i Conti, P
Briganti, A
Di Serio, C
Mecatti, F
Vicard, P
Publication Year :
2021
Publisher :
Pearson, 2021.

Abstract

In observational studies evaluating the treatment effect on a given out- come, the treated and untreated subjects may be highly unbalanced in their observed covariates, and these differences can lead to biased estimates of treatment effects. Propensity score is popular tool to reduce this bias. In this work we propose to esti- mate the propensity score by using Bayesian Networks as alternative to conventional logistic regression. Based on it, we develop an inferential methodology to evaluate the treatment effect. In simulation study, our proposed approach resulted in the best performance.

Details

Database :
OpenAIRE
Accession number :
edsair.dedup.wf.001..43c78766893fbf66154a58a60a7c5e11