BEND R Package for Bayesian Nonlinear Longitudinal Data

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BEND R Package for Bayesian Nonlinear Longitudinal Data
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AFBytes Brief

The paper presents the BEND R package for Bayesian estimation of nonlinear longitudinal data. Longitudinal structures receive specific modeling attention. The software facilitates flexible Bayesian workflows.

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Open statistical software supports reproducible analysis in medical and social research.

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Academic statistical contributions follow standard peer review and publication procedures.

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