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A Bayesian approach for subgroup analysis.

Nan Li1, Wensheng Zhu1

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|March 13, 2023
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Summary
This summary is machine-generated.

This study introduces a novel Bayesian hierarchical model for identifying homogeneous subgroups in regression analysis. The method efficiently detects subgroups using pairwise intercept differences, outperforming traditional penalization techniques in computational speed.

Keywords:
Bayesian hierarchical modelGibbs samplerscale mixture of normalssubgroup analysis

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Area of Science:

  • Statistical modeling
  • Biostatistics
  • Machine learning

Background:

  • Existing penalization methods for subgroup analysis in regression models with subject-specific intercepts rely on pairwise intercept comparisons.
  • These methods often employ concave penalty functions, mirroring variable selection techniques.
  • Bayesian approaches are prevalent in variable selection, suggesting their potential utility in subgroup analysis.

Purpose of the Study:

  • To develop a Bayesian hierarchical model for identifying homogeneous subgroups based on subject-specific intercepts in regression analysis.
  • To automatically detect and group subjects with similar intercept values.
  • To offer a computationally efficient alternative to existing penalization methods.

Main Methods:

  • A Bayesian hierarchical model is proposed, incorporating prior structures for pairwise intercept differences.
  • A Gibbs sampling algorithm is utilized for hyperparameter selection and simultaneous estimation of intercepts and covariate coefficients.
  • The model is evaluated using simulation studies and applied to the Cleveland Heart Disease Dataset.

Main Results:

  • The proposed Bayesian method effectively identifies homogeneous subgroups.
  • The Gibbs sampling algorithm provides computationally efficient parameter estimation and hyperparameter selection.
  • The method demonstrates superior performance compared to penalization techniques, especially for large datasets.

Conclusions:

  • The developed Bayesian hierarchical model offers an effective and computationally efficient approach for subgroup analysis.
  • This method automatically detects homogeneous subgroups by analyzing pairwise intercept differences.
  • The findings suggest a promising Bayesian framework for subgroup identification in regression modeling.