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Generalized expectile regression with flexible response function.

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|March 18, 2021
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Summary
This summary is machine-generated.

Expectile regression can be biased with nonlinear data. This study introduces a novel method to estimate response functions jointly with covariate effects, improving accuracy for limited-range data like hearing scores.

Keywords:
P-splinedistributional regressiongeneralized additive modelsmonotonicity constraintssingle index models

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Area of Science:

  • Statistics
  • Econometrics
  • Biostatistics

Background:

  • Expectile regression generalizes least squares, modeling entire distributions without parametric assumptions.
  • It offers flexibility similar to semiparametric mean regression but assumes linear predictor-response relationships.
  • Nonlinear relationships can cause significant bias in parameter estimates and predictions, especially with bounded outcome variables.

Purpose of the Study:

  • To address biases in expectile regression caused by nonlinear relationships between predictors and responses.
  • To develop a method that ensures predictions remain within the valid range of bounded outcome variables.
  • To improve the analysis of self-reported scores, such as hearing ability.

Main Methods:

  • Proposed a novel expectile regression framework incorporating an estimated response function.
  • Designed the response function as a monotonically increasing P-spline, allowing for constraints.
  • Estimated the response function and covariate effects simultaneously.

Main Results:

  • The proposed method produced valid estimates for a self-reported listening effort score.
  • Nonlinear estimation of the response function corrected biases observed in classical expectile regression.
  • Strong associations were found between the model's predictions and the speech reception threshold.

Conclusions:

  • Jointly estimating the response function and covariate effects in expectile regression effectively handles nonlinearities and bounded outcomes.
  • This approach enhances the reliability of expectile regression for analyzing real-world data with inherent constraints.
  • The method shows promise for applications in audiology and other fields analyzing limited-range self-reported data.