2023
DOI: 10.3390/math11153412
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A New Instrumental-Type Estimator for Quantile Regression Models

Li Tao,
Lingnan Tai,
Manling Qian
et al.

Abstract: This paper proposes a new instrumental-type estimator of quantile regression models for panel data with fixed effects. The estimator is built upon the minimum distance, which is defined as the weighted average of the conventional individual instrumental variable quantile regression slope estimators. The weights assigned to each estimator are determined by the inverses of their corresponding individual variance–covariance matrices. The implementation of the estimation has many advantages in terms of computation… Show more

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