Quantile-based Fréchet half logistic distribution and its Bayesian inference
Key Points
Bayesian inference yields robust posterior estimates for the Fréchet distribution parameters, highlighting its flexibility.
The study incorporates quantile-based methods to improve estimation accuracy and demonstrate their effectiveness, with clear benefits over traditional approaches.
Observational analysis using quantile frameworks reveals significant improvements in parameter estimation for complex datasets.
Implications for statistical modeling are promising, particularly in fields requiring advanced probabilistic methods.