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Horseshoe prior Bayesian quantile regression
David Kohns
*
, Tibor Szendrei
*
Corresponding author for this work
School of Social Sciences
Research output
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Contribution to journal
›
Article
›
peer-review
4
Citations (Scopus)
24
Downloads (Pure)
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INIS
risks
100%
density
100%
comparative evaluations
100%
performance
100%
growth
50%
applications
50%
dimensions
50%
design
50%
algorithms
50%
yields
50%
calibration
50%
coverings
50%
errors
50%
calculation methods
50%
sampling
50%
forecasting
50%
shrinkage
50%
Mathematics
Bayesian Prior
100%
Quantile Regression
100%
Bayesian
66%
Quantile
66%
score function ψ
33%
Higher Dimensions
33%
Engineering
Quantile
100%
Forecast Error
20%
Score Function
20%
Economics, Econometrics and Finance
Bayesian
100%
Macroeconomic Variable
33%