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Mincer-Zarnowitz quantile and expectile regressions for forecast evaluations under aysmmetric loss functions
Kemal Guler,
Pin T Ng
, Zhijie Xiao
Business, W.A. Franke College of
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Mathematics
Forecast Evaluation
Forecast
Quantile Regression
Loss Function
Regression
Business & Economics
Quantile Regression
Forecast Evaluation
Loss Function
Asymmetric Loss
Summary Statistic
Forecast Error
Federal Reserve
Optimality
Testing
Engineering & Materials Science
Statistics
Economics
Testing
Supply chains
Mean square error
Set theory
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