Handbook of Quantile Regression

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Accelerated Failure Time Model
Alexandre Belloni
Antonio F. Galvao
Bayesian Quantile Regression
Blaise Melly
Brian S. Cade
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Christian Hansen
Conditional Quantile
Conditional Quantile Function
econometrics
Empirical Likelihood
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Extremal Quantile
extremes
Gilbert W. Bassett
Gilles Durrieu
Halfspace Depth
high dimensional inference
Huixia Judy Wang
Interior Point Methods
Ivan Mizera
IvFernez-Val
Joydeep Chowdhury
Kaplan Meier Estimator
Kaspar Wuthrich
Kengo Kato
Lan Wang
Laurent Briollais
Left Truncation
Limin Peng
Linear Quantile Model
Linear Quantile Regression
Linear Quantile Regression Model
longitudinal data
Manuel Arellano
Marc Hallin
Marginal Quantiles
Miroslav Siman
Oliver Linton
Probal Chaudhuri
QR
QTE
Quantile Function
Quantile Level
Quantile Model
Quantile Region
Quantile Regression Estimates
Quantile Regression Estimator
Quantile Regression Methods
Quantile Regression Model
Ruosha Li
Stephane Bonhomme
survival analysis
Tetsuya Kaji
time series
Tony Sit
Victor Chernozhukov
Weighted Quantile Regression
Xuming He
Ying Wei
Yunwen Yang
Zhijie Xiao
Zhiliang Ying

Product details

  • ISBN 9780367657574
  • Weight: 940g
  • Dimensions: 178 x 254mm
  • Publication Date: 30 Sep 2020
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Quantile regression constitutes an ensemble of statistical techniques intended to estimate and draw inferences about conditional quantile functions. Median regression, as introduced in the 18th century by Boscovich and Laplace, is a special case. In contrast to conventional mean regression that minimizes sums of squared residuals, median regression minimizes sums of absolute residuals; quantile regression simply replaces symmetric absolute loss by asymmetric linear loss.

Since its introduction in the 1970's by Koenker and Bassett, quantile regression has been gradually extended to a wide variety of data analytic settings including time series, survival analysis, and longitudinal data. By focusing attention on local slices of the conditional distribution of response variables it is capable of providing a more complete, more nuanced view of heterogeneous covariate effects. Applications of quantile regression can now be found throughout the sciences, including astrophysics, chemistry, ecology, economics, finance, genomics, medicine, and meteorology. Software for quantile regression is now widely available in all the major statistical computing environments.

The objective of this volume is to provide a comprehensive review of recent developments of quantile regression methodology illustrating its applicability in a wide range of scientific settings.

The intended audience of the volume is researchers and graduate students across a diverse set of disciplines.

Roger Koenker, University of Illinois

Victor Chernozhukov, MIT

Xuming He, University of Michigan

Limin Peng, Emory University