Quantile and probability curves without crossing
<p><p><p><p><p>The most common approach to estimating conditional quantile curves is to fit a curve, typically linear, pointwise for each quantile. Linear functional forms, coupled with pointwise fitting, are used for a number of reasons including parsimony of the resulting approximations and good computational properties. The resulting fits, however, may not respect a logical monotonicity requirement that the quantile curve be increasing as a function of probability. This paper studies the natural monotonization of these empirical curves induced by sampling from the estimated non-monotone model, and then taking the resulting conditional quantile curves that by construction are monotone in the probability.
Year of publication: |
2007-04
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Authors: | Chernozhukov, Victor ; Fernandez-Val, Ivan ; Galichon, Alfred |
Institutions: | Centre for Microdata Methods and Practice (CEMMAP) |
Saved in:
freely available
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