Nonparametric quantile estimation
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Takeuchi, Ichiro
Le, Quoc
Sears, Timothy
Smola, Alexander
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MIT Press
Abstract
In regression, the desired estimate of y|x is not always given by a conditional mean, although
this is most common. Sometimes one wants to obtain a good estimate that satisfies the property
that a proportion, t, of y|x, will be below the estimate. For t = 0.5 this is an estimate of the
median. What might be called median regression, is subsumed under the term quantile regression.
We present a nonparametric version of a quantile estimator, which can be obtained by solving a
simple quadratic programming problem and provide uniform convergence statements and bounds
on the quantile property of our estimator. Experimental results show the feasibility of the approach
and competitiveness of our method with existing ones. We discuss several types of extensions
including an approach to solve the quantile crossing problems, as well as a method to incorporate
prior qualitative knowledge such as monotonicity constraints.
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Journal of Machine Learning Research 7 (2006): 1231-1264
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Journal of Machine Learning Research
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