In the mathematical theory of probability, the expectiles of a probability distribution are related to the expected value of the distribution in a way analogous to that in which the quantiles of the distribution are related to the median.
For
, the expectile
at level
of the probability distribution with cumulative distribution function
is uniquely characterized by any of the following equivalent conditions:[1][2][3]
![{\displaystyle {\begin{aligned}&(1-\tau )\int _{-\infty }^{t}(t-x)\,dF(x)=\tau \int _{t}^{\infty }(x-t)\,dF(x);\\[5pt]&\int _{-\infty }^{t}|t-x|\,dF(x)=\tau \int _{-\infty }^{\infty }|x-t|\,dF(x);\\[5pt]&t-\operatorname {E} [X]={\frac {2\tau -1}{1-\tau }}\int _{t}^{\infty }(x-t)\,dF(x).\end{aligned}}}](./_assets_/eb734a37dd21ce173a46342d1cc64c92/159938284ce5eb9d3d068d9fe04d118a5efe5c8a.svg)
Quantile regression minimizes an asymmetric
loss (see least absolute deviations):
![{\displaystyle {\begin{aligned}\operatorname {quantile} (\tau )&\in \operatorname {argmin} _{t\in \mathbb {R} }\operatorname {E} [|X-t||\tau -H(t-X)|],\end{aligned}}}](./_assets_/eb734a37dd21ce173a46342d1cc64c92/b465510056241bb2f6639e385807251d23a6c64b.svg)
where
is the Heaviside step function; analogously, expectile regression minimizes an asymmetric
loss (see ordinary least squares):
![{\displaystyle {\begin{aligned}\operatorname {expectile} (\tau )&\in \operatorname {argmin} _{t\in \mathbb {R} }\operatorname {E} [|X-t|^{2}|\tau -H(t-X)|].\end{aligned}}}](./_assets_/eb734a37dd21ce173a46342d1cc64c92/34d0fa3a0bf9ea9e0e64cb7afe7f50257a1c2c27.svg)
References
- ^ Werner Ehm, Tilmann Gneiting, Alexander Jordan, Fabian Krüger, "Of Quantiles and Expectiles: Consistent Scoring Functions, Choquet Representations, and Forecast Rankings," arxiv
- ^ Yuwen Gu and Hui Zou, "Aggregated Expectile Regression by Exponential Weighting," Statistica Sinica, https://www3.stat.sinica.edu.tw/preprint/SS-2016-0285_Preprint.pdf
- ^ Whitney K. Newey, "Asymmetric Least Squares Estimation and Testing," Econometrica, volume 55, number 4, pp. 819–47.