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]

Quantile regression minimizes an asymmetric loss (see least absolute deviations):

where is the Heaviside step function; analogously, expectile regression minimizes an asymmetric loss (see ordinary least squares):


References

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  1. ^ Werner Ehm, Tilmann Gneiting, Alexander Jordan, Fabian Krüger, "Of Quantiles and Expectiles: Consistent Scoring Functions, Choquet Representations, and Forecast Rankings," arxiv
  2. ^ 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
  3. ^ Whitney K. Newey, "Asymmetric Least Squares Estimation and Testing," Econometrica, volume 55, number 4, pp. 819–47.

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List of probability distributions

normal distribution with the negative of an exponential distribution. The expectile distribution, which nests the Gaussian distribution in the symmetric case

Quantile

first bucketing by quantile Interquartile range Descriptive statistics Expectile – related to expectations in a way analogous to that in which quantiles

Expected value

mean Central tendency Conditional expectation Expectation (epistemic) Expectile – related to expectations in a way analogous to that in which quantiles

Quantile function

Ehm, W.; Gneiting, T.; Jordan, A.; Krüger, F. (2016). "Of quantiles and expectiles: Consistent scoring functions, Choquet representations, and forecast rankings"

Risk measure

Tail conditional expectation Entropic risk measure Superhedging price Expectile Variance (or standard deviation) is not a risk measure in the above sense