A substantial body of work in the last 15 years has shown that expectiles constitute an excellent candidate for becoming a standard tool in probabilistic and statistical modeling. Surprisingly, the question of how expectiles may be efficiently calculated has been left largely untouched. We fill this gap by, first, providing a general outlook on the computation of expectiles that relies on the knowledge of analytic expressions of the underlying distribution function and mean residual life function. We distinguish between discrete distributions, for which an exact calculation is always feasible, and continuous distributions, where a Newton-Raphson approximation algorithm can be implemented and a list of exceptional distributions whose expecti...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Estimating reliability and hazard rate functions for various types of distributions based on sample ...
This paper concerns prediction from the frequentist point of view. The aim is to define a well-calib...
In this thesis we present an alternative to quantiles, which is known as expectiles. At first we def...
While initially motivated from a demographic application, this thesis develops methodology for expec...
Expectile models are derived using asymmetric least squares. A simple formula has been presented tha...
Expectile models are derived using asymmetric least squares. A simple formula has been presented tha...
Expectiles and quantiles can both be defined as the solution of minimization problems. Contrary to q...
Expectiles define a least squares analogue of quantiles. They are determined by tail expectations ra...
Quantiles are computed by optimizing an asymmetrically weighted L, norm, i.e. the sum of absolute va...
This concise, yet thorough, book is enhanced with simulations and graphs to build the intuition of r...
International audienceExpectiles form a family of risk measures that have recently gained interest o...
Abstract. Given an imprecise probabilistic model over a continuous space, computing lower/upper expe...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
We are interested in the question of how to learn rules, when those rules make probabilistic stateme...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Estimating reliability and hazard rate functions for various types of distributions based on sample ...
This paper concerns prediction from the frequentist point of view. The aim is to define a well-calib...
In this thesis we present an alternative to quantiles, which is known as expectiles. At first we def...
While initially motivated from a demographic application, this thesis develops methodology for expec...
Expectile models are derived using asymmetric least squares. A simple formula has been presented tha...
Expectile models are derived using asymmetric least squares. A simple formula has been presented tha...
Expectiles and quantiles can both be defined as the solution of minimization problems. Contrary to q...
Expectiles define a least squares analogue of quantiles. They are determined by tail expectations ra...
Quantiles are computed by optimizing an asymmetrically weighted L, norm, i.e. the sum of absolute va...
This concise, yet thorough, book is enhanced with simulations and graphs to build the intuition of r...
International audienceExpectiles form a family of risk measures that have recently gained interest o...
Abstract. Given an imprecise probabilistic model over a continuous space, computing lower/upper expe...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
We are interested in the question of how to learn rules, when those rules make probabilistic stateme...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Estimating reliability and hazard rate functions for various types of distributions based on sample ...
This paper concerns prediction from the frequentist point of view. The aim is to define a well-calib...