A time-varying quantile can be fitted by formulating a time series model for the corresponding population quantile and iteratively applying a suitably modified state space signal extraction algorithm. It is shown that such quantiles satisfy the defining property of fixed quantiles in having the appropriate number of observations above and below. Like quantiles, time-varying expectiles can be estimated by a state space signal extraction algorithm and they satisfy properties that generalize the moment conditions associated with fixed expectiles. Because the state space form can handle irregularly spaced observations, the proposed algorithms can be adapted to provide a viable means of computing spline-based non-parametric quantile and expectil...
We consider the problem of estimating the conditional quantile of a time series at time \(t\) given ...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
Recently, the non-stationary time series data attracts increased attention from researchers. The mai...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
A time-varying quantile can be fitted by formulating a time series model for the corresponding popul...
A time-varying quantile can be \u85tted to a sequence of observa-tions by formulating a state space ...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
In this thesis we present an alternative to quantiles, which is known as expectiles. At first we def...
Accurate estimation of output quantiles is crucial in many use cases, where it is desired to model t...
A smoothing spline is considered to propose a novel model for the time-varying quantile of the univa...
Motivated by a broad range of potential applications, we address the quantile prediction problem of ...
This book integrates the fundamentals of asymptotic theory of statistical inference for time series ...
This paper applies techniques of Quantile Data Analysis to non-parametrically analyze time series fu...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
We consider the problem of estimating the conditional quantile of a time series at time \(t\) given ...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
Recently, the non-stationary time series data attracts increased attention from researchers. The mai...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
A time-varying quantile can be fitted by formulating a time series model for the corresponding popul...
A time-varying quantile can be \u85tted to a sequence of observa-tions by formulating a state space ...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
In this thesis we present an alternative to quantiles, which is known as expectiles. At first we def...
Accurate estimation of output quantiles is crucial in many use cases, where it is desired to model t...
A smoothing spline is considered to propose a novel model for the time-varying quantile of the univa...
Motivated by a broad range of potential applications, we address the quantile prediction problem of ...
This book integrates the fundamentals of asymptotic theory of statistical inference for time series ...
This paper applies techniques of Quantile Data Analysis to non-parametrically analyze time series fu...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
We consider the problem of estimating the conditional quantile of a time series at time \(t\) given ...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
Recently, the non-stationary time series data attracts increased attention from researchers. The mai...