Transformed-Linear Innovations Algorithm for Modeling and Forecasting of Time Series Extremes

09/18/2023
by   Nehali Mhatre, et al.
0

The innovations algorithm is a classical recursive forecasting algorithm used in time series analysis. We develop the innovations algorithm for a class of nonnegative regularly varying time series models constructed via transformed-linear arithmetic. In addition to providing the best linear predictor, the algorithm also enables us to estimate parameters of transformed-linear regularly-varying moving average (MA) models, thus providing a tool for modeling. We first construct an inner product space of transformed-linear combinations of nonnegative regularly-varying random variables and prove its link to a Hilbert space which allows us to employ the projection theorem, from which we develop the transformed-linear innovations algorithm. Turning our attention to the class of transformed linear MA(∞) models, we give results on parameter estimation and also show that this class of models is dense in the class of possible tail pairwise dependence functions (TPDFs). We also develop an extremes analogue of the classical Wold decomposition. Simulation study shows that our class of models captures tail dependence for the GARCH(1,1) model and a Markov time series model, both of which are outside our class of models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/05/2021

Transformed-linear prediction for extremes

We consider the problem of performing prediction when observed values ar...
research
12/12/2020

Transformed-Linear Models for Time Series Extremes

In order to capture the dependence in the upper tail of a time series, w...
research
10/05/2022

Partial Tail Correlation for Extremes

We develop a method for investigating conditional extremal relationships...
research
04/29/2022

Tail Adversarial Stability for Regularly Varying Linear Processes and their Extensions

The recently introduced notion of tail adversarial stability has been pr...
research
03/02/2019

Goodness-of-Fit Testing for Time Series Models via Distance Covariance

In many statistical modeling frameworks, goodness-of-fit tests are typic...
research
09/10/2021

Implicit Copulas: An Overview

Implicit copulas are the most common copula choice for modeling dependen...

Please sign up or login with your details

Forgot password? Click here to reset