A bivariate first order autoregressive time series model in exponential variables (BEAR (1))

by

6 min read
Rate this book:
32 pages 1986

About This Book

A simple time series model for bivariate exponential variables having first-order auto-regressive structure is presented. The linear random coefficient difference equation model is an adaptation of the New Exponential Autoregressive model (NEAR (2)). The process is Markovian in the bivariate sense and has correlation structure analogous to that of the Gaussian AR(1) bivariate time series model. The model exhibits a full range of positive correlations and cross-correlations. With some modification in either the innovation or the random coefficients, the model admits some negative values for the cross- correlations. The marginal processes are shown to have correlation structure of ARMA (2,1) models.

Buy This Book

As an Amazon Associate and Bookshop.org affiliate, BookOrb earns from qualifying purchases.

Write a Review

Sign in to write a review.