Author:
Grublytė Ieva,Surgailis Donatas
Abstract
A projective moving average {X
t
, t ∈ ℤ} is a Bernoulli shift written as a backward martingale transform of the innovation sequence. We introduce a new class of nonlinear stochastic equations for projective moving averages, termed projective equations, involving a (nonlinear) kernel Q and a linear combination of projections of X
t
on ‘intermediate’ lagged innovation subspaces with given coefficients α
i
and β
i,j
. The class of such equations includes usual moving average processes and the Volterra series of the LARCH model. Solvability of projective equations is obtained using a recursive equality for projections of the solution X
t
. We show that, under certain conditions on Q, α
i
, and β
i,j
, this solution exhibits covariance and distributional long memory, with fractional Brownian motion as the limit of the corresponding partial sums process.
Publisher
Cambridge University Press (CUP)
Subject
Applied Mathematics,Statistics and Probability
Cited by
1 articles.
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