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Semiparametric efficient adaptive estimation of the GJR-GARCH model

  • Nicola Ciccarelli EMAIL logo
Published/Copyright: August 9, 2018
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Abstract

In this paper we derive a semiparametric efficient adaptive estimator for the GJR-GARCH(1,1) model. We first show that the quasi-maximum likelihood estimator is consistent and asymptotically normal for the model used in analysis, and we secondly derive a semiparametric estimator that is more efficient than the quasi-maximum likelihood estimator. Through Monte Carlo simulations, we show that the semiparametric estimator is adaptive for the parameters included in the conditional variance of the GJR-GARCH(1,1) model with respect to the unknown distribution of the innovation.

MSC 2010: 62F35; 62G07; 62F40

A Analytical solution for the location-scale score

In this section we report the analytical solution for

ψt(θ0)=-(1+ηt(θ0)f(ηt(θ0))f(ηt(θ0)))

for each zero mean and unit variance innovation ηt Below 𝟙{} denotes the indicator function.

Normal(0,1) innovation:

ψt(θ0)=-(1-ηt2).

Laplace(0,1) innovation:

ψt(θ0)=-(1-10.5ηt2).

Gaussian mixture innovation:

ψt(θ0)=-1-ηt5{[exp(-0.5(5ηt-2)2)[-(5ηt-2)]+exp(-0.5(5ηt+2)2)[-(5ηt+2)]]exp(-0.5(5ηt-2)2)+exp(-0.5(5ηt+2)2)}.

t5-student innovation:

ψt(θ0)=-(1-6ηt25+ηt2).

t7-student innovation:

ψt(θ0)=-(1-8ηt27+ηt2).

t9-student innovation:

ψt(θ0)=-(1-10ηt29+ηt2).

t11-student innovation:

ψt(θ0)=-(1-12ηt211+ηt2).

t13-student innovation:

ψt(θ0)=-(1-14ηt213+ηt2).

χ62 innovation:

ψt(θ0)=-(1-12ηt+6ηt212ηt+6𝟙{12ηt+60}).

χ122 innovation:

ψt(θ0)=-(1-24ηt+12ηt224ηt+12𝟙{24ηt+120}).

B Proof of the LAN Theorem 2.3

The reparametrizated PTTGARCH(1,1) model in (2.3)–(2.4) fits into the general time-series framework of [5] since it is a general location-scale model in which the location-scale parameters only depend on the past. Therefore, in order to prove the LAN Theorem 2.3, it suffices to verify conditions (2.3’), (A.1) and (2.4) of [5]. We also prove condition (3.3’) of [5], which we will need in the proof of Theorem 2.5. With the notation introduced in Section 2.4 (see (2.9), (2.12), (2.13)), and denoting the expectation under θ of the product ψ(θ)ψ(θ) as Ils(f), we need to show, under θ0,

1nt=1nWt(θ0)Ils(f)Wt(θ0)𝑃I(θ0)>0,
(B.1)1nt=1n|Wt(θ0)|2𝟙{n-12|Wt(θ0)|>δ}𝑃0,
(B.2)1nt=1nWt(θ0)𝑃W(θ0),
(B.3)1nt=1n|Wt(θn)-Wt(θ0)|2𝑃0,

and, under θn,

(B.4)t=1n|n-12(Mnt,Snt)-Wt(θn)(θ~n-θn)|2𝑃0

for some positive definitive matrix I(θ0) and some random matrix W(θ0). If equations (B.1)–(B.4) are satisfied, and using [5, Lemma A.1], we can show that the PTTGARCH(1,1) model satisfies the LAN property.

Although Wt(θ0) may not be strictly stationary and ergodic under θ0, the following proposition shows that these variables can be approximated by a strictly stationary and ergodic sequence, and hence equations (B.1), (B.2) and (B.3) hold in general.

Proposition B.1.

Let ht(θ), Ht(θ) and Wt(θ) be given by (2.8), (2.11), (2.12), respectively, and let hst(θ), Hst(θ) and Wst(θ) be their corresponding stationary solutions under θ, i.e.

hst(θ)=j=0k=1j{β+α+(ξt-k+)2+α-(ξt-k-)2},
Hst(θ)=i=0βihs,t-1-i(θ)((ξt-1-i+)2(ξt-1-i-)21),
Wst(θ)=σ-1(12hst-1(θ)Hst(θ)(μ,σ)I2).

Then, under θ0,

1nt=1n|Wt(θ0)-Wst(θ0)|20(a.s.) as n.

Proof.

The proof follows along the same lines as [4, proof of Proposition A.1].[27]

In the following proposition, which is parallel to [4, Proposition A.2], we show that slight perturbations of the parameters yield solutions of equations (2.3) and (2.4) that are close.

Proposition B.2.

Let ht(θ) and Ht(θ) be given by (2.8) and (2.11), respectively, and define

Qt(θ)=Ht(θ)ht(θ)=i=0t-2βiht(θ)((Yt-1-i+)2(Yt-1-i-)2ht-1-i(θ))=i=0t-2βiht-1-i(θ)ht(θ)((ξt-1-i+(θ))2(ξt-1-i-(θ))21)

and

Rt(θ,θ~)=ht(θ~)ht(θ)-1-(α~+-α,α~--α,β~-β)Qt(θ).

Let θn and θ~n satisfy the conditions just above (2.6). Put Qnt=Qt(θn) and Rnt=Rt(θn,θ~n). Then, under θn,

1nt=1n|Qnt|2=Op(1),1nt=1n|Qnt|2𝟙{n-1/2|Qnt|>δ}0(a.s.) as n

and

t=1nRnt20(a.s.) as n.

Proof.

The proof follows along the same lines as [4, proof of Proposition A.2].[28]

Using Propositions B.1B.2, and following the same line of reasoning reported in [4, p. 218], it is straightforward to prove (B.1), (B.2) and (B.4). Finally, we have to prove (B.3). Note that

|Wt(θn)-Wt(θ0)|2C|Qt(θn)-Qt(θ0)|2+C|Qt(θ0)|2|θn-θ0|2,

and we obtain contiguity of Pθn and Pθ0 from (B.1) and (B.4), and [5, Theorem 2.1]. Then the required result is obtained from

Qt(θ~)-Qt(θ)=i=0t-2(β~i-βi)ht-1-i(θ~)ht(θ~)((ξt-1-i+(θ~))2(ξt-1-i-(θ~))21)+Qt(θ){(θ1-θ~1)Qt(θ~)+Rt(θ~,θ)}
-(00i=0t-2β~iht-1-i(θ~)ht(θ~){(θ1-θ~1)Qt-1-i(θ~)+Rt-1-i(θ~,θ)})

along the lines of [4, proofs of Propositions A.1–A.2]. This completes the proofs of the theorems in Section 2.4.

C Proof of Theorem 2.5

See [4, proof of Theorem 3.1].[29]

Acknowledgements

We would like to thank the anonymous reviewers whose comments vastly improved this manuscript.

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Received: 2017-04-28
Revised: 2018-06-11
Accepted: 2018-07-19
Published Online: 2018-08-09
Published in Print: 2018-12-01

© 2018 Walter de Gruyter GmbH, Berlin/Boston

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