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Central Limit Theorem for Analitic Functions of two-sided moving averages. Limit theorem for canonical U -statistics Sidorov D. I., Novosibirsk State University 2nd Northern Triangular Seminar, 2010 Let { j } j Z be a stationary sequence,


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Central Limit Theorem for Analitic Functions of two-sided moving averages. Limit theorem for canonical U-statistics Sidorov D. I., Novosibirsk State University 2nd Northern Triangular Seminar, 2010

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Let {ξj}j∈Z be a stationary sequence, and {aj; j ∈ Z} be real num- bers. Moving-average sequence (linear process) is defined by Xk :=

  • j∈Z

ak−jξj. (1) If

E|ξ0| < ∞

and

  • j∈Z

|aj| < ∞

  • r

(2) {ξj}j∈Z are i.i.d.,

Eξ0 = 0, Eξ2

0 < ∞,

and

  • j∈Z

a2

j < ∞,

(3) then (1) is well defined.

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Outline

  • 1. Mixing conditions

2. CLT for the sequence {g(Xk)}k≥1, where g(x) is a non-linear function.

  • 3. Limit theorem for canonical U-statistics.
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Mixing conditions [Rosenblatt, 1956] A stationary sequence {Xk}k∈Z is called strong mixing, or a-mixing, if α(m) → 0 as m → ∞ where α(m) = sup

A∈F0

−∞, B∈F∞ m

|P(B ∩ A) − P(B) P(A)|, (4) [Ibragimov, 1962] uniformly strong mixing or ϕ-mixing: ϕ(m) → 0 as m → ∞ where ϕ(m) = sup

A∈F0 −∞, B∈F∞ m ,

P(A)=0

|P(B ∩ A) − P(B) P(A)|

P(A)

(5) where F0

−∞ = σ{Xj, j ≤ 0} and F∞ m = σ{Xj, j ≥ m}.

[Ibragimov, Linnik, 1965] If {ξj} is i.i.d Gaussian sequence then ϕ- mixing is equivalent to the finitness of A0 := {j ∈ Z : aj = 0}.

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[Rosenblatt 1980, Andrews 1984] Let ξj be independent Bernoulli random variables |ρ| < 1. Then the sequence Xk = ∞

j=0 ρjξk−j is

not α-mixing.

Theorem 1. Let {ξj; j ∈ Z} be nondegenerated independent descrete random

  • variables. Moreover, let 0 < δ ≤ ∆ < ∞ be such constants that distance between

any two atoms of ξj is not less than δ and is not greater than ∆. Finally, let the series (2) be convergent for each k and one of the following two conditions be fulfilled 1) aj = a0q|j| if j < 0 and aj = a0aj if j ≥ 0, where a0 = 0, 0 < q < 1, 0 < a ≤ δ/(∆ + δ); 2) 0 < |akj+1| ≤ |akj|δ/(∆ + δ) for all j ≥ 0, where {akj; j ≥ 0} are non-zero coefficients aj ordered by their absolute values. Then the the sequence {Xk} does not satisfy α-mixing. If there are only strong inequalities for a and akj in conditions 1) and 2) then proposition is true when ξj are arbitrary dependent.

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Theorem 2. Let {ξj; j ∈ Z} be independent bounded random

  • variables. Let set

A− := {j < 0 : aj = 0} be infinite and

j∈Z |aj| < ∞. Then the sequence {Xk} does not

satisfy ϕ-mixing condition. Theorem 3. Let {ξj; j ∈ Z} be independent bounded random variables with density p(x), A− be finite and for some C > 0

  • R |p(y + x) − p(y)| dy ≤ C|x|

for all x ∈ R.

  • j∈Z

j|aj| < ∞, |ak0| >

  • j=k0

|aj| for some k0. Then {Xk} satisfies ϕ-mixing condition.

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Theorem 4. Let {ξj; j ∈ Z} be independent nondegenerated random variables, aj > 0 for all j, and the following conditions be fulfilled 1) for some positive constants x0, c0, c1, c2, integers j1 > 0 and j0 supx≥x0

P(ξj0≥x+y) P(ξj0≥x)

≤ c1e−c2y for all y ≥ 0,

P(ξj ≥ x) ≤ c1e−c2x

for all x ≥ x0, if |j| < j1,

P(ξj ≥ x) ≤ c0P(ξj0 ≥ x)

for all x ≥ x0, if |j| ≥ j1; 2) inequality holds inf

j∈Z

aj aj+1 > 0; and one of the following conditions is fulfilled 3) inequalities hold

  • j=0

aj ln |j| < ∞ and inf

j∈Z

aj+1 aj > 0

  • r

3′) for some δ > 0, c3 > 0

  • j∈Z

aj|j|δ < ∞ and aj+1 aj ln |j| ≥ c3 for all j such that |j| is greate enough. Then the corresponding sequence {Xk} does not satisfy ϕ-mixing condition.

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CLT for functions of moving averages Results for g(Xk) = h({ξk−j}j∈Z). Let g(x) be a Lipschitz function and {ξj} be i.i.d. Ibragimov, Linnik, 1965, Billingsley, 1968

  • n=1

|k|≥n

a2

k

1/2

< ∞ (10) Ibragimov, Linnik, 1965

E|X1|2+δ < ∞,

  • n=1
  • E
  • |k|≥n

akξ−k

  • 2+δ

1+δ

1+δ

2+δ < ∞,

(11)

  • r

|X1| < C,

  • n=1

E

  • |k|≥n

akξ−k

  • < ∞.

(12)

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Hall, Heyde, 1975.

  • n=1
  • |k|≥n

|ak|

2

< ∞, (13) Conditions (10)–(13) imply

  • j∈Z

|aj| < ∞. (14) Conditions (10), (13) are stronger than (14). Also if ξj are Gaussian then conditions (11), (12) imply (10). Ho, Hsing (1997). aj = 0 for all j < 0,

  • j∈Z

|aj| < ∞. Wu (2002). aj = 0 for all j < 0,

  • n=1

  • k=n

ak

2

< ∞.

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[Dedecker J., Merlevede F., Volny D. (2007)]. If

j∈Z |aj| < ∞,

{ξj} – i.i.d, Eξ0 = 0, Eξ2

0 < ∞,

wg(h, M) ≤ ChMα, where α ≥ 0, E|ξ0|2+2α < ∞, or ξ0 < ∞,

  • k∈Z

wg(c|ak|, X0∞) < ∞, where wg(h, M) = sup

|t|≤h,|x|≤M,|x+t|≤M

|g(x + t) − g(x)|. Then CLT holds.

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[Dedecker J., Merlevede F., Volny D. (2007)]. If ak = 0, k < 0, {ξj} – i.i.d, Eξ0 = 0, Eξ2

0 < ∞,

lim sup

n→∞

n

i=0 |ai|

| n

i=0 ai| < ∞,

and

n

  • k=1
  • i≥k

a2

i = o(sn),

where sn = √n|a0 + . . . + an|, g is Lipschitz and g′ is contnuous then 1 sn

n

  • k=1

g(Xk) →d N(0, σ2), where σ2 = Eξ2

  • Eg′(X0)

2

. [Dedecker J., Merlevede F., Volny D. (2007)]. If ak = 0, k < 0, {ξj} – i.i.d, Eξ0 = 0, Eξ4

0 < ∞,

  • k≥0

|ak|

  • i=k+1

a2

i < ∞,

Eg′(X0) = 0.

g′ is Lipschitz, then CLT holds.

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Theorem 5. Let g(Xk) :=

  • l≥0

βlXl

k, C = |ai| and one of the

following conditions (α) or (α0) be fulfilled: (α) for some δ > 0

          

  • l≥0

|βl| · l · Cl

E|ξ0|(2+δ)l

1 2+δ < ∞,

  • n=0

α(n)

δ 2+δ < ∞,

  • r

(α0) ξ0 is bounded and

      

  • l≥0

|βl| · l · Cl < ∞

  • n=0

α(n) < ∞, where α(n) is a mixing coefficient for {ξj}. Then {g(Xk)}k≥1 satisfies CLT.

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Theorem 6. Let {ξj} be i.i.d, βl = 0 and Eξl

0 = 0 for all odd

numbers l,

  • k0

i

|aiai+k|

2

< ∞,

  • l0

|βl|

  • 2
  • i

a2

i

l/2

(l!)1/2

  • E|ξ|2l

1/2

< ∞. Then {g(Xk)}k≥1 satisfies CLT.

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Limit theorem for U-statistics Second order degenerated (canonical) U-statistics: Un = 1 n

  • 1≤k1=k2≤n

f(Xk1, Xk2) (40) where kernel f is degenerated (canonical), i.e.

Ef(t, Xk) = Ef(Xk, t) = 0

for all t. (41) Rubin H., Vitale R. A. (1980). {Xk}k≥1 are independent. Borisov I. S., Volodko N. V. (2008). {Xk}k≥1 are m-dependent or mixing.

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Let functions {ei(t) : i ≥ 0} form an orthonormal basis in {h : Eh2(X0) < ∞}, e0(t) ≡ 1. Then Eei(X0) = 0 for all i ≥ 1, Ee2

i (X0) = 1 for all i.

Functions {ei(t1)ej(t2)}i,j≥0 form an orthonormal basis in {h : Eh2(X∗

0, X∗ 1) < ∞}.

Let Ef2(X∗

0, X∗ 1) < ∞, then

f(t1, t2) =

  • i1,i2≥1

fi1,i2ei1(t1)ei2(t2). (43)

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Theorem 7. Let function f be continuos, functions ei and eiej be Lipschitz for all i, j ≥ 1,

  • i

|ai| < ∞, (44)

  • i,j≥1

|fi,j|(1 + Lip(ei)Lip(ej)) < ∞. (45) Then Un

d

  • i1,i2≥1

fi1,i2Hi1,i2(τi1, τi2), (46) where {τj} is a Gaussian sequence of centered random variables with covariations σi,j = cov(τi, τj) =

  • k=−∞

cov(ei(X0), ej(Xk)), (47) Hi1,i2(τi1, τi2) = τi1τi2 for i1 = i2, and Hi,i(τi, τi) = τ2

i − 1.

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References

  • 1. Andrews, D. W. K. Nonstrong mixing autoregressive processes. — J. Appl.

Probab., 1984, v. 21, 4, p. 930–934.

  • 2. Borisov, I. S.; Volodko, N. V. Limit theorems and exponential inequalities

for canonical U- and V-statistics of dependent trials. — High Dimensional Probability V: The Luminy Volume (Beachwood, Ohio, USA: Institute of Mathematical Statistics), 2009, v. 5, p. 108-130.

  • 3. Dedecker, J.; Merlevede, F.; Volny, D. On the Weak Invariance Principle

for Non-Adapted Sequences under Projective Criteria — J. Theor. Probab., 2007, v. 20, p. 971-1004.

  • 4. Doukhan, P. Mixing: Properties and Examples. New York: Springer-Verlag,

1994, 142 p. (Lecture Notes in Statistics, v. 85.)

  • 5. Gorodeckii, V. V. On the strong mixing property for linear sequences. (En-
  • glish. Russian original) J. Theory Probab. Appl., 1977, v. 22, p. 411-413

(1978); translation from Teor. Veroyatn. Primen., 1977, v. 22, p. 421-423.

  • 6. Ibragimov, I. A.; Linnik, Yu. V. Independent and stationary sequences of ran-

dom variables. Edited by J.F.C. Kingman. (English) Wolters-Noordhoff

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Series of Monographs and Textbooks on Pure and Applied Mathematics. Groningen, The Netherlands, 1971, 443 p.

  • 7. Ibragimov, I. A.; Rozanov, Y. A. Gaussian random processes. Translated by
  • A. B. Aries. (English) Applications of Mathematics. 9. New York - Heidel-

berg - Berlin: Springer-Verlag. X, 1978, 275 p.

  • 8. Kolmogorov, A. N.; Rozanov, Yu. A. On strong mixing conditions for station-

ary Gaussian processes. (English) — J. Theor. Probab. Appl. 1960, v. 5,

  • p. 204–208.
  • 9. Rubin, H.; Vitale, R. Asymptotic distribution of symmetric statistics. Ann.

Statist., 1980, v. 8, 1, p. 165-170.

  • 10. Sidorov, D. I. On mixing conditions for sequences of moving averages. (En-

glish. Russian original) J. Theory Probab. Appl., translation from Teor.

  • Veroyatn. Primen., 2009, v. 54,

2, p. 374–382.