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| ==Requests for Software Extensions== | | ==Requests for Software Extensions== |
| | | |
− | * Asymptote [[http://asymptote.sourceforge.net/]] ([[File:Asymptote.zip|zip containing the .php file]]) | + | * The 'Asymptote' Extension Has now Been Added |
| | | |
− | Comment: “It requires to have /usr/bin/asy installed. If you have asy at some other place please adjust the line
| + | ==http://www.piprime.fr/815/Fractals-with-asymptote-fig0020/== |
| + | <asy> |
| + | size(10cm,0); |
| + | transform scale(pair center, real k) { |
| + | return shift(center)*scale(k)*shift(-center); |
| + | } |
| + | path trk=(0,0)--(0,1); |
| + | void tree(path p, int n, real a=30, real b=40, real r=.75) { |
| + | if (n!=0) { |
| + | pair h=point(p,length(p)); |
| + | transform tb=rotate(180-b,h)*scale(h,r); |
| + | transform ta=rotate(-180+a,h)*scale(h,r); |
| + | draw(p,n/3+1/(n+1)*green+n/(n+1)*brown); |
| + | tree(tb*reverse(p),n-1,a,b,r); |
| + | tree(ta*reverse(p),n-1,a,b,r); |
| + | } |
| + | } |
| | | |
− | $this->asymptoteCommand = "/usr/bin/asy"; in the php file "Asymptote.php".”
| + | tree(trk,12,a=25,b=40,r=.75); |
| + | </asy> |
| | | |
| ==Requests for Information== | | ==Requests for Information== |
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| So: As a template, the page should be edible by me, and the local copy should be edited by the user.” | | So: As a template, the page should be edible by me, and the local copy should be edited by the user.” |
− |
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− | =Sandbox=
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− |
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− | % this is the default PlanetMath preamble. as your knowledge
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− | % of TeX increases, you will probably want to edit this, but
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− | % it should be fine as is for beginners.
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− |
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− | % almost certainly you want these
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− | \usepackage{amssymb}
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− | \usepackage{amsmath}
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− | \usepackage{amsfonts}
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− |
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− | % used for TeXing text within eps files
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− | %\usepackage{psfrag}
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− | % need this for including graphics (\includegraphics)
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− | %\usepackage{graphicx}
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− | % for neatly defining theorems and propositions
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− | %\usepackage{amsthm}
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− | % making logically defined graphics
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− | %\usepackage{xypic}
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− |
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− | % there are many more packages, add them here as you need them
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− |
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− | % define commands here
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− | Content:
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− | \magnification=\magstep1
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− |
| |
− | \def\refs{\medskip\hangindent=25pt\hangafter=1\noindent}
| |
− |
| |
− | \centerline {\bf Strong Mixing Conditions}
| |
− | \bigskip
| |
− | \noindent Richard C. Bradley \hfil\break
| |
− | \noindent Department of Mathematics, Indiana University,
| |
− | Bloomington, Indiana, USA
| |
− | \bigskip
| |
− |
| |
− | There has been much research on stochastic models
| |
− | that have a well defined, specific structure --- for
| |
− | example, Markov chains, Gaussian processes, or
| |
− | linear models, including ARMA
| |
− | (autoregressive -- moving average) models.
| |
− | However, it became clear in the middle of the last century
| |
− | that there was a need for
| |
− | a theory of statistical inference (e.g.\ central limit
| |
− | theory) that could be used in the analysis of time series
| |
− | that did not seem to ``fit'' any such specific structure
| |
− | but which did seem to have some ``asymptotic
| |
− | independence'' properties.
| |
− | That motivated the development of a broad theory of
| |
− | ``strong mixing conditions'' to handle such situations.
| |
− | This note is a brief description of that theory.
| |
− | \smallskip
| |
− |
| |
− | The field of strong mixing conditions is a vast area,
| |
− | and a short note such as this cannot even begin to do
| |
− | justice to it.
| |
− | Journal articles (with one exception) will not be cited;
| |
− | and many researchers who made important contributions to
| |
− | this field will not be mentioned here.
| |
− | All that can be done here is to give a narrow snapshot
| |
− | of part of the field.
| |
− | \hfil\break
| |
− |
| |
− |
| |
− | {\bf The strong mixing ($\alpha$-mixing) condition.}\ \ Suppose
| |
− | $X := (X_k, k \in {\bf Z})$ is a sequence of
| |
− | random variables on a given probability space
| |
− | $(\Omega, {\cal F}, P)$.
| |
− | For $-\infty \leq j \leq \ell \leq \infty$, let
| |
− | ${\cal F}_j^\ell$ denote the $\sigma$-field of events
| |
− | generated by the random variables
| |
− | $X_k,\ j \leq k \leq \ell\ (k \in {\bf Z})$.
| |
− | For any two $\sigma$-fields ${\cal A}$ and
| |
− | ${\cal B} \subset {\cal F}$, define the ``measure of
| |
− | dependence''
| |
− | $$ \alpha({\cal A}, {\cal B}) :=
| |
− | \sup_{A \in {\cal A}, B \in {\cal B}}
| |
− | |P(A \cap B) - P(A)P(B)|. \eqno (1) $$
| |
− | For the given random sequence $X$, for any positive
| |
− | integer $n$, define the dependence coefficient
| |
− | $$\alpha(n) = \alpha(X,n) :=
| |
− | \sup_{j \in {\bf Z}}
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− | \alpha({\cal F}_{-\infty}^j, {\cal F}_{j + n}^{\infty}).
| |
− | \eqno (2) $$
| |
− | By a trivial argument, the sequence of numbers
| |
− | $(\alpha(n), n \in {\bf N})$ is nonincreasing.
| |
− | The random sequence $X$ is said to be ``strongly mixing'',
| |
− | or ``$\alpha$-mixing'', if $\alpha(n) \to 0$ as
| |
− | $n \to \infty$.
| |
− | This condition was introduced in 1956 by Rosenblatt [Ro1],
| |
− | and was used in that paper in the proof of a central limit
| |
− | theorem.
| |
− | (The phrase ``central limit theorem'' will henceforth
| |
− | be abbreviated CLT.)
| |
− | \smallskip
| |
− |
| |
− | In the case where the given sequence $X$ is strictly
| |
− | stationary (i.e.\ its distribution is invariant under a
| |
− | shift of the indices), eq.\ (2) also has the simpler form
| |
− | $$\alpha(n) = \alpha(X,n) :=
| |
− | \alpha({\cal F}_{-\infty}^0, {\cal F}_n^{\infty}).
| |
− | \eqno (3) $$
| |
− | For simplicity, {\it in the rest of this note,
| |
− | we shall restrict to strictly stationary sequences\/}.
| |
− | (Some comments below will have obvious adaptations to
| |
− | nonstationary processes.) \smallskip
| |
− |
| |
− | In particular, for strictly stationary sequences,
| |
− | the strong mixing ($\alpha$-mixing) condition implies Kolmogorov regularity
| |
− | (a trivial ``past tail'' $\sigma$-field),
| |
− | which in turn implies ``mixing'' (in the ergodic-theoretic
| |
− | sense), which in turn implies ergodicity.
| |
− | (None of the converse implications holds.)\ \
| |
− | For further related information, see
| |
− | e.g.\ [Br, v1, Chapter 2].
| |
− | \hfil\break
| |
− |
| |
− | {\bf Comments on limit theory under
| |
− | $\alpha$-mixing.}\ \
| |
− | Under $\alpha$-mixing and other similar conditions
| |
− | (including ones reviewed below), there has been a vast development of limit theory --- for example,
| |
− | CLTs, weak invariance principles,
| |
− | laws of the iterated logarithm, almost sure invariance
| |
− | principles, and rates of convergence in the strong law of
| |
− | large numbers.
| |
− | For example, the CLT in [Ro1] evolved through
| |
− | subsequent refinements by several researchers
| |
− | into the following ``canonical'' form.
| |
− | (For its history and a generously detailed presentation
| |
− | of its proof, see e.g.\ [Br, v1,
| |
− | Theorems 1.19 and 10.2].)
| |
− | \bigskip
| |
− |
| |
− | {\bf Theorem 1.}\ \ {\sl Suppose $(X_k, k \in {\bf Z})$
| |
− | is a strictly stationary sequence of random variables
| |
− | such that
| |
− | $EX_0 = 0$, $EX_0^2 < \infty$,
| |
− | $\sigma_n^2 := ES_n^2 \to \infty$ as $n \to \infty$,
| |
− | and $\alpha(n) \to 0$ as $n \to \infty$.
| |
− | Then the following two conditions (A) and (B) are
| |
− | equivalent:
| |
− |
| |
− | \noindent (A) The family of random variables
| |
− | $(S_n^2/\sigma_n^2, n \in {\bf N})$ is uniformly
| |
− | integrable.
| |
− |
| |
− | \noindent (B) $S_n/\sigma_n \Rightarrow N(0,1)$ as
| |
− | $n \to \infty$.
| |
− |
| |
− | If (the hypothesis and) these two equivalent
| |
− | conditions (A) and (B) hold, then
| |
− | $\sigma_n^2 = n \cdot h(n)$ for some
| |
− | function $h(t),\ t \in (0, \infty)$ which is slowly
| |
− | varying as $t \to \infty$.}
| |
− | \bigskip
| |
− |
| |
− | Here $S_n := X_1 + X_2 + \dots + X_n$; and\
| |
− | $\Rightarrow$\ denotes convergence in distribution.
| |
− | The assumption $ES_n^2 \to \infty$ is needed here in
| |
− | order to avoid trivial $\alpha$-mixing (or even
| |
− | 1-dependent) counterexamples in which a kind of ``cancellation'' prevents the partial sums $S_n$ from
| |
− | ``growing'' (in probability) and becoming asymptotically
| |
− | normal.
| |
− | \hfil\break
| |
− |
| |
− | In the context of Theorem 1, if one wants to obtain asymptotic normality of the
| |
− | partial sums (as in condition (B)) without an explicit
| |
− | uniform integrability assumption on the partial sums
| |
− | (as in condition (A)),
| |
− | then as an alternative, one can impose a combination of assumptions on, say, (i) the (marginal) distribution
| |
− | of $X_0$ and (ii) the rate of decay of the
| |
− | numbers $\alpha(n)$ to 0 (the ``mixing rate'').
| |
− | This involves a ``trade-off''; the weaker one assumption
| |
− | is, the stronger the other has to be.
| |
− | One such CLT of Ibragimov in 1962
| |
− | involved such a ``trade-off'' in which it is assumed that
| |
− | for some $\delta > 0$,
| |
− | $E|X_0|^{2 + \delta} < \infty$ and
| |
− | $\sum_{n=1}^\infty [\alpha(n)]^{\delta/(2 + \delta)}
| |
− | < \infty$.
| |
− | Counterexamples of Davydov in 1973
| |
− | (with just slightly weaker properties) showed that that
| |
− | result is quite sharp.
| |
− | However, it is not at the exact ``borderline''.
| |
− | From a covariance inequality of Rio in 1993 and a
| |
− | CLT (in fact a weak invariance principle)
| |
− | of Doukhan, Massart, and Rio in 1994, it became clear that
| |
− | the ``exact borderline'' CLTs of this
| |
− | kind have to involve quantiles of the (marginal)
| |
− | distribution of $X_0$ (rather than just moments).
| |
− | For a generously detailed exposition of such CLTs,
| |
− | see [Br, v1, Chapter 10]; and for further
| |
− | related results, see also Rio [Ri].
| |
− | \smallskip
| |
− |
| |
− | Under the hypothesis (first sentence) of Theorem 1
| |
− | (with just finite second moments),
| |
− | there is no mixing rate, no matter how fast
| |
− | (short of $m$-dependence), that can insure that
| |
− | a CLT holds.
| |
− | That was shown in 1983 with two different
| |
− | counterexamples, one by the author and the other by
| |
− | Herrndorf.
| |
− | See [Br, v1\&3, Theorem 10.25 and Chapter 31].
| |
− | \hfil\break
| |
− |
| |
− | {\bf Several other classic strong mixing conditions.}\ \
| |
− | As indicated above, the terms ``$\alpha$-mixing'' and
| |
− | ``strong mixing condition'' (singular) both refer to the condition $\alpha(n) \to 0$.
| |
− | (A little caution is in order;
| |
− | in ergodic theory, the term ``strong mixing'' is often
| |
− | used to refer to the condition of
| |
− | ``mixing in the ergodic-theoretic sense'',
| |
− | which is weaker than
| |
− | $\alpha$-mixing as noted earlier.)\ \
| |
− | The term ``strong mixing conditions'' (plural) can
| |
− | reasonably be thought of as referring
| |
− | to all conditions that are at least as strong
| |
− | as (i.e.\ that imply) $\alpha$-mixing.
| |
− | In the classical theory, five strong mixing conditions
| |
− | (again, plural) have emerged as the most prominent ones:
| |
− | $\alpha$-mixing itself and four others that will be
| |
− | defined here.
| |
− | \smallskip
| |
− |
| |
− | Recall our probability space $(\Omega, {\cal F}, P)$.
| |
− | For any two $\sigma$-fields ${\cal A}$ and
| |
− | ${\cal B} \subset {\cal F}$, define the following four ``measures of dependence'':
| |
− | $$ \eqalignno{
| |
− | \phi({\cal A}, {\cal B}) &:=
| |
− | \sup_{A \in {\cal A}, B \in {\cal B}, P(A) > 0}
| |
− | |P(B|A) - P(B)|; & (4) \cr
| |
− | \psi({\cal A}, {\cal B}) &:=
| |
− | \sup_{A \in {\cal A}, B \in {\cal B}, P(A) > 0, P(B) > 0}
| |
− | |P(B \cap A)/[P(A)P(B)]\thinspace -\thinspace 1|; & (5) \cr
| |
− | \rho({\cal A}, {\cal B}) &:=
| |
− | \sup_{f \in {\cal L}^2({\cal A}),\thinspace g \in {\cal L}^2({\cal B})}
| |
− | |{\rm Corr}(f,g)|; \quad {\rm and} & (6) \cr
| |
− | \beta ({\cal A}, {\cal B}) &:= \sup\ (1/2)
| |
− | \sum_{i=1}^I \sum_{j=1}^J |P(A_i \cap B_j) - P(A_i)P(B_j)|
| |
− | & (7) \cr } $$
| |
− | where the latter supremum is taken over all pairs of finite
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− | partitions $(A_1, A_2, \dots, A_I)$ and
| |
− | $(B_1, B_2, \dots, B_J)$ of $\Omega$
| |
− | such that $A_i \in {\cal A}$ for
| |
− | each $i$ and $B_j \in {\cal B}$ for each $j$.
| |
− | In (6), for a given $\sigma$-field
| |
− | ${\cal D} \subset {\cal F}$,
| |
− | the notation ${\cal L}^2({\cal D})$ refers to the space of
| |
− | (equivalence classes of) square-integrable,
| |
− | ${\cal D}$-measurable random variables.
| |
− | \smallskip
| |
− |
| |
− | Now suppose $X := (X_k, k \in {\bf Z})$ is a strictly
| |
− | stationary sequence of random variables on
| |
− | $(\Omega, {\cal F}, P)$.
| |
− | For any positive integer $n$, analogously to (3), define
| |
− | the dependence coefficient
| |
− | $$\phi(n) = \phi(X,n) :=
| |
− | \phi({\cal F}_{-\infty}^0, {\cal F}_n^{\infty}),
| |
− | \eqno (8) $$
| |
− | and define analogously the dependence coefficients
| |
− | $\psi(n)$, $\rho(n)$, and $\beta(n)$.
| |
− | Each of these four sequences of dependence
| |
− | coefficients is trivially nonincreasing.
| |
− | The (strictly stationary) sequence $X$ is said to be
| |
− | \hfil\break
| |
− | ``$\phi$-mixing'' if $\phi(n) \to 0$ as $n \to \infty$;
| |
− | \hfil\break
| |
− | ``$\psi$-mixing'' if $\psi(n) \to 0$ as $n \to \infty$;
| |
− | \hfil\break
| |
− | ``$\rho$-mixing'' if $\rho(n) \to 0$ as $n \to \infty$;
| |
− | and
| |
− | \hfil\break
| |
− | ``absolutely regular'', or ``$\beta$-mixing'', if $\beta(n) \to 0$ as $n \to \infty$.
| |
− | \smallskip
| |
− |
| |
− | The $\phi$-mixing condition was introduced by
| |
− | Ibragimov in 1959 and was also studied by Cogburn in 1960 .
| |
− | The $\psi$-mixing condition evolved through papers of Blum,
| |
− | Hanson, and Koopmans in 1963 and Philipp in 1969; and
| |
− | (see e.g.\ [Io]) it was also implicitly present
| |
− | in earlier work of Doeblin in 1940 involving the metric
| |
− | theory of continued fractions.
| |
− | The $\rho$-mixing condition was introduced by
| |
− | Kolmogorov and Rozanov 1960.
| |
− | (The ``maximal correlation coefficient''
| |
− | $\rho({\cal A}, {\cal B})$ itself was first studied by
| |
− | Hirschfeld in 1935 in a statistical context that had
| |
− | no particular connection with ``stochastic processes''.)\ \
| |
− | The absolute regularity ($\beta$-mixing) condition was introduced by Volkonskii and Rozanov in 1959, and
| |
− | in the ergodic theory literature it
| |
− | is also called the ``weak Bernoulli'' condition.
| |
− | \smallskip
| |
− |
| |
− | For the five measures of dependence in (1) and (4)--(7),
| |
− | one has the following well known inequalities:
| |
− | $$ \eqalignno{
| |
− | 2\alpha({\cal A}, {\cal B}) \thinspace & \leq \thinspace
| |
− | \beta({\cal A}, {\cal B}) \thinspace \leq \thinspace
| |
− | \phi({\cal A}, {\cal B}) \thinspace \leq \thinspace
| |
− | (1/2) \psi({\cal A}, {\cal B}); \cr
| |
− | 4 \alpha({\cal A}, {\cal B})\thinspace &\leq \thinspace
| |
− | \rho({\cal A}, {\cal B}) \thinspace \leq \thinspace
| |
− | \psi({\cal A}, {\cal B}); \quad {\rm and} \cr
| |
− | \rho({\cal A}, {\cal B}) \thinspace &\leq \thinspace
| |
− | 2 [\phi({\cal A}, {\cal B})]^{1/2}
| |
− | [\phi({\cal B}, {\cal A})]^{1/2} \thinspace \leq
| |
− | \thinspace
| |
− | 2 [\phi({\cal A}, {\cal B})]^{1/2}. \cr
| |
− | } $$
| |
− | For a history and proof of these inequalities, see e.g.\
| |
− | [Br, v1, Theorem 3.11].
| |
− | As a consequence of these inequalities and some
| |
− | well known examples, one has the following ``hierarchy''
| |
− | of the five strong mixing conditions here: \hfil\break
| |
− | \indent (i) $\psi$-mixing implies $\phi$-mixing. \hfil\break
| |
− | \indent (ii) $\phi$-mixing implies both $\rho$-mixing and
| |
− | $\beta$-mixing (absolute regularity). \hfil\break
| |
− | \indent (iii) $\rho$-mixing and $\beta$-mixing each imply
| |
− | $\alpha$-mixing (strong mixing). \hfil\break
| |
− | \indent (iv) Aside from ``transitivity'', there are in
| |
− | general
| |
− | no other implications between these five mixing conditions.
| |
− | In particular, neither of the conditions $\rho$-mixing
| |
− | and $\beta$-mixing implies the other. \smallskip
| |
− |
| |
− | For all of these mixing conditions, the
| |
− | ``mixing rates'' can be essentially arbitrary, and in particular, arbitrarily slow.
| |
− | That general principle was established by Kesten and
| |
− | O'Brien in 1976 with several classes of examples.
| |
− | For further details, see e.g.\ [Br, v3, Chapter 26].
| |
− | \smallskip
| |
− |
| |
− | The various strong mixing conditions above have been
| |
− | used extensively in statistical inference for weakly
| |
− | dependent data.
| |
− | See e.g.\ [DDLLLP], [DMS], [Ro3], or [\v Zu].
| |
− | \hfil\break
| |
− |
| |
− |
| |
− | {\bf Ibragimov's conjecture and related material.}\ \
| |
− | Suppose (as in Theorem 1) $X := (X_k, k \in {\bf Z})$
| |
− | is a strictly stationary
| |
− | sequence of random variables such that
| |
− | $$ EX_0 = 0,\ \ EX_0^2 < \infty,\ \ {\rm and}\ \
| |
− | ES_n^2 \to \infty\ {\rm as}\ n \to \infty. \eqno (9) $$
| |
− |
| |
− | In the 1960s, I.A.\ Ibragimov conjectured that
| |
− | under these assumptions, if also $X$ is $\phi$-mixing,
| |
− | then a CLT holds.
| |
− | Technically, this conjecture remains unsolved.
| |
− | Peligrad showed in 1985 that it holds under the
| |
− | stronger ``growth'' assumption
| |
− | $\liminf_{n \to \infty} n^{-1} ES_n^2 > 0$.
| |
− | (See e.g.\ [Br, v2, Theorem 17.7].)
| |
− | \smallskip
| |
− |
| |
− | Under (9) and $\rho$-mixing (which is weaker
| |
− | than $\phi$-mixing), a CLT need not hold (see
| |
− | [Br, v3, Chapter 34] for counterexamples).
| |
− | However, if one also imposes either the stronger
| |
− | moment condition $E|X_0|^{2 + \delta} < \infty$ for
| |
− | some $\delta > 0$, or else the ``logarithmic''
| |
− | mixing rate assumption
| |
− | $\sum_{n=1}^\infty \rho(2^n) < \infty$,
| |
− | then a CLT does hold (results of
| |
− | Ibragimov in 1975).
| |
− | For further limit theory under $\rho$-mixing,
| |
− | see e.g.\ [LL] or [Br, v1, Chapter 11].
| |
− | \smallskip
| |
− |
| |
− | Under (9) and an ``interlaced'' variant of the
| |
− | $\rho$-mixing condition (i.e.\ with the two index sets
| |
− | allowed to be ``interlaced'' instead of just ``past'' and
| |
− | ``future''), a CLT does hold.
| |
− | For this and related material, see e.g.\ [Br, v1, Sections 11.18-11.28].
| |
− | \smallskip
| |
− |
| |
− | There is a vast literature on central limit theory for
| |
− | random fields satisfying various strong mixing conditions.
| |
− | See e.g.\ [Ro3], [\v Zu], [Do], and [Br, v3].
| |
− | In the formulation of mixing conditions for random fields
| |
− | --- and also ``interlaced'' mixing conditions for random
| |
− | sequences --- some caution is needed; see e.g.\
| |
− | [Br, v1\&3, Theorems 5.11, 5.13, 29.9, and 29.12].
| |
− | \hfil\break
| |
− |
| |
− |
| |
− | {\bf Connections with specific types of models.}\ \
| |
− | Now let us return briefly to a theme from the beginning of this write-up: the connection between strong mixing
| |
− | conditions and specific structures.
| |
− | \smallskip
| |
− |
| |
− | {\it Markov chains.}\ \ Suppose
| |
− | $X := (X_k, k \in {\bf Z})$ is a strictly stationary
| |
− | Markov chain.
| |
− | In the case where $X$ has finite state space and is irreducible and aperiodic, it is $\psi$-mixing,
| |
− | with at least exponentially fast mixing rate.
| |
− | In the case where $X$ has countable (but not
| |
− | necessarily finite) state space and is irreducible
| |
− | and aperiodic, it satisfies $\beta$-mixing, but the mixing rate can be arbitrarily slow.
| |
− | In the case where $X$ has (say) real (but not necessarily
| |
− | countable) state space, (i) Harris recurrence and
| |
− | ``aperiodicity'' (suitably defined) together are equivalent
| |
− | to $\beta$-mixing, (ii) the ``geometric ergodicity''
| |
− | condition is equivalent to $\beta$-mixing with
| |
− | at least exponentially fast mixing rate, and
| |
− | (iii) one particular version of
| |
− | ``Doeblin's condition'' is equivalent to $\phi$-mixing
| |
− | (and the mixing rate will then be at least exponentially
| |
− | fast).
| |
− | There exist strictly stationary, countable-state
| |
− | Markov chains that are $\phi$-mixing but not
| |
− | ``time reversed'' $\phi$-mixing (note the asymmetry in the
| |
− | definition of $\phi({\cal A}, {\cal B})$ in (4)).
| |
− | For this and other information on strong mixing
| |
− | conditions for Markov chains,
| |
− | see e.g.\ [Ro2, Chapter 7], [Do], [MT], and
| |
− | [Br, v1\&2, Chapters 7 and 21].
| |
− | \smallskip
| |
− |
| |
− | {\it Stationary Gaussian sequences.}\ \ For
| |
− | stationary Gaussian sequences
| |
− | $X := (X_k, k \in {\bf Z})$, Ibragimov and Rozanov [IR]
| |
− | give characterizations of various strong mixing
| |
− | conditions in terms of properties of spectral density
| |
− | functions.
| |
− | Here are just a couple of comments:
| |
− | For stationary Gaussian sequences, the $\alpha$- and
| |
− | $\rho$-mixing conditions are equivalent to each
| |
− | other, and the $\phi$- and $\psi$-mixing conditions
| |
− | are each equivalent to $m$-dependence.
| |
− | If a stationary Gaussian sequence has a continuous
| |
− | positive spectral density function, then it is
| |
− | $\rho$-mixing.
| |
− | For some further closely related information on
| |
− | stationary Gaussian sequences, see also
| |
− | [Br, v1\&3, Chapters 9 and 27].
| |
− | \smallskip
| |
− |
| |
− | {\it Dynamical systems.}\ \ Many dynamical systems
| |
− | have strong mixing properties.
| |
− | Certain one-dimensional ``Gibbs states''
| |
− | processes are $\psi$-mixing with at least exponentially
| |
− | fast mixing rate.
| |
− | A well known standard ``continued fraction'' process
| |
− | is $\psi$-mixing with at least exponentially fast
| |
− | mixing rate (see [Io]).
| |
− | For certain stationary finite-state stochastic processes
| |
− | built on piecewise expanding mappings of the
| |
− | unit interval onto itself,
| |
− | the absolute regularity condition holds
| |
− | with at least exponentially fast mixing rate.
| |
− | For more detains on the mixing properties of these and
| |
− | other dynamical systems, see e.g.\ Denker [De].
| |
− | \smallskip
| |
− |
| |
− | {\it Linear and related processes.}\ \ There is
| |
− | a large literature on strong mixing properties of
| |
− | strictly stationary linear processes (including strictly
| |
− | stationary ARMA
| |
− | processes and also ``non-causal'' linear processes
| |
− | and linear random fields) and also of some other related processes such as bilinear, ARCH, or GARCH models.
| |
− | For details on strong mixing properties of these and other related processes,
| |
− | see e.g.\ Doukhan [Do, Chapter 2].
| |
− | \smallskip
| |
− |
| |
− | However, many strictly stationary linear
| |
− | processes {\it fail\/} to be $\alpha$-mixing.
| |
− | A well known classic example is the
| |
− | strictly stationary AR(1) process
| |
− | (autoregressive process of order 1)
| |
− | $X := (X_k, k \in {\bf Z})$ of the form
| |
− | $X_k = (1/2)X_{k-1} + \xi_k$ where
| |
− | $(\xi_k, k \in {\bf Z})$ is a sequence of independent,
| |
− | identically distributed random variables, each taking
| |
− | the values 0 and 1 with probability 1/2 each.
| |
− | It has long been well known that this random sequence $X$
| |
− | is not $\alpha$-mixing.
| |
− | For more on this example, see e.g.\
| |
− | [Br, v1, Example 2.15] or [Do, Section 2.3.1].
| |
− | \hfil\break
| |
− |
| |
− | {\bf Further related developments.}\ \ The AR(1)
| |
− | example spelled out above, together with many other
| |
− | examples that are not $\alpha$-mixing but seem to
| |
− | have some similar ``weak dependence'' quality,
| |
− | have motivated the development of more general conditions
| |
− | of weak dependence that have the ``spirit'' of, and most
| |
− | of the advantages of, strong mixing conditions, but are
| |
− | less restrictive, i.e.\ applicable to a much broader class of models (including the AR(1) example above).
| |
− | There is a substantial development of central limit theory
| |
− | for strictly stationary sequences under weak dependence assumptions explicitly involving characteristic functions
| |
− | in connection with ``block sums''; much of that theory
| |
− | is codified in [Ja].
| |
− | There is a substantial development of limit theory of
| |
− | various kinds under weak dependence assumptions that involve
| |
− | covariances of certain multivariate Lipschitz functions of random variables from the ``past'' and ``future''
| |
− | (in the spirit of, but much less restrictive than, say,
| |
− | the dependence coefficient $\rho(n)$ defined analogously
| |
− | to (3) and (8)); see e.g.\ [DDLLLP].
| |
− | There is a substantial development of limit theory under
| |
− | weak dependence assumptions that involve dependence
| |
− | coefficients similar to $\alpha(n)$ in (3) but in
| |
− | which the classes of events are restricted to
| |
− | intersections of finitely many events of the form
| |
− | $\{X_k > c\}$ for appropriate indices $k$ and
| |
− | appropriate real numbers $c$; for the use of such
| |
− | conditions in extreme value theory, see e.g.\ [LLR].
| |
− | In recent years, there has been a considerable
| |
− | development of central limit theory under ``projective''
| |
− | criteria related to martingale theory (motivated
| |
− | by Gordin's martingale-approximation
| |
− | technique --- see [HH]); for details,
| |
− | see e.g.\ [Pe].
| |
− | There are far too many other types of weak dependence
| |
− | conditions, of the general spirit of strong mixing
| |
− | conditions but less restrictive, to describe here;
| |
− | for more details, see
| |
− | e.g.\ [DDLLLP] or [Br, v1, Chapter 13].
| |
− |
| |
− | \hfil\break
| |
− |
| |
− | \centerline {\bf References}
| |
− | \bigskip
| |
− |
| |
− | \refs [Br] R.C.\ Bradley.
| |
− | {\it Introduction to Strong Mixing Conditions\/},
| |
− | Vols.\ 1, 2, and 3.
| |
− | Kendrick Press, Heber City (Utah), 2007.
| |
− |
| |
− | \refs [DDLLLP] J.\ Dedecker, P.\ Doukhan, G.\ Lang,
| |
− | J.R.\ Le\'on, S.\ Louhichi, and C.\ Prieur.
| |
− | {\it Weak Dependence: Models, Theory, and Applications\/}.
| |
− | Lecture Notes in Statistics 190. Springer-Verlag,
| |
− | New York, 2007.
| |
− |
| |
− | \refs [DMS] H.\ Dehling, T.\ Mikosch, and M.\ S\o rensen,
| |
− | eds.
| |
− | {\it Empirical Process Techniques for Dependent Data\/}.
| |
− | Birkh\"auser, Boston, 2002.
| |
− |
| |
− | \refs [De] M.\ Denker. The central limit theorem for
| |
− | dynamical systems.
| |
− | In: {\it Dynamical Systems and Ergodic Theory\/},
| |
− | (K.\ Krzyzewski, ed.), pp.\ 33-62.
| |
− | Banach Center Publications, Polish Scientific Publishers,
| |
− | Warsaw, 1989.
| |
− |
| |
− | \refs [Do] P.\ Doukhan.
| |
− | {\it Mixing: Properties and Examples\/}.
| |
− | Springer-Verlag, New York, 1995.
| |
− |
| |
− | \refs [HH] P.\ Hall and C.C.\ Heyde.
| |
− | {\it Martingale Limit Theory and its Application\/}.
| |
− | Academic Press, San Diego, 1980.
| |
− |
| |
− | \refs [IR] I.A.\ Ibragimov and Yu.A.\ Rozanov.
| |
− | {\it Gaussian Random Processes\/}.
| |
− | Springer-Verlag, New York, 1978.
| |
− |
| |
− | \refs [Io] M.\ Iosifescu.
| |
− | Doeblin and the metric theory of continued fractions: a
| |
− | functional theoretic solution to Gauss' 1812 problem.
| |
− | In: {\it Doeblin and Modern Probability\/},
| |
− | (H.\ Cohn, ed.), pp.\ 97-110.
| |
− | Contemporary Mathematics 149,
| |
− | American Mathematical Society, Providence, 1993.
| |
− |
| |
− | \refs [Ja] A.\ Jakubowski.
| |
− | {\it Asymptotic Independent Representations for Sums and
| |
− | Order Statistics of Stationary Sequences\/}.
| |
− | Uniwersytet Miko\l aja Kopernika, Toru\'n, Poland, 1991.
| |
− |
| |
− | \refs [LL] Z.\ Lin and C.\ Lu.
| |
− | {\it Limit Theory for Mixing Dependent Random Variables\/}.
| |
− | Kluwer Academic Publishers, Boston, 1996.
| |
− |
| |
− | \refs [LLR] M.R.\ Leadbetter, G.\ Lindgren, and
| |
− | H.\ Rootz\'en.
| |
− | {\it Extremes and Related Properties of Random Sequences
| |
− | and Processes\/}.
| |
− | Springer-Verlag, New York, 1983.
| |
− |
| |
− | \refs [MT] S.P.\ Meyn and R.L.\ Tweedie.
| |
− | {\it Markov Chains and Stochastic Stability\/} (3rd
| |
− | printing). Springer-Verlag, New York, 1996.
| |
− |
| |
− | \refs [Pe] M.\ Peligrad.
| |
− | Conditional central limit theorem via martingale
| |
− | approximation.
| |
− | In: {\it Dependence in Probability, Analysis and Number
| |
− | Theory\/}, (I.\ Berkes, R.C.\ Bradley, H.\ Dehling,
| |
− | M.\ Peligrad, and R.\ Tichy, eds.), pp.\ 295-309.
| |
− | Kendrick Press, Heber City (Utah), 2010.
| |
− |
| |
− | \refs [Ri] E.\ Rio.
| |
− | {\it Th\'eorie Asymptotique des Processus Al\'eatoires Faiblement D\'ependants\/}. \break
| |
− | Math\'ematiques \& Applications 31.
| |
− | Springer, Paris, 2000.
| |
− |
| |
− | \refs [Ro1] M.\ Rosenblatt. A central limit theorem and
| |
− | a strong mixing condition.
| |
− | {\it Proc.\ Natl.\ Acad.\ Sci.\ USA\/} 42 (1956) 43-47.
| |
− |
| |
− | \refs [Ro2] M.\ Rosenblatt.
| |
− | {\it Markov Processes, Structure and Asymptotic Behavior\/}.
| |
− | Springer-Verlag, New York, 1971.
| |
− |
| |
− | \refs [Ro3] M.\ Rosenblatt.
| |
− | {\it Stationary Sequences and Random Fields\/}.
| |
− | Birkh\"auser, Boston, 1985.
| |
− |
| |
− | \refs [\v Zu] I.G.\ \v Zurbenko.
| |
− | {\it The Spectral Analysis of Time Series\/}.
| |
− | North-Holland, Amsterdam, 1986.
| |
− |
| |
− |
| |
− | \bye
| |