Burkholder–Davis–Gundy inequalities
   HOME

TheInfoList



OR:

In
mathematics Mathematics is an area of knowledge that includes the topics of numbers, formulas and related structures, shapes and the spaces in which they are contained, and quantities and their changes. These topics are represented in modern mathematics ...
, quadratic variation is used in the analysis of
stochastic process In probability theory and related fields, a stochastic () or random process is a mathematical object usually defined as a family of random variables. Stochastic processes are widely used as mathematical models of systems and phenomena that appea ...
es such as Brownian motion and other martingales. Quadratic variation is just one kind of variation of a process.


Definition

Suppose that X_t is a real-valued stochastic process defined on a probability space (\Omega,\mathcal,\mathbb) and with time index t ranging over the non-negative real numbers. Its quadratic variation is the process, written as t, defined as : t=\lim_\sum_^n(X_-X_)^2 where P ranges over partitions of the interval ,t/math> and the norm of the partition P is the mesh. This limit, if it exists, is defined using
convergence in probability In probability theory, there exist several different notions of convergence of random variables. The convergence of sequences of random variables to some limit random variable is an important concept in probability theory, and its applications to ...
. Note that a process may be of finite quadratic variation in the sense of the definition given here and its paths be nonetheless almost surely of infinite 1-variation for every t>0 in the classical sense of taking the supremum of the sum over all partitions; this is in particular the case for Brownian motion. More generally, the covariation (or cross-variance) of two processes X and Y is : ,Yt = \lim_\sum_^\left(X_-X_\right)\left(Y_-Y_\right). The covariation may be written in terms of the quadratic variation by the
polarization identity In linear algebra, a branch of mathematics, the polarization identity is any one of a family of formulas that express the inner product of two vectors in terms of the norm of a normed vector space. If a norm arises from an inner product then t ...
: : ,Yt=\tfrac( +Yt- t- t). Notation: the quadratic variation is also notated as \langle X \rangle_t or \langle X,X \rangle_t.


Finite variation processes

A process X is said to have ''finite variation'' if it has
bounded variation In mathematical analysis, a function of bounded variation, also known as ' function, is a real-valued function whose total variation is bounded (finite): the graph of a function having this property is well behaved in a precise sense. For a conti ...
over every finite time interval (with probability 1). Such processes are very common including, in particular, all continuously differentiable functions. The quadratic variation exists for all continuous finite variation processes, and is zero. This statement can be generalized to non-continuous processes. Any càdlàg finite variation process X has quadratic variation equal to the sum of the squares of the jumps of X. To state this more precisely, the left limit of X_t with respect to t is denoted by X_, and the jump of X at time t can be written as \Delta X_t = X_t - X_. Then, the quadratic variation is given by : t=\sum_(\Delta X_s)^2. The proof that continuous finite variation processes have zero quadratic variation follows from the following inequality. Here, P is a partition of the interval ,t/math>, and V_t(X) is the variation of X over ,t/math>. :\begin \sum_^n(X_-X_)^2&\le\max_, X_-X_, \sum_^n, X_-X_, \\ &\le\max_, X_u-X_v, V_t(X). \end By the continuity of X, this vanishes in the limit as \Vert P\Vert goes to zero.


Itô processes

The quadratic variation of a standard Brownian motion B exists, and is given by t=t, however the limit in the definition is meant in the L^2 sense and not pathwise. This generalizes to Itô processes that, by definition, can be expressed in terms of Itô integrals : \begin X_t &= X_0 + \int_0^t\sigma_s\,dB_s + \int_0^t\mu_s\,d s \\ &= X_0 + \int_0^t\sigma_s\,dB_s + \int_0^t\mu_s\,ds,\end where B is a Brownian motion. Any such process has quadratic variation given by : t=\int_0^t\sigma_s^2\,ds.


Semimartingales

Quadratic variations and covariations of all semimartingales can be shown to exist. They form an important part of the theory of stochastic calculus, appearing in
Itô's lemma In mathematics, Itô's lemma or Itô's formula (also called the Itô-Doeblin formula, especially in French literature) is an identity used in Itô calculus to find the differential of a time-dependent function of a stochastic process. It serves a ...
, which is the generalization of the chain rule to the Itô integral. The quadratic covariation also appears in the
integration by parts In calculus, and more generally in mathematical analysis, integration by parts or partial integration is a process that finds the integral of a product of functions in terms of the integral of the product of their derivative and antiderivative. ...
formula :X_tY_t=X_0Y_0+\int_0^tX_\,dY_s + \int_0^tY_\,dX_s+ ,Yt, which can be used to compute ,Y/math>. Alternatively this can be written as a stochastic differential equation: :\,d(X_tY_t)=X_\,dY_t + Y_\,dX_t+\,dX_t \,dY_t, where \,dX_t \,dY_t=\,d ,Yt.


Martingales

All càdlàg martingales, and local martingales have well defined quadratic variation, which follows from the fact that such processes are examples of semimartingales. It can be shown that the quadratic variation /math> of a general locally square integrable martingale M is the unique right-continuous and increasing process starting at zero, with jumps \Delta = \Delta M^2 and such that M^2- /math> is a local martingale. A proof of existence of M (without using stochastic calculus) is given in Karandikar–Rao (2014). A useful result for square integrable martingales is the
Itô isometry In mathematics, the Itô isometry, named after Kiyoshi Itô, is a crucial fact about Itô stochastic integrals. One of its main applications is to enable the computation of variances for random variables that are given as Itô integrals. Let W : ...
, which can be used to calculate the variance of Itô integrals, :\operatorname\left(\left(\int_0^t H\,dM\right)^2\right) = \operatorname\left(\int_0^tH^2\,d right). This result holds whenever M is a càdlàg square integrable martingale and H is a bounded predictable process, and is often used in the construction of the Itô integral. Another important result is the Burkholder–Davis–Gundy inequality. This gives bounds for the maximum of a martingale in terms of the quadratic variation. For a local martingale M starting at zero, with maximum denoted by M_t*=\operatorname_ , M_s, , and any real number p \geq 1, the inequality is :c_p\operatorname( t^)\le \operatorname((M^*_t)^p)\le C_p\operatorname( t^). Here, c_p < C_p are constants depending on the choice of p, but not depending on the martingale M or time t used. If M is a continuous local martingale, then the Burkholder–Davis–Gundy inequality holds for any p>0. An alternative process, the predictable quadratic variation is sometimes used for locally square integrable martingales. This is written as \langle M_t \rangle, and is defined to be the unique right-continuous and increasing predictable process starting at zero such that M^2 - \langle M \rangle is a local martingale. Its existence follows from the Doob–Meyer decomposition theorem and, for continuous local martingales, it is the same as the quadratic variation.


See also

* Total variation *
Bounded variation In mathematical analysis, a function of bounded variation, also known as ' function, is a real-valued function whose total variation is bounded (finite): the graph of a function having this property is well behaved in a precise sense. For a conti ...


References

* *{{cite journal, last1=Karandikar, first1=Rajeeva L., last2=Rao, first2=B. V., date=2014, title=On quadratic variation of martingales, url=http://www.ias.ac.in/article/fulltext/pmsc/124/03/0457-0469, journal= Proceedings - Mathematical Sciences, volume=124, issue=3, pages=457–469, doi=10.1007/s12044-014-0179-2, s2cid=120031445 Stochastic processes