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mathematics Mathematics is a field of study that discovers and organizes methods, Mathematical theory, theories and theorems that are developed and Mathematical proof, proved for the needs of empirical sciences and mathematics itself. There are many ar ...
, the Wiener process (or Brownian motion, due to its historical connection with the physical process of the same name) is a real-valued continuous-time
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 in a probability space, where the index of the family often has the interpretation of time. Sto ...
discovered by
Norbert Wiener Norbert Wiener (November 26, 1894 – March 18, 1964) was an American computer scientist, mathematician, and philosopher. He became a professor of mathematics at the Massachusetts Institute of Technology ( MIT). A child prodigy, Wiener late ...
. It is one of the best known Lévy processes ( càdlàg stochastic processes with stationary independent increments). It occurs frequently in pure and
applied mathematics Applied mathematics is the application of mathematics, mathematical methods by different fields such as physics, engineering, medicine, biology, finance, business, computer science, and Industrial sector, industry. Thus, applied mathematics is a ...
,
economics Economics () is a behavioral science that studies the Production (economics), production, distribution (economics), distribution, and Consumption (economics), consumption of goods and services. Economics focuses on the behaviour and interac ...
,
quantitative finance Mathematical finance, also known as quantitative finance and financial mathematics, is a field of applied mathematics, concerned with mathematical modeling in the financial field. In general, there exist two separate branches of finance that requ ...
,
evolutionary biology Evolutionary biology is the subfield of biology that studies the evolutionary processes such as natural selection, common descent, and speciation that produced the diversity of life on Earth. In the 1930s, the discipline of evolutionary biolo ...
, and
physics Physics is the scientific study of matter, its Elementary particle, fundamental constituents, its motion and behavior through space and time, and the related entities of energy and force. "Physical science is that department of knowledge whi ...
. The Wiener process plays an important role in both pure and applied mathematics. In pure mathematics, the Wiener process gave rise to the study of continuous time martingales. It is a key process in terms of which more complicated stochastic processes can be described. As such, it plays a vital role in
stochastic calculus Stochastic calculus is a branch of mathematics that operates on stochastic processes. It allows a consistent theory of integration to be defined for integrals of stochastic processes with respect to stochastic processes. This field was created an ...
, diffusion processes and even
potential theory In mathematics and mathematical physics, potential theory is the study of harmonic functions. The term "potential theory" was coined in 19th-century physics when it was realized that the two fundamental forces of nature known at the time, namely g ...
. It is the driving process of Schramm–Loewner evolution. In
applied mathematics Applied mathematics is the application of mathematics, mathematical methods by different fields such as physics, engineering, medicine, biology, finance, business, computer science, and Industrial sector, industry. Thus, applied mathematics is a ...
, the Wiener process is used to represent the integral of a white noise Gaussian process, and so is useful as a model of noise in electronics engineering (see Brownian noise), instrument errors in filtering theory and disturbances in
control theory Control theory is a field of control engineering and applied mathematics that deals with the control system, control of dynamical systems in engineered processes and machines. The objective is to develop a model or algorithm governing the applic ...
. The Wiener process has applications throughout the mathematical sciences. In physics it is used to study Brownian motion and other types of diffusion via the Fokker–Planck and
Langevin equation In physics, a Langevin equation (named after Paul Langevin) is a stochastic differential equation describing how a system evolves when subjected to a combination of deterministic and fluctuating ("random") forces. The dependent variables in a Lange ...
s. It also forms the basis for the rigorous
path integral formulation The path integral formulation is a description in quantum mechanics that generalizes the stationary action principle of classical mechanics. It replaces the classical notion of a single, unique classical trajectory for a system with a sum, or ...
of
quantum mechanics Quantum mechanics is the fundamental physical Scientific theory, theory that describes the behavior of matter and of light; its unusual characteristics typically occur at and below the scale of atoms. Reprinted, Addison-Wesley, 1989, It is ...
(by the Feynman–Kac formula, a solution to the
Schrödinger equation The Schrödinger equation is a partial differential equation that governs the wave function of a non-relativistic quantum-mechanical system. Its discovery was a significant landmark in the development of quantum mechanics. It is named after E ...
can be represented in terms of the Wiener process) and the study of eternal inflation in
physical cosmology Physical cosmology is a branch of cosmology concerned with the study of cosmological models. A cosmological model, or simply cosmology, provides a description of the largest-scale structures and dynamics of the universe and allows study of fu ...
. It is also prominent in the mathematical theory of finance, in particular the Black–Scholes option pricing model.


Characterisations of the Wiener process

The Wiener process ''W_t'' is characterised by the following properties: #W_0= 0 almost surely #W has independent increments: for every t>0, the future increments W_ - W_t, u \ge 0, are independent of the past values W_s, s< t. #W has Gaussian increments: W_ - W_t is normally distributed with mean 0 and variance u, W_ - W_t\sim \mathcal N(0,u). #W has almost surely continuous paths: W_t is almost surely continuous in t. That the process has independent increments means that if then and are independent random variables, and the similar condition holds for ''n'' increments. An alternative characterisation of the Wiener process is the so-called ''Lévy characterisation'' that says that the Wiener process is an almost surely continuous martingale with and quadratic variation (which means that is also a martingale). A third characterisation is that the Wiener process has a spectral representation as a sine series whose coefficients are independent ''N''(0, 1) random variables. This representation can be obtained using the Karhunen–Loève theorem. Another characterisation of a Wiener process is the definite integral (from time zero to time ''t'') of a zero mean, unit variance, delta correlated ("white") Gaussian process. The Wiener process can be constructed as the scaling limit of a
random walk In mathematics, a random walk, sometimes known as a drunkard's walk, is a stochastic process that describes a path that consists of a succession of random steps on some Space (mathematics), mathematical space. An elementary example of a rand ...
, or other discrete-time stochastic processes with stationary independent increments. This is known as Donsker's theorem. Like the random walk, the Wiener process is recurrent in one or two dimensions (meaning that it returns almost surely to any fixed
neighborhood A neighbourhood (Commonwealth English) or neighborhood (American English) is a geographically localized community within a larger town, city, suburb or rural area, sometimes consisting of a single street and the buildings lining it. Neigh ...
of the origin infinitely often) whereas it is not recurrent in dimensions three and higher (where a multidimensional Wiener process is a process such that its coordinates are independent Wiener processes). Unlike the random walk, it is scale invariant, meaning that \alpha^ W_ is a Wiener process for any nonzero constant . The Wiener measure is the probability law on the space of
continuous function In mathematics, a continuous function is a function such that a small variation of the argument induces a small variation of the value of the function. This implies there are no abrupt changes in value, known as '' discontinuities''. More preci ...
s , with , induced by the Wiener process. An
integral In mathematics, an integral is the continuous analog of a Summation, sum, which is used to calculate area, areas, volume, volumes, and their generalizations. Integration, the process of computing an integral, is one of the two fundamental oper ...
based on Wiener measure may be called a Wiener integral.


Wiener process as a limit of random walk

Let \xi_1, \xi_2, \ldots be i.i.d. random variables with mean 0 and variance 1. For each ''n'', define a continuous time stochastic process W_n(t)=\frac\sum\limits_\xi_k, \qquad t \in ,1 This is a random step function. Increments of W_n are independent because the \xi_k are independent. For large ''n'', W_n(t)-W_n(s) is close to N(0,t-s) by the central limit theorem. Donsker's theorem asserts that as n \to \infty, W_n approaches a Wiener process, which explains the ubiquity of Brownian motion.


Properties of a one-dimensional Wiener process


Basic properties

The unconditional
probability density function In probability theory, a probability density function (PDF), density function, or density of an absolutely continuous random variable, is a Function (mathematics), function whose value at any given sample (or point) in the sample space (the s ...
follows a
normal distribution In probability theory and statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is f(x) = \frac ...
with mean = 0 and variance = ''t'', at a fixed time : f_(x) = \frac e^. The expectation is zero: \operatorname E _t= 0. The
variance In probability theory and statistics, variance is the expected value of the squared deviation from the mean of a random variable. The standard deviation (SD) is obtained as the square root of the variance. Variance is a measure of dispersion ...
, using the computational formula, is : \operatorname(W_t) = t. These results follow immediately from the definition that increments have a
normal distribution In probability theory and statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is f(x) = \frac ...
, centered at zero. Thus W_t = W_t-W_0 \sim N(0,t).


Covariance and correlation

The covariance and
correlation In statistics, correlation or dependence is any statistical relationship, whether causal or not, between two random variables or bivariate data. Although in the broadest sense, "correlation" may indicate any type of association, in statistics ...
(where s \leq t): \begin \operatorname(W_s, W_t) &= s, \\ \operatorname(W_s,W_t) &= \frac = \frac = \sqrt. \end These results follow from the definition that non-overlapping increments are independent, of which only the property that they are uncorrelated is used. Suppose that t_1\leq t_2. \operatorname(W_, W_) = \operatorname\left W_-\operatorname[W_ \cdot (W_-\operatorname[W_">_.html" ;"title="W_-\operatorname[W_">W_-\operatorname[W_ \cdot (W_-\operatorname[W_\right] = \operatorname\left[W_ \cdot W_ \right]. Substituting W_ = ( W_ - W_ ) + W_ we arrive at: \begin \operatorname[W_ \cdot W_] & = \operatorname\left _ \cdot ((W_ - W_)+ W_) \right\\ & = \operatorname\left _ \cdot (W_ - W_ )\right+ \operatorname\left W_^2 \right \end Since W_=W_ - W_ and W_ - W_ are independent, \operatorname\left _ \cdot (W_ - W_ ) \right = \operatorname _\cdot \operatorname _ - W_= 0. Thus \operatorname(W_, W_) = \operatorname \left _^2 \right = t_1. A corollary useful for simulation is that we can write, for : W_ = W_+\sqrt\cdot Z where is an independent standard normal variable.


Wiener representation

Wiener (1923) also gave a representation of a Brownian path in terms of a random
Fourier series A Fourier series () is an Series expansion, expansion of a periodic function into a sum of trigonometric functions. The Fourier series is an example of a trigonometric series. By expressing a function as a sum of sines and cosines, many problems ...
. If \xi_n are independent Gaussian variables with mean zero and variance one, then W_t = \xi_0 t+ \sqrt\sum_^\infty \xi_n\frac and W_t = \sqrt \sum_^\infty \xi_n \frac represent a Brownian motion on ,1/math>. The scaled process \sqrt\, W\left(\frac\right) is a Brownian motion on ,c/math> (cf. Karhunen–Loève theorem).


Running maximum

The joint distribution of the running maximum M_t = \max_ W_s and is f_(m,w) = \frac e^, \qquad m \ge 0, w \leq m. To get the unconditional distribution of f_, integrate over : \begin f_(m) & = \int_^m f_(m,w)\,dw = \int_^m \frac e^ \,dw \\ pt& = \sqrte^, \qquad m \ge 0, \end the probability density function of a Half-normal distribution. The expectation is \operatorname _t= \int_0^\infty m f_(m)\,dm = \int_0^\infty m \sqrte^\,dm = \sqrt If at time t the Wiener process has a known value W_, it is possible to calculate the conditional probability distribution of the maximum in interval , t/math> (cf. Probability distribution of extreme points of a Wiener stochastic process). The cumulative probability distribution function of the maximum value, conditioned by the known value W_t, is: \, F_ (m) = \Pr \left( M_ = \max_ W(s) \leq m \mid W(t) = W_t \right) = \ 1 -\ e^\ \, , \,\ \ m > \max(0,W_t)


Self-similarity


Brownian scaling

For every the process V_t = (1 / \sqrt c) W_ is another Wiener process.


Time reversal

The process V_t = W_ - W_ for is distributed like for .


Time inversion

The process V_t = t W_ is another Wiener process.


Projective invariance

Consider a Wiener process W(t), t\in\mathbb R, conditioned so that \lim_tW(t)=0 (which holds almost surely) and as usual W(0)=0. Then the following are all Wiener processes : \begin W_(t) &=& W(t+s)-W(s), \quad s\in\mathbb R\\ W_(t) &=& \sigma^W(\sigma t),\quad \sigma > 0\\ W_3(t) &=& tW(-1/t). \end Thus the Wiener process is invariant under the projective group PSL(2,R), being invariant under the generators of the group. The action of an element g = \begina&b\\c&d\end is W_g(t) = (ct+d)W\left(\frac\right) - ctW\left(\frac\right) - dW\left(\frac\right), which defines a
group action In mathematics, a group action of a group G on a set S is a group homomorphism from G to some group (under function composition) of functions from S to itself. It is said that G acts on S. Many sets of transformations form a group under ...
, in the sense that (W_g)_h = W_.


Conformal invariance in two dimensions

Let W(t) be a two-dimensional Wiener process, regarded as a complex-valued process with W(0)=0\in\mathbb C. Let D\subset\mathbb C be an open set containing 0, and \tau_D be associated Markov time: \tau_D = \inf \. If f:D\to \mathbb C is a
holomorphic function In mathematics, a holomorphic function is a complex-valued function of one or more complex variables that is complex differentiable in a neighbourhood of each point in a domain in complex coordinate space . The existence of a complex de ...
which is not constant, such that f(0)=0, then f(W_t) is a time-changed Wiener process in f(D) . More precisely, the process Y(t) is Wiener in D with the Markov time S(t) where Y(t) = f(W(\sigma(t))) S(t) = \int_0^t, f'(W(s)), ^2\,ds \sigma(t) = S^(t):\quad t = \int_0^, f'(W(s)), ^2\,ds.


A class of Brownian martingales

If a
polynomial In mathematics, a polynomial is a Expression (mathematics), mathematical expression consisting of indeterminate (variable), indeterminates (also called variable (mathematics), variables) and coefficients, that involves only the operations of addit ...
satisfies the
partial differential equation In mathematics, a partial differential equation (PDE) is an equation which involves a multivariable function and one or more of its partial derivatives. The function is often thought of as an "unknown" that solves the equation, similar to ho ...
\left( \frac + \frac \frac \right) p(x,t) = 0 then the stochastic process M_t = p ( W_t, t ) is a martingale. Example: W_t^2 - t is a martingale, which shows that the quadratic variation of ''W'' on is equal to . It follows that the expected time of first exit of ''W'' from (−''c'', ''c'') is equal to . More generally, for every polynomial the following stochastic process is a martingale: M_t = p ( W_t, t ) - \int_0^t a(W_s,s) \, \mathrms, where ''a'' is the polynomial a(x,t) = \left( \frac + \frac 1 2 \frac \right) p(x,t). Example: p(x,t) = \left(x^2 - t\right)^2, a(x,t) = 4x^2; the process \left(W_t^2 - t\right)^2 - 4 \int_0^t W_s^2 \, \mathrms is a martingale, which shows that the quadratic variation of the martingale W_t^2 - t on , ''t''is equal to 4 \int_0^t W_s^2 \, \mathrms. About functions more general than polynomials, see local martingales.


Some properties of sample paths

The set of all functions ''w'' with these properties is of full Wiener measure. That is, a path (sample function) of the Wiener process has all these properties almost surely:


Qualitative properties

* For every ε > 0, the function ''w'' takes both (strictly) positive and (strictly) negative values on (0, ε). * The function ''w'' is continuous everywhere but differentiable nowhere (like the
Weierstrass function In mathematics, the Weierstrass function, named after its discoverer, Karl Weierstrass, is an example of a real-valued function (mathematics), function that is continuous function, continuous everywhere but Differentiable function, differentiab ...
). * For any \epsilon > 0, w(t) is almost surely not (\tfrac 1 2 + \epsilon)-
Hölder continuous Hölder: * ''Hölder, Hoelder'' as surname * Hölder condition * Hölder's inequality In mathematical analysis, Hölder's inequality, named after Otto Hölder, is a fundamental inequality (mathematics), inequality between Lebesgue integration, in ...
, and almost surely (\tfrac 1 2 - \epsilon)-Hölder continuous. * Points of local maximum of the function ''w'' are a dense countable set; the maximum values are pairwise different; each local maximum is sharp in the following sense: if ''w'' has a local maximum at then \lim_ \frac \to \infty. The same holds for local minima. * The function ''w'' has no points of local increase, that is, no ''t'' > 0 satisfies the following for some ε in (0, ''t''): first, ''w''(''s'') ≤ ''w''(''t'') for all ''s'' in (''t'' − ε, ''t''), and second, ''w''(''s'') ≥ ''w''(''t'') for all ''s'' in (''t'', ''t'' + ε). (Local increase is a weaker condition than that ''w'' is increasing on (''t'' − ''ε'', ''t'' + ''ε'').) The same holds for local decrease. * The function ''w'' is of unbounded variation on every interval. * The quadratic variation of ''w'' over ,''t''is ''t''. * Zeros of the function ''w'' are a nowhere dense perfect set of Lebesgue measure 0 and Hausdorff dimension 1/2 (therefore, uncountable).


Quantitative properties


= Law of the iterated logarithm

= \limsup_ \frac = 1, \quad \text.


= Modulus of continuity

= Local modulus of continuity: \limsup_ \frac = 1, \qquad \text. Global modulus of continuity (Lévy): \limsup_ \sup_\frac = 1, \qquad \text.


= Dimension doubling theorem

= The dimension doubling theorems say that the Hausdorff dimension of a set under a Brownian motion doubles almost surely.


Local time

The image of the
Lebesgue measure In measure theory, a branch of mathematics, the Lebesgue measure, named after French mathematician Henri Lebesgue, is the standard way of assigning a measure to subsets of higher dimensional Euclidean '-spaces. For lower dimensions or , it c ...
on , ''t''under the map ''w'' (the pushforward measure) has a density . Thus, \int_0^t f(w(s)) \, \mathrms = \int_^ f(x) L_t(x) \, \mathrmx for a wide class of functions ''f'' (namely: all continuous functions; all locally integrable functions; all non-negative measurable functions). The density ''Lt'' is (more exactly, can and will be chosen to be) continuous. The number ''Lt''(''x'') is called the local time at ''x'' of ''w'' on , ''t'' It is strictly positive for all ''x'' of the interval (''a'', ''b'') where ''a'' and ''b'' are the least and the greatest value of ''w'' on , ''t'' respectively. (For ''x'' outside this interval the local time evidently vanishes.) Treated as a function of two variables ''x'' and ''t'', the local time is still continuous. Treated as a function of ''t'' (while ''x'' is fixed), the local time is a singular function corresponding to a nonatomic measure on the set of zeros of ''w''. These continuity properties are fairly non-trivial. Consider that the local time can also be defined (as the density of the pushforward measure) for a smooth function. Then, however, the density is discontinuous, unless the given function is monotone. In other words, there is a conflict between good behavior of a function and good behavior of its local time. In this sense, the continuity of the local time of the Wiener process is another manifestation of non-smoothness of the trajectory.


Information rate

The information rate of the Wiener process with respect to the squared error distance, i.e. its quadratic rate-distortion function, is given by R(D) = \frac \approx 0.29D^. Therefore, it is impossible to encode \_ using a
binary code A binary code represents plain text, text, instruction set, computer processor instructions, or any other data using a two-symbol system. The two-symbol system used is often "0" and "1" from the binary number, binary number system. The binary cod ...
of less than T R(D) bits and recover it with expected mean squared error less than D. On the other hand, for any \varepsilon>0, there exists T large enough and a
binary code A binary code represents plain text, text, instruction set, computer processor instructions, or any other data using a two-symbol system. The two-symbol system used is often "0" and "1" from the binary number, binary number system. The binary cod ...
of no more than 2^ distinct elements such that the expected
mean squared error In statistics, the mean squared error (MSE) or mean squared deviation (MSD) of an estimator (of a procedure for estimating an unobserved quantity) measures the average of the squares of the errors—that is, the average squared difference betwee ...
in recovering \_ from this code is at most D - \varepsilon. In many cases, it is impossible to encode the Wiener process without sampling it first. When the Wiener process is sampled at intervals T_s before applying a binary code to represent these samples, the optimal trade-off between
code rate In telecommunication and information theory, the code rate (or information rateHuffman, W. Cary, and Pless, Vera, ''Fundamentals of Error-Correcting Codes'', Cambridge, 2003.) of a forward error correction code is the proportion of the data-stre ...
R(T_s,D) and expected mean square error D (in estimating the continuous-time Wiener process) follows the parametric representation R(T_s,D_\theta) = \frac \int_0^1 \log_2^+\left frac\rightd\varphi, D_\theta = \frac + T_s\int_0^1 \min\left\ d\varphi, where S(\varphi) = (2 \sin(\pi \varphi /2))^ and \log^+ = \max\. In particular, T_s/6 is the mean squared error associated only with the sampling operation (without encoding).


Related processes

The stochastic process defined by X_t = \mu t + \sigma W_t is called a Wiener process with drift μ and infinitesimal variance σ2. These processes exhaust continuous Lévy processes, which means that they are the only continuous Lévy processes, as a consequence of the Lévy–Khintchine representation. Two random processes on the time interval
, 1 The comma is a punctuation mark that appears in several variants in different languages. Some typefaces render it as a small line, slightly curved or straight, but inclined from the vertical; others give it the appearance of a miniature fille ...
appear, roughly speaking, when conditioning the Wiener process to vanish on both ends of ,1 With no further conditioning, the process takes both positive and negative values on
, 1 The comma is a punctuation mark that appears in several variants in different languages. Some typefaces render it as a small line, slightly curved or straight, but inclined from the vertical; others give it the appearance of a miniature fille ...
and is called Brownian bridge. Conditioned also to stay positive on (0, 1), the process is called Brownian excursion. In both cases a rigorous treatment involves a limiting procedure, since the formula ''P''(''A'', ''B'') = ''P''(''A'' ∩ ''B'')/''P''(''B'') does not apply when ''P''(''B'') = 0. A geometric Brownian motion can be written e^. It is a stochastic process which is used to model processes that can never take on negative values, such as the value of stocks. The stochastic process X_t = e^ W_ is distributed like the Ornstein–Uhlenbeck process with parameters \theta = 1, \mu = 0, and \sigma^2 = 2. The time of hitting a single point ''x'' > 0 by the Wiener process is a random variable with the Lévy distribution. The family of these random variables (indexed by all positive numbers ''x'') is a left-continuous modification of a Lévy process. The right-continuous modification of this process is given by times of first exit from closed intervals , ''x'' The local time of a Brownian motion describes the time that the process spends at the point ''x''. Formally L^x(t) =\int_0^t \delta(x-B_t)\,ds where ''δ'' is the
Dirac delta function In mathematical analysis, the Dirac delta function (or distribution), also known as the unit impulse, is a generalized function on the real numbers, whose value is zero everywhere except at zero, and whose integral over the entire real line ...
. The behaviour of the local time is characterised by Ray–Knight theorems.


Brownian martingales

Let ''A'' be an event related to the Wiener process (more formally: a set, measurable with respect to the Wiener measure, in the space of functions), and ''Xt'' the conditional probability of ''A'' given the Wiener process on the time interval , ''t''(more formally: the Wiener measure of the set of trajectories whose concatenation with the given partial trajectory on , ''t''belongs to ''A''). Then the process ''Xt'' is a continuous martingale. Its martingale property follows immediately from the definitions, but its continuity is a very special fact – a special case of a general theorem stating that all Brownian martingales are continuous. A Brownian martingale is, by definition, a martingale adapted to the Brownian filtration; and the Brownian filtration is, by definition, the
filtration Filtration is a physical separation process that separates solid matter and fluid from a mixture using a ''filter medium'' that has a complex structure through which only the fluid can pass. Solid particles that cannot pass through the filte ...
generated by the Wiener process.


Integrated Brownian motion

The time-integral of the Wiener process W^(t) := \int_0^t W(s) \, ds is called integrated Brownian motion or integrated Wiener process. It arises in many applications and can be shown to have the distribution ''N''(0, ''t''3/3), calculated using the fact that the covariance of the Wiener process is t \wedge s = \min(t, s). For the general case of the process defined by V_f(t) = \int_0^t f'(s)W(s) \,ds=\int_0^t (f(t)-f(s))\,dW_s Then, for a > 0, \operatorname(V_f(t))=\int_0^t (f(t)-f(s))^2 \,ds \operatorname(V_f(t+a),V_f(t))=\int_0^t (f(t+a)-f(s))(f(t)-f(s)) \,ds In fact, V_f(t) is always a zero mean normal random variable. This allows for simulation of V_f(t+a) given V_f(t) by taking V_f(t+a)=A\cdot V_f(t) +B\cdot Z where ''Z'' is a standard normal variable and A=\frac B^2=\operatorname(V_f(t+a))-A^2\operatorname(V_f(t)) The case of V_f(t)=W^(t) corresponds to f(t)=t. All these results can be seen as direct consequences of Itô isometry. The ''n''-times-integrated Wiener process is a zero-mean normal variable with variance \frac\left ( \frac \right )^2 . This is given by the Cauchy formula for repeated integration.


Time change

Every continuous martingale (starting at the origin) is a time changed Wiener process. Example: 2''W''''t'' = ''V''(4''t'') where ''V'' is another Wiener process (different from ''W'' but distributed like ''W''). Example. W_t^2 - t = V_ where A(t) = 4 \int_0^t W_s^2 \, \mathrm s and ''V'' is another Wiener process. In general, if ''M'' is a continuous martingale then M_t - M_0 = V_ where ''A''(''t'') is the quadratic variation of ''M'' on , ''t'' and ''V'' is a Wiener process. Corollary. (See also Doob's martingale convergence theorems) Let ''Mt'' be a continuous martingale, and M^-_\infty = \liminf_ M_t, M^+_\infty = \limsup_ M_t. Then only the following two cases are possible: -\infty < M^-_\infty = M^+_\infty < +\infty, -\infty = M^-_\infty < M^+_\infty = +\infty; other cases (such as M^-_\infty = M^+_\infty = +\infty,   M^-_\infty < M^+_\infty < +\infty etc.) are of probability 0. Especially, a nonnegative continuous martingale has a finite limit (as ''t'' → ∞) almost surely. All stated (in this subsection) for martingales holds also for local martingales.


Change of measure

A wide class of continuous semimartingales (especially, of diffusion processes) is related to the Wiener process via a combination of time change and change of measure. Using this fact, the qualitative properties stated above for the Wiener process can be generalized to a wide class of continuous semimartingales.


Complex-valued Wiener process

The complex-valued Wiener process may be defined as a complex-valued random process of the form Z_t = X_t + i Y_t where X_t and Y_t are independent Wiener processes (real-valued). In other words, it is the 2-dimensional Wiener process, where we identify \R^2 with \mathbb C.


Self-similarity

Brownian scaling, time reversal, time inversion: the same as in the real-valued case. Rotation invariance: for every complex number c such that , c, =1 the process c \cdot Z_t is another complex-valued Wiener process.


Time change

If f is an
entire function In complex analysis, an entire function, also called an integral function, is a complex-valued function that is holomorphic on the whole complex plane. Typical examples of entire functions are polynomials and the exponential function, and any ...
then the process f(Z_t) - f(0) is a time-changed complex-valued Wiener process. Example: Z_t^2 = \left(X_t^2 - Y_t^2\right) + 2 X_t Y_t i = U_ where A(t) = 4 \int_0^t , Z_s, ^2 \, \mathrm s and U is another complex-valued Wiener process. In contrast to the real-valued case, a complex-valued martingale is generally not a time-changed complex-valued Wiener process. For example, the martingale 2 X_t + i Y_t is not (here X_t and Y_t are independent Wiener processes, as before).


Brownian sheet

The Brownian sheet is a multiparamateric generalization. The definition varies from authors, some define the Brownian sheet to have specifically a two-dimensional time parameter t while others define it for general dimensions.


See also

Generalities: * Abstract Wiener space * Classical Wiener space * Chernoff's distribution *
Fractal In mathematics, a fractal is a Shape, geometric shape containing detailed structure at arbitrarily small scales, usually having a fractal dimension strictly exceeding the topological dimension. Many fractals appear similar at various scale ...
* Brownian web * Probability distribution of extreme points of a Wiener stochastic process Numerical path sampling: * Euler–Maruyama method * Walk-on-spheres method


Notes


References

* (also available online
PDF-files
'' * . * * * .


External links


Brownian Motion for the School-Going ChildBrownian Motion, "Diverse and Undulating"
* {{Stochastic processes Martingale theory Lévy processes