WienerProcess - Maple Help
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Finance

  

WienerProcess

  

create new Wiener process

 

Calling Sequence

Parameters

Description

Examples

Compatibility

Calling Sequence

WienerProcess(J)

WienerProcess(Sigma)

Parameters

J

-

(optional) stochastic process with non-negative increments, or a deterministic function of time; subordinator

Sigma

-

Matrix; covariance matrix

Description

• 

The WienerProcess command creates a new Wiener process. If called with no arguments, the WienerProcess command creates a new standard Wiener process, , that is a Gaussian process with independent increments such that  with probability ,  and  for all .

• 

The WienerProcess(Sigma) calling sequence creates a Wiener process with covariance matrix Sigma. The matrix Sigma must be a positive semi-definite square matrix. The dimension of the generated process will be equal to the dimension of the matrix Sigma.

• 

If an optional parameter J is passed, the WienerProcess command creates a process of the form , where  is the standard Wiener process. Note that the subordinator  must be an increasing process with non-negative, homogeneous, and independent increments. This can be either another stochastic process such as a Poisson process or a Gamma process, a procedure, or an algebraic expression.

Examples

First create a standard Wiener process and generate  replications of the sample path and plot the result.

Define another stochastic variable as an expression involving . You can compute the expected value of  using Monte Carlo simulation with the specified number of replications of the sample path.

(1)

(2)

Define another stochastic variable , which also depends on  but uses symbolic coefficients. Note that  is an Ito process, so it is governed by the stochastic differential equation (SDE) . You can use the Drift and Diffusion commands to compute  and .

(3)

(4)

(5)

Create a subordinated Wiener process that uses a Poisson process with intensity parameter  as subordinator.

(6)

(7)

Here is a representation of the Ornstein-Uhlenbeck process in terms of or a subordinated Wiener process. In this case the subordinator is a deterministic process that can be specified as a Maple procedure or an algebraic expression.

(8)

(9)

(10)

(11)

Compatibility

• 

The Finance[WienerProcess] command was introduced in Maple 15.

• 

For more information on Maple 15 changes, see Updates in Maple 15.

See Also

Finance[BlackScholesProcess]

Finance[CEVProcess]

Finance[Diffusion]

Finance[Drift]

Finance[ExpectedValue]

Finance[GeometricBrownianMotion]

Finance[ItoProcess]

Finance[PathPlot]

Finance[SamplePath]

Finance[SampleValues]

Finance[StochasticProcesses]

Finance[WienerProcess]

 


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