The base sde object
represents the most general model.
Tip
The sde class is not an abstract class. You can instantiate sde objects directly to extend
the set of core models.
Creating an sde object using sde requires the following inputs:
A drift-rate function F. This function returns an
NVars-by-1 drift-rate vector
when run with the following inputs:
A real-valued scalar observation time t.
An NVars-by-1 state
vector Xt.
A diffusion-rate function G. This function returns
an NVars-by-NBrowns diffusion-rate
matrix when run with the inputs t and
Xt.
Evaluating object parameters by passing (t, Xt) to a common, published interface allows most parameters to be referenced by a common input argument list that reinforces common method programming. You can use this simple function evaluation approach to model or construct powerful analytics, as in the following example.
Create an sde object using sde to represent a univariate
geometric Brownian Motion model of the form:
Create drift and diffusion functions that are accessible by the common (t,Xt) interface:
F = @(t,X) 0.1 * X; G = @(t,X) 0.3 * X;
Pass the functions to sde to create an
sde object:
obj = sde(F, G) % dX = F(t,X)dt + G(t,X)dWobj =
Class SDE: Stochastic Differential Equation
-------------------------------------------
Dimensions: State = 1, Brownian = 1
-------------------------------------------
StartTime: 0
StartState: 1
Correlation: 1
Drift: drift rate function F(t,X(t))
Diffusion: diffusion rate function G(t,X(t))
Simulation: simulation method/function simByEuler
The sde object displays like a MATLAB® structure, with the following information:
The object's class
A brief description of the object
A summary of the dimensionality of the model
The object's displayed parameters are as follows:
StartTime: The initial observation
time (real-valued scalar)
StartState: The initial state vector
(NVars-by-1 column
vector)
Correlation: The correlation structure
between Brownian process
Drift: The drift-rate function F(t,Xt)
Diffusion: The diffusion-rate
function G(t,Xt)
Simulation: The simulation method
or function.
Of these displayed parameters, only Drift and Diffusion are
required inputs.
The only exception to the (t, Xt)
evaluation interface is Correlation. Specifically,
when you enter Correlation as a function, the SDE
engine assumes that it is a deterministic function of time, C(t).
This restriction on Correlation as a deterministic
function of time allows Cholesky factors to be computed and stored
before the formal simulation. This inconsistency dramatically improves
run-time performance for dynamic correlation structures. If Correlation is
stochastic, you can also include it within the simulation architecture
as part of a more general random number generation function.
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