Javascript must be enabled to continue!
Approximation of Stochastic Volterra Equations with kernels of completely monotone type
View through CrossRef
In this work, we develop a multifactor approximation for
d
d
-dimensional Stochastic Volterra Equations (SVE) with Lipschitz coefficients and kernels of completely monotone type that may be singular. First, we prove an
L
2
L^2
-estimation between two SVEs with different kernels, which provides a quantification of the error between the SVE and any multifactor Stochastic Differential Equation (SDE) approximation. For the particular rough kernel case with Hurst parameter lying in
(
0
,
1
/
2
)
(0,1/2)
, we propose various approximating multifactor kernels, state their rates of convergence and illustrate their efficiency for the rough Bergomi model. Second, we study a Euler discretization of the multifactor SDE and establish a convergence result towards the SVE that is uniform with respect to the approximating multifactor kernels. These obtained results lead us to build a new multifactor Euler scheme that reduces significantly the computational cost in an asymptotic way compared to the Euler scheme for SVEs. Finally, we show that our multifactor Euler scheme outperforms the Euler scheme for SVEs for option pricing in the rough Heston model.
Title: Approximation of Stochastic Volterra Equations with kernels of completely monotone type
Description:
In this work, we develop a multifactor approximation for
d
d
-dimensional Stochastic Volterra Equations (SVE) with Lipschitz coefficients and kernels of completely monotone type that may be singular.
First, we prove an
L
2
L^2
-estimation between two SVEs with different kernels, which provides a quantification of the error between the SVE and any multifactor Stochastic Differential Equation (SDE) approximation.
For the particular rough kernel case with Hurst parameter lying in
(
0
,
1
/
2
)
(0,1/2)
, we propose various approximating multifactor kernels, state their rates of convergence and illustrate their efficiency for the rough Bergomi model.
Second, we study a Euler discretization of the multifactor SDE and establish a convergence result towards the SVE that is uniform with respect to the approximating multifactor kernels.
These obtained results lead us to build a new multifactor Euler scheme that reduces significantly the computational cost in an asymptotic way compared to the Euler scheme for SVEs.
Finally, we show that our multifactor Euler scheme outperforms the Euler scheme for SVEs for option pricing in the rough Heston model.
Related Results
Spectral-Similarity-Based Kernel of SVM for Hyperspectral Image Classification
Spectral-Similarity-Based Kernel of SVM for Hyperspectral Image Classification
Spectral similarity measures can be regarded as potential metrics for kernel functions, and can be used to generate spectral-similarity-based kernels. However, spectral-similarity-...
Construction and Local Routing for Angle-Monotone Graphs
Construction and Local Routing for Angle-Monotone Graphs
A geometric graph in the plane is angle-monotone of width $\gamma$ if every pair of vertices is connected by an angle-monotone path of width $\gamma$, a path such that the angles o...
Piecewise monotone interpolation and approximation with Muntz polynomials
Piecewise monotone interpolation and approximation with Muntz polynomials
The possibility (subject to certain restrictions) of solving the following approximation and interpolation problem with a given set of “Muntz polynomials” on a real interval is dem...
Parameterization of kernels of the Volterra series for systems given by nonlinear differential equations
Parameterization of kernels of the Volterra series for systems given by nonlinear differential equations
The presented article is devoted on an issue regarding to the transformation of nonlinear models of a certain class to the Volterra functional series. The new identification method...
Fixed points and multistability in monotone Boolean network models
Fixed points and multistability in monotone Boolean network models
Abstract
Gene regulatory networks (GRN) control the expression levels of proteins in cells, and understanding their dynamics is key to potentially controlling disea...
Numerical Solution of Stochastic Ito-Volterra Integral Equations using Haar Wavelets
Numerical Solution of Stochastic Ito-Volterra Integral Equations using Haar Wavelets
AbstractThis paper presents a computational method for solving stochastic Ito-Volterra integral equations. First, Haar wavelets and their properties are employed to derive a genera...
Complex Transfinite Barycentric Mappings with Similarity Kernels
Complex Transfinite Barycentric Mappings with Similarity Kernels
AbstractTransfinite barycentric kernels are the continuous version of traditional barycentric coordinates and are used to define interpolants of values given on a smooth planar con...
Effective Conditions for Extracting Higher Quality Kernels from the Sonnati salams Apricot
Effective Conditions for Extracting Higher Quality Kernels from the Sonnati salams Apricot
This study focused on researching the effective conditions for extracting high quality apricot kernels. Specifically, we analyze the effects of moisture content and compression axi...

