Approximation of Stochastic Differential Equations by Additive Models Using Splines and Conic Programming

p. 341-352

Abstract

Stochastic differential equations are widely used to model noise-affected phenomena in nature, technology and economy (Kloeden et al., 1994). As these equations are usually hard to represent by a computer and hard to resolve we express them in simplified manner. We introduce an approximation by discretization and additive models based on splines. Then, we construct a penalized residual sum of squares (PRSS) for this model. We show when the related minimization program can be written as a Tikhonov regularization problem (ridge regression), and we treat it using continuous optimization techniques. In particular, we apply the elegant framework of conic quadratic programming. Convex optimization problems are very well-structured, resembling linear programs and permit the use of interior point methods (Nesterov & Nemirovskii, 1993).

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References

Bibliographical reference

Pakize Taylan, Gerhard-Wilhelm Weber and Erik Kropat, « Approximation of Stochastic Differential Equations by Additive Models Using Splines and Conic Programming », CASYS, 21 | 2008, 341-352.

Electronic reference

Pakize Taylan, Gerhard-Wilhelm Weber and Erik Kropat, « Approximation of Stochastic Differential Equations by Additive Models Using Splines and Conic Programming », CASYS [Online], 21 | 2008, Online since 13 September 2024, connection on 20 September 2024. URL : http://popups.lib.uliege.be/1373-5411/index.php?id=3272

Authors

Pakize Taylan

Middle East Technical University, Institute of Applied Mathematics,06531 Ankara, Turkey ; Dicle University, Department of Mathematics, 21280 Diyarbakir, Turkey

Gerhard-Wilhelm Weber

Dicle University, Department of Mathematics, 21280 Diyarbakir, Turkey

By this author

Erik Kropat

University Erlangen-Nuremberg, Department of Mathematics, 91058 Erlangen, Germany

Copyright

CC BY-SA 4.0 Deed