1 / 31

EURANDOM 6-8 March 2006

EURANDOM 6-8 March 2006. Analysis of financial data on different timescales - and a comparison with turbulence Robert Stresing Andreas Nawroth Joachim Peinke. Overview. Scale dependent analysis of financial and turbulence data by using a Fokker-Planck equation

enid
Télécharger la présentation

EURANDOM 6-8 March 2006

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. EURANDOM 6-8 March 2006 Analysis of financial data on different timescales - and a comparison with turbulence Robert Stresing Andreas Nawroth Joachim Peinke

  2. Overview • Scale dependent analysis of financial and turbulence data by using a Fokker-Planck equation • Method for reconstruction of stochastic equations directly from given data • A new approach for very small timescales without Markov properties is presented • Existence of a special Small Timescale Regime for financial data and influence on risk

  3. Analysis of financial data - stocks, FX data: • given prices s(t) • of interest:time dynamics of price changes over a periodt • Analysis of turbulence data: • given velocity s(t) • of interest:time dynamics of velocity changes over a scalet • increment: Q(t,t) = s(t + t) - s(t) • return: Q(t,t) = [s(t + t) - s(t)] / s(t) • log return: Q(t,t) = log[s(t + t)] - log[s(t)] Scale dependent analysis

  4. 5 h 4 min 1 h • scale dependent analysis of Q(t,t): • distribution / pdf on scale t: p(Q,t) • how does the pdf change with the timescale? • more complete characterization: • N scale statistics • may be given by a stochastic equation:Fokker-Planck equation Scale dependent analysis t t= p(Q) p(Q) p(Q) Q in a.u. Q in a.u. Q in a.u.

  5. p(Q, t2) p(Q,t0) scale t p(Q, t1) Q Q Q Q2 (t0,t2) Q1 (t0,t1) Q0 (t0,t0) Method to estimate the stochastic process Question: how are Q(t,t) and Q(t,t') connected for different scales t and t' ? => stochastic equations for: Fokker-Planck equation Langevin equation

  6. Kramers-Moyal Expansion: Method to estimate the stochastic process with coefficients: Pawula’s Theorem: One obtains the Fokker-Planck equation: For trajectories the Langevin equation:

  7. p(Q, t2) p(Q,t0) scale t p(Q, t1) Q Q Q Q2 (t0,t2) Q1 (t0,t1) Q0 (t0,t0) Method to estimate the stochastic process Langevin eq.: Fokker-Planck eq.:

  8. Method: Kramers Moyal Coefficients Example: Volkswagen, t = 10 min

  9. Functional form of the coefficients D(1) and D(2) is presented Method: The reconstructed Fokker-Planck eq. Example: Volkswagen, t = 10 min

  10. Q [a.u.] Q [a.u.] Turbulence: pdfs for different scales t Financial data: pdfs for different scales t Turbulence and financial data scale t p(Q,t) [a.u.] p(Q,t) [a.u.]

  11. Q [a.u.] Q [a.u.] Turbulence: pdfs for different scales t Financial data: pdfs for different scalest Method: Verification p(Q,t) [a.u.] scale t p(Q,t) [a.u.]

  12. General multiscale approach: Method: Markov Property Is a simplification possible? witht1 < t2 < ... <tn Exemplary verification of Markov properties. Similar results are obtained for different parameters Black: conditional probability first order Red: conditional probability second order

  13. Numerical Solution for the Fokker-Planck equation Method: Markov Property Journal of Fluid Mechanics 433 (2001) Markov

  14. Numerical solution of the Fokker-Planck equation for the coefficients D(1) and D(2), which were directly obtained from the data. General view No Markov properties Numerical solution of the Fokker-Planck equation ? 4 min 1 h 5 h

  15. Empiricism - What is beyond? finance: increasing intermittence Num. solution of the Fokker-Planck eq. turbulence: back to Gaussian 4 min 1 h

  16. measure of distance d timescalet New approach for small scales Question: How does the shape of the distribution change with timescale? considered distribution reference distribution

  17. Distance measures Kullback-Leibler-Entropy: Weighted mean square error in logarithmic space: Chi-square distance:

  18. 1 s Distance measure: financial data Small Timescale Regime. Non Markov Fokker-Planck Regime. Markov process Small timescales are special! Example: Volkswagen

  19. Financial and turbulence data smallest t finance turbulence

  20. Dependence on the reference distribution Is the range of the small timescale regime dependent on the reference timescale? 1 s 10 s

  21. Gaussian Distribution Financial and turbulence data Markov Markov turbulence finance

  22. 1 s Dependence on the distance measure Are the results dependent on the special distance measure?

  23. 1 s The Small Timescale Regime - Nontrivial

  24. Autocorrelation Small Timescale Regime due to correlation in time? Q(x,t) |Q(x,t)|

  25. 1 s The influence on risk Percentage of events beyond 10 s Volkswagen Allianz

  26. Summary turbulence: back to Gaussian Markov process - Fokker-Planck equation finance: new universal feature? - Better understanding of dynamics in finance - Influence on risk - Method to reconstruct stochastic equations directly from given data. - Applications: turbulence, financial data, chaotic systems, trembling... http://www.physik.uni-oldenburg.de/hydro/

  27. The End Thank you for your attention! Cooperation with St. Barth, F. Böttcher, Ch. Renner, M. Siefert, R. Friedrich (Münster)

  28. Method scale dependence ofQ(x, t) : cascade like structure Q(x, t) ==> Q(x, t*) idea of fully developed turbulence cascade dynamics descibed by Langevin equation or by Kolmogorov equation

  29. Method : Reconstruction of stochastic equations Derivation of the Kramers-Moyal expansion: H.Risken, Springer From the definition of the transition probability:

  30. Method : Reconstruction of stochastic equations Taking only linear terms: Kramers Moyal Expansion:

  31. DAX DAX

More Related