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  • j = 1 10 P ^ ( Y k , t = j | F t - 1 ) = 1
  • P ^ ( Y k , t = j | F t - 1 ) > 0 .

are not met for all instruments and for all t . Figure 7 compares the periodic and nonperiodic transition probabilities for the YEN. For to simplify the plot only the first 6 rankings are shown over a period of 50 weeks.

Estimated transition probabilities for JPY
Estimated transition probabilities for AUD
Estimated transition probabilities for JPY
Estimated transition probabilities for AUD
Estimated periodic and non periodic transition probabilities for JPY

To evaluate the accuracy of the estimated onestep transition probabilities, define the following rank predictors

  • UL G k , t = argmax j P ^ k , j , t
  • Per G k , t = argmax j P ^ h k ( j , t )
  • ML Let C j t = { P ^ k , j , t } and C j t - k = C j t P ^ k , j , t . for j = 1 to 10 k j = argmax k ( C j t ) i f ( currency k corresponds to k j ) THEN G k , t = j C j + 1 , t = C j + 1 , t { k 1 , , k j - 1 } End

UL classifies the week t ranking of currency k to the ranking category with the highest week t odds based on the non periodic estimated probabilities, P ^ k , j , t . Per assigns currency k's week t ranking to the category with the highest week t odds but based on the periodic estimated probabilities, P ^ h k ( j , t ) . ML predicts currency k to ranking j at week t if k is unranked at week t and has highest week t probability of j amongst all currencies unranked at week t . One step predictions were compared against true rankings from week 27 to week 126; results from week 27 to 56 (first 30 weeks) are shown in Figure 8. Absolute error estimates for the ML and UL estimators were obtained by non parametric bootstrap for currency k, as follows:

  1. Sample 100 ranking and volatility observations (with replacement) from k's ranking and volatility series from week 27 to 126, treating each resulting sample as a time series with respect to the ordering observations are sampled.
  2. Estimate onestep transition probability P ˜ k , j , t based on sampled rankings.
  3. Obtain predictions (UL or ML) based on P ˜ k , j , t 's.
  4. Calculate absolute error of each prediction made over the period.

Due to the computation time of each iteration, I was only able to repeated 50 iterations. Averaging the absolute errors accross the period for both estimators (UL and ML). Refer to Figure 5.

Accuracy of one step predictors UL, ML, and Per.
Mean absolute error estimates for UL and ML.

In summary, the UL estimator tends to have lower absolute prediction error than the ML estimator. For the period considered, prediction error varies by currency, with the CAD being most predictable (consistent across the 3 estimators) than the other currencies. The results also highlight 6 to 8 week periods in which Per and UL estimators fail to adjust with the true rankings. This results suggests model parameters for estimating one-step probabilities should be estimated from more recent history (instead of six month ranking history). Additionally, spline based regression functions should be considered to improve accuracy of the one step transition probability estimates.

Acknowledgements

The author would like to thank Dr. Kathy Ensor, Department of Statistics, Rice University for her valuable insights. This Connexions module describes work conducted as part of Rice University's VIGRE program, supported by National Science Foundation grant 0739420.

References

  1. G. Kitagawa. Non-Gaussian state-space modeling of non stationary time series. Journal of the American Statistical Association, 1987, Vol. 82, No. 400.
  2. J.D Hamilton. Time Series Analysis. Princeton University Press, New Jersey, 1994.
  3. F. Menard, S.Dallot, and G. Thomas. A stochastic model for ordered categorical time series. Application to planktonic abundance data. Ecological Modeling 66(1993)101-112.
  4. L. Fahrmeir. State space modeling and conditional estimation for categorical time series. in D.R. Brillinger et al., editor, New Directions in Time Seriest, pages 87-110, new York 1992. Springer.
  5. P. McCullagh. Regression Models for Ordinal Data. Journal of Royal Statistical Society B(1980), 42, No. 2, pp 109-142.
  6. P. Billingsley. Statistical Inference for Markov processes. The University of Chicago Press, Chicago. 74 pp.
  7. R. Durrett. Essentials of Stochastic Processes. Springer-Verlag, New York, 1999.
  8. B Kedem and K Fokianos. Regression Models for Time Series Analysis. John Wiley&Sons, New Jersey, 2002.

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Source:  OpenStax, The art of the pfug. OpenStax CNX. Jun 05, 2013 Download for free at http://cnx.org/content/col10523/1.34
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