The paper extends the study of applying the mixed-stable models to the analysis of large sets of high-frequency financial data. The empirical data under review are the German DAX stock index yearly log-returns series. Mixed-stable models for 29 DAX companies are constructed employing efficient parallel algorithms for the processing of long-term data series. The adequacy of the modeling is verified with the empirical characteristic function goodness-of-fit test. We propose the smart-Πmethod for the calculation of the α-stable probability density function. We study the impact of the accuracy of the computation of the probability density function and the accuracy of ML-optimization on the results of the modeling and processing time. The obtained mixed-stable parameter estimates can be used for the construction of the optimal asset portfolio.
Mixed-Stable Models: An Application to High-Frequency Financial Data.
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作者:Belovas Igoris, Sakalauskas Leonidas, StarikoviÄius Vadimas, Sun Edward W
| 期刊: | Entropy | 影响因子: | 2.000 |
| 时间: | 2021 | 起止号: | 2021 Jun 11; 23(6):739 |
| doi: | 10.3390/e23060739 | ||
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