C15 - Statistical Simulation Methods: GeneralReturn

Results 1 to 2 of 2:

Use of Adapted Particle Filters in SVJD Models

Milan Fičura, Jiří Witzany

European Financial and Accounting Journal 2018, 13(3):5-20 | DOI: 10.18267/j.efaj.211

Particle Filter algorithms for filtering latent states (volatility and jumps) of Stochastic-Volatility Jump-Diffusion (SVJD) models are being explained. Three versions of the SIR particle filter with adapted proposal distributions to the jump occurrences, jump sizes, and both are derived and their performance is compared in a simulation study to the un-adapted particle filter. The filter adapted to both the jump occurrences and jump sizes achieves the best performance, followed in their respective order by the filter adapted only to the jump occurrences and the filter adapted only to the jump sizes. All adapted particle filters outperformed the unadapted particle filter.

Estimating the Value-at-Risk from High-frequency Data

Pavol Krasnovský

European Financial and Accounting Journal 2015, 10(2):5-11 | DOI: 10.18267/j.efaj.138

We present two alternative approaches for estimating VaR. Both approaches are based on the observation that each trading day is very diverse and we can observe K different phases of the trading day. We can not observe from which of the K phases our observations rt are. Therefore, we apply Gibbs sampler to estimate parameters from our data. In the latter approach, we apply Dubins and Schwarz theorem (Kallenberg, 2000), which allows us to re-scale our portfolio returns rt and to get normal distributed returns rJt~N(0,Jt). To verify our approaches, we make an empirical application.