Forecasting High Frequency Volatility Shocks An Analytical Real-Time Monitoring System
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This thesis presents a new strategy that unites qualitative and quantitative mass data in form of text news and tick-by-tick asset prices to forecast the risk of upcoming volatility shocks.
This thesis presents a new strategy that unites qualitative and quantitative mass data in form of text news and tick-by-tick asset prices to forecast the risk of upcoming volatility shocks. Holger Kömm embeds the proposed strategy in a monitoring system, using first, a sequence of competing estimators to compute the unobservable volatility; second, a new two-state Markov switching mixture model for autoregressive and zero-inflated time-series to identify structural breaks in a latent data generation process and third, a selection of competing pattern recognition algorithms to classify the potential information embedded in unexpected, but public observable text data in shock and nonshock information. The monitor is trained, tested, and evaluated on a two year survey on the prime standard assets listed in the indices DAX, MDAX, SDAX and TecDAX.
Contents• Integrated Volatility• Zero-inflated Data Generation Processes• Algorithmic Text Forecasting
Target Groups
• Teachers and students of economic science with a focus on financial econometrics<• Executives and consultants in the field of business informatics and advanced statistics
About the AuthorDr. Holger Kömm is research associate at the chair of statistics and quantitative methods in the economics & business department of the Catholic University Eichstätt-Ingolstadt.
This thesis presents a new strategy that unites qualitative and quantitative mass data in form of text news and tick-by-tick asset prices to forecast the risk of upcoming volatility shocks. Holger Kömm embeds the proposed strategy in a monitoring system, using first, a sequence of competing estimators to compute the unobservable volatility; second, a new two-state Markov switching mixture model for autoregressive and zero-inflated time-series to identify structural breaks in a latent data generation process and third, a selection of competing pattern recognition algorithms to classify the potential information embedded in unexpected, but public observable text data in shock and nonshock information. The monitor is trained, tested, and evaluated on a two year survey on the prime standard assets listed in the indices DAX, MDAX, SDAX and TecDAX.
Contents• Integrated Volatility• Zero-inflated Data Generation Processes• Algorithmic Text Forecasting
Target Groups
• Teachers and students of economic science with a focus on financial econometrics<• Executives and consultants in the field of business informatics and advanced statistics
About the AuthorDr. Holger Kömm is research associate at the chair of statistics and quantitative methods in the economics & business department of the Catholic University Eichstätt-Ingolstadt.
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Inhoud
- Oorspronkelijke releasedatum
- 16 februari 2016
- Aantal pagina's
- 171
Betrokkenen
- Hoofdauteur
- Holger Komm
- Hoofduitgeverij
- Springer Gabler
Overige kenmerken
- Editie
- 1st ed. 2016
- Product breedte
- 149 mm
- Product hoogte
- 17 mm
- Product lengte
- 211 mm
- Verpakking breedte
- 148 mm
- Verpakking hoogte
- 210 mm
- Verpakking lengte
- 210 mm
- Verpakkingsgewicht
- 283 g
EAN
- EAN
- 9783658125950
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