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Forecasting volatility and volume in the Tokyo stock market: Long memory, fractality and regime switching

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dc.creator Lux, Thomas
dc.creator Kaizoji, Taisei
dc.date 2006
dc.date.accessioned 2013-10-16T06:03:32Z
dc.date.available 2013-10-16T06:03:32Z
dc.date.issued 2013-10-16
dc.identifier Economics working paper Institut für Volkswirtschaftslehre, Kiel 2006,13; Download aus dem Internet, Stand: 04.12.2006
dc.identifier http://hdl.handle.net/10419/3924
dc.identifier ppn:520839978
dc.identifier RePEc:zbw:cauewp:5160
dc.identifier.uri http://koha.mediu.edu.my:8181/xmlui/handle/10419/3924
dc.description We investigate the predictability of both volatility and volume for a large sample of Japanese stocks. The particular emphasis of this paper is on assessing the performance of long memory time series models in comparison to their short-memory counterparts. Since long memory models should have a particular advantage over long forecasting horizons, we consider predictions of up to 100 days ahead. In most respects, the long memory models (ARFIMA, FIGARCH and the recently introduced multifractal model) dominate over GARCH and ARMA models. However, while FIGARCH and ARFIMA also have quite a number of cases with dramatic failures of their forecasts, the multifractal model does not suffer from this shortcoming and its performance practically always improves upon the na?ve forecast provided by historical volatility. As a somewhat surprising result, we also find that, for FIGARCH and ARFIMA models, pooled estimates (i.e. averages of parameter estimates from a sample of time series) give much better results than individually estimated models.
dc.language eng
dc.publisher Institut für Volkswirtschaftslehre, Kiel
dc.relation Economics working paper / Christian-Albrechts-Universität Kiel, Department of Economics 2006,13
dc.rights http://www.econstor.eu/dspace/Nutzungsbedingungen
dc.subject C53
dc.subject G12
dc.subject C22
dc.subject ddc:330
dc.subject Forecasting
dc.subject Long memory models
dc.subject Volume
dc.subject Volatility
dc.subject Börsenkurs
dc.subject Volatilität
dc.subject Börsenumsatz
dc.subject Prognoseverfahren
dc.subject Zeitreihenanalyse
dc.subject Schätzung
dc.subject Aktienmarkt
dc.subject Japan
dc.title Forecasting volatility and volume in the Tokyo stock market: Long memory, fractality and regime switching
dc.type doc-type:workingPaper


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