Forecasting time-dependent conditional densities. A neural network approach.

In financial econometrics the modeling of asset return series is closely related to the estimation of the corresponding conditional densities. One reason why one is interested in the whole conditional density and not only in the conditional mean, is that the conditional variance can be interpreted a...

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Main Authors: Schittenkopf, Christian, Dorffner, Georg, Dockner, Engelbert J.
Format: Others
Language:en
Published: SFB Adaptive Information Systems and Modelling in Economics and Management Science, WU Vienna University of Economics and Business 1999
Subjects:
Online Access:http://epub.wu.ac.at/1082/1/document.pdf
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spelling ndltd-VIENNA-oai-epub.wu-wien.ac.at-epub-wu-01_1d72015-08-06T05:12:30Z Forecasting time-dependent conditional densities. A neural network approach. Schittenkopf, Christian Dorffner, Georg Dockner, Engelbert J. conditional densities / forecasting / GARCH / neural networks / volatility In financial econometrics the modeling of asset return series is closely related to the estimation of the corresponding conditional densities. One reason why one is interested in the whole conditional density and not only in the conditional mean, is that the conditional variance can be interpreted as a measure of time-dependent volatility of the return series. In fact, the modeling and the prediction of volatility is one of the central topics in asset pricing. In this paper we propose to estimate conditional densities semi-nonparametrically in a neural network framework. Our recurrent mixture density networks realize the basic ideas of prominent GARCH approaches but they are capable of modeling any continuous conditional density also allowing for time-dependent higher-order moments. Our empirical analysis on daily DAX data shows that out-of-sample volatility predictions of the neural network model are superior to predictions of GARCH models in that they have a higher correlation with implied volatilities. (author's abstract) SFB Adaptive Information Systems and Modelling in Economics and Management Science, WU Vienna University of Economics and Business 1999 Paper NonPeerReviewed en application/pdf http://epub.wu.ac.at/1082/1/document.pdf Series: Report Series SFB "Adaptive Information Systems and Modelling in Economics and Management Science" http://epub.wu.ac.at/1082/
collection NDLTD
language en
format Others
sources NDLTD
topic conditional densities / forecasting / GARCH / neural networks / volatility
spellingShingle conditional densities / forecasting / GARCH / neural networks / volatility
Schittenkopf, Christian
Dorffner, Georg
Dockner, Engelbert J.
Forecasting time-dependent conditional densities. A neural network approach.
description In financial econometrics the modeling of asset return series is closely related to the estimation of the corresponding conditional densities. One reason why one is interested in the whole conditional density and not only in the conditional mean, is that the conditional variance can be interpreted as a measure of time-dependent volatility of the return series. In fact, the modeling and the prediction of volatility is one of the central topics in asset pricing. In this paper we propose to estimate conditional densities semi-nonparametrically in a neural network framework. Our recurrent mixture density networks realize the basic ideas of prominent GARCH approaches but they are capable of modeling any continuous conditional density also allowing for time-dependent higher-order moments. Our empirical analysis on daily DAX data shows that out-of-sample volatility predictions of the neural network model are superior to predictions of GARCH models in that they have a higher correlation with implied volatilities. (author's abstract) === Series: Report Series SFB "Adaptive Information Systems and Modelling in Economics and Management Science"
author Schittenkopf, Christian
Dorffner, Georg
Dockner, Engelbert J.
author_facet Schittenkopf, Christian
Dorffner, Georg
Dockner, Engelbert J.
author_sort Schittenkopf, Christian
title Forecasting time-dependent conditional densities. A neural network approach.
title_short Forecasting time-dependent conditional densities. A neural network approach.
title_full Forecasting time-dependent conditional densities. A neural network approach.
title_fullStr Forecasting time-dependent conditional densities. A neural network approach.
title_full_unstemmed Forecasting time-dependent conditional densities. A neural network approach.
title_sort forecasting time-dependent conditional densities. a neural network approach.
publisher SFB Adaptive Information Systems and Modelling in Economics and Management Science, WU Vienna University of Economics and Business
publishDate 1999
url http://epub.wu.ac.at/1082/1/document.pdf
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AT dorffnergeorg forecastingtimedependentconditionaldensitiesaneuralnetworkapproach
AT docknerengelbertj forecastingtimedependentconditionaldensitiesaneuralnetworkapproach
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