2014
DOI: 10.17535/crorr.2014.0017
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GARCH based artificial neural networks in forecasting conditional variance of stock returns

Abstract: Abstract. Portfolio managers, option traders and market makers are all interested in volatility forecasting in order to get higher profits or less risky positions. Based on the fact that volatility is time varying in high frequency data and that periods of high volatility tend to cluster, the most popular models in modelling volatility are GARCH type models because they can account excess kurtosis and asymmetric effects of financial time series. A standard GARCH(1,1) model usually indicates high persistence in… Show more

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Cited by 22 publications
(26 citation statements)
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“…Here, it is addressed by careful weight initialization, where recurrent weights are predefined and not learned. Research on economic and financial time series [3,6,10,12,37] gives preference to RNNs for predicting time series versus linear, nonlinear models and/or FNNs. [34] give preference to RNNs when predicting in the long term, while predicting in the short term FNNs and linear models give better results.…”
Section: Literature Reviewmentioning
confidence: 99%
See 1 more Smart Citation
“…Here, it is addressed by careful weight initialization, where recurrent weights are predefined and not learned. Research on economic and financial time series [3,6,10,12,37] gives preference to RNNs for predicting time series versus linear, nonlinear models and/or FNNs. [34] give preference to RNNs when predicting in the long term, while predicting in the short term FNNs and linear models give better results.…”
Section: Literature Reviewmentioning
confidence: 99%
“…they vary from 1 to 5, defined from the initial model. The weight of the context unit λ, representing the long-term memory, is varied with values 0.1, 0.3, 0.5, 0.7 and 0.9 according to [3]. It is not learned or trained but determined in advance to deal with vanishing gradient problem.…”
Section: Datamentioning
confidence: 99%
“…For examination purposes, this exploration utilized information slacks from 5 to 40 and concealed hubs from 5 to 45 for BPNN-NAR show, while for the BPNN-NARMA display, this exploration utilized the mistake slacks going from 5 to 40, together with input slacks from 5 to 40 and concealed hubs from 5 to 45. The most widely recognized way to deal with choose this property is experimentation or experimentation [14,15,16], though extraordinary systems (dependable guideline) and calculations (pruning and developing) are also available [17,18,19]. It is to be seen that BPNN-NAR is a feedforward neural system write demonstrate, while BPNN-NARMA is an intermittent neural system compose display [18].…”
Section: Methodsmentioning
confidence: 99%
“…The most widely recognized way to deal with choose this property is experimentation or experimentation [14,15,16], though extraordinary systems (dependable guideline) and calculations (pruning and developing) are also available [17,18,19]. It is to be seen that BPNN-NAR is a feedforward neural system write demonstrate, while BPNN-NARMA is an intermittent neural system compose display [18]. This investigation reports the blunder measures on the test dataset, which is the most key trademark, mirroring ANN's speculation capacity [19,20].…”
Section: Methodsmentioning
confidence: 99%
“…Comparing forecasting methods is crucial in methodological studies [41,34,13,19,4]. The model proposed in this study was compared with commonly used statistical forecasting methods, and we incorporate the two main covariates, time and product types, into the following models.…”
Section: Other Forecasting Methodsmentioning
confidence: 99%