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Please use this identifier to cite or link to this item: http://krishi.icar.gov.in/jspui/handle/123456789/42812
Title: Long memory in conditional variance
Other Titles: Not Available
Authors: Ranjit Kumar Paul
Bishal Gurung
Amrit Kumar Paul
Sandipan Samanta
ICAR Data Use Licennce: http://krishi.icar.gov.in/PDF/ICAR_Data_Use_Licence.pdf
Author's Affiliated institute: ICAR::Indian Agricultural Statistics Research Institute
Published/ Complete Date: 2016-09-01
Project Code: Not Available
Keywords: Conditional heteroscedasticity
Gram price
Return series
Stationarity
Validation
Publisher: ICAR
Citation: Paul, R.K., Gurung, B., Paul, A.K. and Samanta, S. (2016). Long memory in conditional variance. Journal of the Indian Society of Agricultural Statistics, 70(3), 243-254
Series/Report no.: Not Available;
Abstract/Description: SUMMARY Presence of long memory in return and volatility of the spot price of gram in Delhi market has been investigated. GPH method resulted strong evidence of long range dependence in the volatility processes for the series. Accordingly, FIGARCH model has been applied for forecasting the volatility of gram price. GARCH model and several extensions of GARCH models such as TARCH, EGARCH, Component GARCH and Asymmetric component GARCH have been applied for modelling and forecasting of return series. Evaluation of forecasting has been carried out separately in six moving windows by the help of mean squares prediction error (MSPE), mean absolute prediction error (MAPE) and relative mean absolute prediction error (RMAPE). The residuals of the fitted models were used for diagnostic checking. Diebold Mariano test was conducted for different pairs of models to test for the difference in predictive accuracy. It is found that FIGARCH model has better predictive accuracy as compared to all other models. It is also observed that component GARCH and asymmetric component GARCH models have better predictive accuracy than GARCH, TARCH and EGARCH models whereas there is no significant difference in the predictive accuracy of GARCH, TARCH and EGARCH models. The R software package has been used for data analysis
Description: Not Available
ISSN: Not Available
Type(s) of content: Research Paper
Sponsors: Not Available
Language: English
Name of Journal: Journal of the Indian Society of Agricultural Statistics
NAAS Rating: 5.51
Volume No.: 70(3)
Page Number: 243–254
Name of the Division/Regional Station: statistical genetics
Source, DOI or any other URL: Not Available
URI: http://krishi.icar.gov.in/jspui/handle/123456789/42812
Appears in Collections:AEdu-IASRI-Publication
AEdu-IASRI-Publication

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