Journal of Mathematical Finance

Volume 7, Issue 2 (May 2017)

ISSN Print: 2162-2434   ISSN Online: 2162-2442

Google-based Impact Factor: 0.87  Citations  h5-index & Ranking

An Empirical Evaluation in GARCH Volatility Modeling: Evidence from the Stockholm Stock Exchange

HTML  XML Download Download as PDF (Size: 1700KB)  PP. 366-390  
DOI: 10.4236/jmf.2017.72020    3,246 Downloads   7,612 Views  Citations
Author(s)

ABSTRACT

In this paper, we use daily stock returns from the Stockholm Stock Exchange in order to examine their volatility. For this reason, we estimate not only GARCH (1,1) symmetric model but also asymmetric models EGARCH (1,1) and GJR-GARCH (1,1) with different residual distributions. The parameters of the volatility models are estimated with the Maximum Likelihood (ML) using the Marquardt algorithm (Marquardt [1]). The findings reveal that negative shocks have a large impact than positive shocks in this market. Also, indices for the return of forecasting have shown that the ARIMA (0,0,1)-EGARCH (1,1) model with t-student provide more precise forecasting on volatilities and expected returns of the Stockholm Stock Exchange.

Share and Cite:

Dritsaki, C. (2017) An Empirical Evaluation in GARCH Volatility Modeling: Evidence from the Stockholm Stock Exchange. Journal of Mathematical Finance, 7, 366-390. doi: 10.4236/jmf.2017.72020.

Cited by

[1] Forecasting container freight rates using the Prophet forecasting method
Transport Policy, 2023
[2] An investment decision-making model to predict the risk and return in stock market: An Application of ARIMA-GJR-GARCH
Decision Science Letters, 2022
[3] The Effect of Commodity Prices and Exchange Rate on the Stock Return of Agriculture and Animal Feed Companies in Indonesia
International Journal of Social …, 2022
[4] The effect of exchange rate volatility on share prices of the JSE Top 40
2022
[5] Effectiveness of Monetary Policy Instruments on Bank Liquidity Management
South Asian Journal …, 2022
[6] Monetary behavior theory in long-term and turbulent conditions on the Russian Ruble
… of Mathematics and …, 2022
[7] Bitcoins Volatility: A study about correlation between bitcoins volatility and the volatility of the S&P 500 index and the commodity gold.
2022
[8] Impacto de volatilidad del tipo de cambio del dólar en las monedas de países latinoamericanos
Fintech, 2022
[9] Impacto da COVID-19 nos índices VIX, VSTOXX e VHSI
2022
[10] Determination of Risk Value Using the ARMA-GJR-GARCH Model on BCA Stocks and BNI Stocks
Operations Research …, 2021
[11] ARMA-GJR-GARCH Model for Determining Value-at-Risk and Back testing of Some Stock Returns
Asia Pacific Int. Conf. Ind …, 2021
[12] Exploratory analysis of multivariate drill core time series measurements
ANZIAM …, 2021
[13] Value-at-Risk Estimation of Indofood (ICBP) and Gas Company (PGAS) Stocks Using the ARMA-GJR-GARCH Model
Operations Research …, 2021
[14] Determination of Value-at-Risk in UNVR Stocks Using ARIMA-GJR-GA RCH Model
Operations Research …, 2021
[15] Volatility Modelling of Stock Returns in the Petroleum Marketing Sector of the Nigerian Stock Exchange
American Journal of Finance, 2021
[16] Forecasting Greek Real GDP Based on ARIMA Modeling
Modeling Economic Growth in Contemporary …, 2021
[17] Modelación de la Volatilidad del Tipo de Cambio del Dólar en el Perú: Aplicación de los Modelos GARCH y EGARCH
Revista de analisis económico y …, 2021
[18] Volatility Forecasting Performance of Smooth Transition Exponential Smoothing Method: Evidence from Mutual Fund Indices in Malaysia
Asian Economic …, 2021
[19] Investigating the fluctuations of exchange rate based on monetary‐behaviour approach
2021
[20] PEMODELAN GJR-GARCH PADA DATA KURS HARIAN RUPIAH TERHADAP DOLAR AMERIKA SAAT KRISIS EKONOMI
Bimaster : Buletin Ilmiah Matematika, Statistika dan Terapannya, 2021
[21] The role of high-frequency data in volatility forecasting: evidence from the China stock market
2021
[22] Comparative Modelling of Price Volatility in Nigerian Crude Oil Markets Using Symmetric and Asymmetric GARCH Models
2021
[23] A Study on the Performance in BSE Sectoral Indices of India
2021
[24] Forecasting European Union CO2 Emissions Using Autoregressive Integrated Moving Average-autoregressive Conditional Heteroscedasticity Models
2020
[25] Comparison of profitability of speculation in the foreign exchange market and investment in Tehran Stock Exchange during Iran's currency crisis using …
Advances in Mathematical Finance and …, 2020
[26] Assessing cognitive performance using physiological and facial features: Generalizing across contexts
2020
[27] Comparison of profitability of speculation in the foreign exchange market and investment in Tehran Stock Exchange during Iran's currency crisis using conditional …
2020
[28] GARCH Modeling of Interest Rate in Nigeria from 1997 to 2017
2020
[29] Perbandingan Model Exponential GARCH dan Glosten Jaganathan Runkle GARCH dalam Meramalkan Nilai Tukar Rupiah terhadap Dolar Amerika Serikat
Prosiding Statistika, 2020
[30] Modeling Returns on Prices and Sales of Crude Oil Using GARCH Model between1997-2017
International Journal of Applied Science and Mathematical Theory, 2019
[31] Double-sided balanced conditional Sharpe ratio
2019
[32] Economic risk exposure in stock market returns:| ba sector approach in South Africa (2007-2015)
2019
[33] Empirical Analysis of VDAX and VSTOXX as Major Volatility Indices in the EU Including Forecasting Tools
2019
[34] The Performance of Hybrid ARIMA-GARCH Modeling and Forecasting Oil Price
2018
[35] Unravelling the Cipher of Indian Rupee's Volatility: Testing the Forecasting Efficacy of the Rolling Symmetric and Asymmetric GARCH Models
2018
[36] On a New Calibrated Mixture Model for a Density Forecast of the VN30 Index
Econometrics for Financial Applications, 2018

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.