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[en] DOES GOVERNANCE REDUCE VOLATILITY? / [pt] GOVERNANÇA REDUZ VOLATILIDADE?DIOGO RIBEIRO ALMEIDA 14 September 2007 (has links)
[pt] Esta dissertação examina os impactos das boas práticas de
governança
corporativa na volatilidade dos retornos das ações dentro
e fora de momentos de
crise. Dados de freqüência diária foram utilizados para
estimar modelos
Autoregressivos Generalizados de Heterocedasticidade
Condicional (GARCH)
para quarenta e nove papéis negociados na Bolsa de Valores
de São Paulo
(BOVESPA). As evidências indicam um efeito negativo na
maioria das séries
analisadas. Para algumas ações, a redução da volatilidade
é ainda maior em
períodos de choques negativos. Foi encontrado, ainda, o
resultado de que o risco
mitigado é o idiossincrático e, desta forma, governança
incentiva a manutenção da
concentração de propriedade. / [en] This dissertation examines impacts of good practices of
corporate
governance on the volatility of returns in and out crisis
periods. Daily data are
used to estimate Generalized Autoregressive Conditional
Heteroskedastic
(GARCH) models for forty nine stocks traded on the São
Paulo Stock Exchange
(BOVESPA. It is found evidence of a negative impact on the
majority of the
analyzed series. For some stocks, the reduction of the
volatility is even greater in
crisis periods. It was also found that the risk mitigated
is the idiosyncratic one
and, thus, governance incentives the maintenance of
ownership concentration.
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A comparison of Bayesian model selection based on MCMC with an application to GARCH-type modelsMiazhynskaia, Tatiana, Frühwirth-Schnatter, Sylvia, Dorffner, Georg January 2003 (has links) (PDF)
This paper presents a comprehensive review and comparison of five computational methods for Bayesian model selection, based on MCMC simulations from posterior model parameter distributions. We apply these methods to a well-known and important class of models in financial time series analysis, namely GARCH and GARCH-t models for conditional return distributions (assuming normal and t-distributions). We compare their performance vis--vis the more common maximum likelihood-based model selection on both simulated and real market data. All five MCMC methods proved feasible in both cases, although differing in their computational demands. Results on simulated data show that for large degrees of freedom (where the t-distribution becomes more similar to a normal one), Bayesian model selection results in better decisions in favour of the true model than maximum likelihood. Results on market data show the feasibility of all model selection methods, mainly because the distributions appear to be decisively non-Gaussian. / Series: Report Series SFB "Adaptive Information Systems and Modelling in Economics and Management Science"
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Estimação da volatilidade : uma aplicação utilizando dados intradiáriosMilach, Felipe Tavares January 2010 (has links)
O estudo da volatilidade dos retornos dos ativos ocupa um lugar de destaque dentro da moderna teoria de finanças. Tradicionalmente, os modelos empregados para a modelagem da volatilidade são estimados a partir de dados diários. No entanto, a recente disponibilidade de dados intradiários tem permitido a modelagem e a previsão da volatilidade dos ativos por meio da chamada variância realizada. Dessa forma, o objetivo principal da presente dissertação foi analisar como os modelos que incorporam dados intradiários se comportam, em termos de acurácia de previsão de volatilidade diária, em relação àqueles que utilizam apenas dados diários. Foram observados os comportamentos dos índices Ibovespa e S&P 500 durante o período de janeiro de 2006 a junho de 2009. Os resultados revelaram que o desempenho de previsão dos modelos estimados a partir de dados diários foi superior ao dos modelos de variância realizada para os dois índices. Buscou-se ainda comparar o comportamento dos modelos durante o período da crise de 2008. Novamente os resultados apontaram para uma melhor acurácia de previsão dos modelos que utilizaram apenas dados diários. / The study of volatility in asset returns is relevant within the modern theory of finance. Modeling volatility has been frequently based on daily data. Recent availability of intraday data has allowed volatility modeling and forecasting through the so called realized variance. The main objective of this master’s thesis was, therefore, to compare the accuracy of daily volatility forecasting between models that use either daily or intraday data. Returns during the period January 2006 to June 2009 on two indexes, the Ibovespa and the S&P 500, were used. Results showed that, for both indexes, forecasting based on daily data was superior to forecasting that used intraday returns. Comparison between models was also tested during the 2008 crisis. Similarly, results showed a better forecasting performance of daily data models.
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Usando redes neurais para estimação da volatilidade : redes neurais e modelo híbrido GARCH aumentado por redes neuraisOliveira, André Barbosa January 2010 (has links)
As séries temporais financeiras são marcadas por comportamentos complexos e não-lineares. No mercado financeiro, além da trajetória das cotações, a sua variabilidade, representada pela volatilidade, consiste em importante informação para o mercado. Redes neurais são modelos não lineares flexíveis com capacidade de descrever funções de distintas classes, possuindo a propriedade de aproximadores universais. Este trabalho busca empregar redes neurais, especificamente Perceptron de múltiplas camadas com uma única camada escondida alimentada para frente (Feedforward Multilayer Perceptron), para a previsão da volatilidade. Mais ainda, é proposto um modelo híbrido que combina o modelo GARCH e redes neurais. Os modelos GARCH e redes neurais são estimados para duas séries financeiras: Índice S&P500 e cotações do petróleo tipo Brent. Os resultados indicam que a volatilidade aproximada por redes neurais é muito semelhante as estimativas dos tradicionais modelos GARCH. Suas diferenças são mais qualitativas, na forma de resposta da volatilidade estimada a choques de maior magnitude e sua suavidade, do que quantitativas, apresentando critérios de erros de previsão em relação a uma medida de volatilidade benchmark muito próximos. / The financial time series are characterized by complex and non-linear behaviors. In addition to the financial market trend in prices their variability or volatility, a risk estimate, is important information for the market players. Neural networks are flexible nonlinear models capable of describing functions of different classes, having the property of universal approximators. This paper employs neural networks, specifically one hidden layer feedforward Multilayer Perceptron, for volatility forecasting. Moreover, we propose a hybrid model that combines the GARCH model with neural networks. The GARCH and neural network models are estimated over two financial series: the S&P500 composite index and prices of Brent oil. The results indicate that the volatility approximated by neural networks is very similar to that estimated by the traditional GARCH models, while their differences are more qualitative than quantitative, with information content that differs from and complements each other for different market environments.
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Análise da correlação entre o Ibovespa e o ativo petr4 : estimação via modelos Garch e modelos aditivosNunes, Fábio Magalhães January 2009 (has links)
A estimação e previsão da volatilidade de ativos são de suma importância para os mercados financeiros. Temas como risco e incerteza na teoria econômica incentivaram a procura por métodos capazes de modelar a variância condicional que evolui ao longo do tempo. O objetivo central desta dissertação foi modelar via modelos ARCH – GARCH e modelos aditivos o índice do IBOVESPA e o ativo PETR4 para analisar a existência de correlação entre as volatilidades estimadas. A estimação da volatilidade dos ativos no método paramétrico foi realizada via modelos EGARCH; já para o método não paramétrico, utilizouse os modelos aditivos com 5 defasagens. / Volatility estimation and forecasting are very important matters for the financial markets. Themes like risk and uncertainty in modern economic theory have encouraged the search for methods that allow for modeling of time varying variances. The main objective of this dissertation was estimate through GARCH models and additive models of IBOVESPA and PETR4 assets; and analyzes the existence of correlation between volatilities estimated. We use EGARCH models to estimate through parametric methods and use additive models 5 to estimate non parametric methods.
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Volatility Modelling of Asset Prices using GARCH Models / Volatilitets prediktering av finansiella tillgångar med GARCH modeller som ansatsNäsström, Jens January 2003 (has links)
<p>The objective for this master thesis is to investigate the possibility to predict the risk of stocks in financial markets. The data used for model estimation has been gathered from different branches and different European countries. The four data series that are used in the estimation are price series from: Münchner Rück, Suez-Lyonnaise des Eaux, Volkswagen and OMX, a Swedish stock index. The risk prediction is done with univariate GARCH models. GARCH models are estimated and validated for these four data series. </p><p>Conclusions are drawn regarding different GARCH models, their numbers of lags and distributions. The model that performs best, out-of-sample, is the APARCH model but the standard GARCH is also a good choice. The use of non-normal distributions is not clearly supported. The result from this master thesis could be used in option pricing, hedging strategies and portfolio selection.</p>
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Essays on random effects models and GARCHSkoglund, Jimmy January 2001 (has links)
This thesis consists of four essays, three in the field of random effects models and one in the field of GARCH. The first essay in this thesis, ''Maximum likelihood based inference in the two-way random effects model with serially correlated time effects'', considers maximum likelihood estimation and inference in the two-way random effects model with serial correlation. We derive a straightforward maximum likelihood estimator when the time-specific component follow an AR(1) or MA(1) process. The estimator is also easily generalized to allow for arbitrary stationary and strictly invertible ARMA processes. In addition we consider the model selection problem and derive tests of the null hypothesis of no serial correlation as well as tests for discriminating between the AR(1) and MA(1) specifications. A Monte-Carlo experiment evaluates the finite-sample properties of the estimators, test-statistics and model selection procedures. The second essay, ''Asymptotic properties of the maximum likelihood estimator of random effects models with serial correlation'', considers the large sample behavior of the maximum likelihood estimator of random effects models with serial correlation in the form of AR(1) for the idiosyncratic or time-specific error component. Consistent estimation and asymptotic normality is established for a comprehensive specification which nests these models as well as all commonly used random effects models. The third essay, ''Specification and estimation of random effects models with serial correlation of general form'', is also concerned with maximum likelihood based inference in random effects models with serial correlation. Allowing for individual effects we introduce serial correlation of general form in the time effects as well as the idiosyncratic errors. A straightforward maximum likelihood estimator is derived and a coherent model selection strategy is suggested for determining the orders of serial correlation as well as the importance of time or individual effects. The methods are applied to the estimation of a production function using a sample of 72 Japanese chemical firms observed during 1968-1987. The fourth essay, entitled ''A simple efficient GMM estimator of GARCH models'', considers efficient GMM based estimation of GARCH models. Sufficient conditions for the estimator to be consistent and asymptotically normal are established for the GARCH(1,1) conditional variance process. In addition efficiency results are obtained for a GARCH(1,1) model where the conditional variance is allowed to enter the mean as well. That is, the GARCH(1,1)-M model. An application to the returns to the SP500 index illustrates. / <p>Diss. Stockholm : Handelshögskolan, 2001</p>
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An empirical study in risk management: estimation of Value at Risk with GARCH family modelsNyssanov, Askar January 2013 (has links)
In this paper the performance of classical approaches and GARCH family models are evaluated and compared in estimation one-step-ahead VaR. The classical VaR methodology includes historical simulation (HS), RiskMetrics, and unconditional approaches. The classical VaR methods, the four univariate and two multivariate GARCH models with the Student’s t and the normal error distributions have been applied to 5 stock indices and 4 portfolios to determine the best VaR method. We used four evaluation tests to assess the quality of VaR forecasts: - Violation ratio - Kupiec’s test - Christoffersen’s test - Joint test The results point out that GARCH-based models produce far more accurate forecasts for both individual and portfolio VaR. RiskMetrics gives reliable VaR predictions but it is still substantially inferior to GARCH models. The choice of an optimal GARCH model depends on the individual asset, and the best model can be different based on different empirical data.
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Volatility Modelling of Asset Prices using GARCH Models / Volatilitets prediktering av finansiella tillgångar med GARCH modeller som ansatsNäsström, Jens January 2003 (has links)
The objective for this master thesis is to investigate the possibility to predict the risk of stocks in financial markets. The data used for model estimation has been gathered from different branches and different European countries. The four data series that are used in the estimation are price series from: Münchner Rück, Suez-Lyonnaise des Eaux, Volkswagen and OMX, a Swedish stock index. The risk prediction is done with univariate GARCH models. GARCH models are estimated and validated for these four data series. Conclusions are drawn regarding different GARCH models, their numbers of lags and distributions. The model that performs best, out-of-sample, is the APARCH model but the standard GARCH is also a good choice. The use of non-normal distributions is not clearly supported. The result from this master thesis could be used in option pricing, hedging strategies and portfolio selection.
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Stock Market Liquidity Analysis: Evidence From The Istanbul Stock ExchangeOzdemir, Duygu 01 September 2011 (has links) (PDF)
The purpose of this thesis is to identify the factors playing a key role in the determination of the Turkish stock market liquidity in aggregate terms in a time series context and discuss the joint dynamics of the market-wide liquidity with its selected determinants and the trade volume. The main determinants tested are the level of return, the return volatility and the monetary stance of the Central Bank of the Republic of Turkey. The expected positive relationship between the liquidity and the return is confirmed, while the negative effect of the volatility on liquidity appears one-week later. The behavior of various liquidity variables are also examined around the macroeconomic data announcement dates, during the 2008 financial crisis, and after the tick size change in the Istanbul Stock Exchange (ISE). The time series dynamics between the trade volume, return, volatility and the liquidity are put forward within the Vector Autoregression analysis framework. The GARCH modeling of the return series, which is an input to the liquidity model estimations, is a byproduct of this thesis. It is observed that the return series exhibits volatility clustering, persistence, leverage effects and mean reversion. In addition, while the level of the ISE market return decreased, the volatility of the return increased during the 2008 crisis. Accordingly, EGARCH model assuming normally distributed error terms and allowing a shift in the variance during the crisis period is chosen as the best model.
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