نتایج جستجو برای: مدلهای garch

تعداد نتایج: 9132  

2009
Songsak Sriboonchitta Vladik Kreinovich

Most existing econometric models such as ARCH(q) and GARCH(p,q) take into account heteroskedasticity (non-stationarity) of time series. However, the original ARCH(q) and GARCH(p,q) models do not take into account the asymmetry of the market’s response to positive and to negative changes. Several heuristic modifications of ARCH(q) and GARCH(p,q) models have been proposed that take this asymmetry...

Journal: :SIAM Review 2003
Aslihan Altay-Salih Mustafa Ç. Pinar Sven Leyffer

This paper proposes a constrained nonlinear programming view of generalized autoregressive conditional heteroskedasticity (GARCH) volatility estimation models in financial econometrics. These models are usually presented to the reader as unconstrained optimization models with recursive terms in the literature, whereas they actually fall into the domain of nonconvex nonlinear programming. Our re...

2009
Bart Frijns Thorsten Lehnert Remco C.J. Zwinkels

The current paper proposes a conditional volatility model with time varying coefficients based on a multinomial switching mechanism. By giving more weight to either the persistence or shock term in a GARCH model, conditional on their relative ability to forecast a benchmark volatility measure, the switching reinforces the persistent nature of the GARCH model. Estimation of this volatility targe...

2007
Luc Bauwens Arie Preminger Jeroen V.K. Rombouts

We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switch in time from one GARCH process to another. The switching is governed by a hidden Markov chain. We provide sufficient conditions for geometric ergodicity and existence of moments of the process. Because of path dependence, maximum likelihood estimation is not feasible. By enlarging the parameter...

2009
Bin Chen

Modelling and detecting structural changes in GARCH processes have attracted a great amount of attention in econometrics over the past few years. We generalize Dahlhaus and Rao (2006)’s time varying ARCH processes to time varying GARCH processes and show the consistency of the weighted quasi maximum likelihood estimator. A class of generalized likelihood ratio tests are proposed to check smooth...

در سال‌های اخیر، توسعه‌ی پردازنده‌های کامپیوتری موجب معرفی الگوریتم‌های جدیدی برای پیش‌بینی دادههای مالی شده است که یکی از این الگوریتم‌ها، یادگیری ماشین (Machine Learning) است. از اینرو در پژوهش حاضر به معرفی یک مدل ترکیبی‌ از شبکه یادگیری عمیق (Deep Learning) و مدل‌های منتخب خانواده GARCH جهت پیش‌بینی کوتاه‌مدت بازدهی روزانه شاخص کل بورس اوراق بهادار تهران پرداخته می‌شود. مهمترین ویژگی شبکه ی...

Journal: :Expert Syst. Appl. 2009
Jui-Chung Hung

In this paper, we derive a new application of fuzzy systems designed for a generalized autoregression conditional heteroscedasticity (GARCH) model. In general, stock market performance is time-varying and nonlinear, and exhibits properties of clustering. The latter means simply that certain large changes tend to follow other large changes, and in general small changes tend to follow other small...

2003
Gilles Zumbach

We introduce a new family of processes that include the long memory (power law) in the volatility correlation. This is achieved by measuring the historical volatilities on a set of increasing time horizons and by computing the resulting effective volatility by a sum with power law weights. The processes have 2 parameters (linear processes) or 4 parameters (affine processes). In the limit where ...

2001
Boris Podobnik Kaushik Matia Alessandro Chessa Plamen Ch. Ivanov Youngki Lee H. Eugene Stanley

We model the time series of the S&P500 index by a combined process, the AR+GARCH process, where AR denotes the autoregressive process which we use to account for the short-range correlations in the index changes and GARCH denotes the generalized autoregressive conditional heteroskedastic process which takes into account the long-range correlations in the variance. We study the AR+GARCH process ...

2013
Hailong Chen Chunli Liu

In practice, Financial Time Series have serious volatility cluster, that is large volatility tend to be concentrated in a certain period of time, and small volatility tend to be concentrated in another period of time. While GARCH models can well describe the dynamic changes of the volatility of financial time series, and capture the cluster and heteroscedasticity phenomena. At the beginning of ...

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