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41.
本文以融资买入和融券卖出为研究对象,分析了投资者主动发起的融资融券交易对股票回报、流动性和波动性的影响,给出了中国股票市场融资融券发展现状。研究发现,融资买入(融券卖出)对当日股票回报有显著为正(负)的影响,交易表现与政策制定动机——融资反映投资者看涨情绪、融券反映投资者看跌情绪一致。此外,融资买入(融券卖出)增加了(降低)股票流动性;融资买入(融券卖出)降低(增加)了股票波动性;融资融券对股票交易特征的影响有随时间逐渐改善的趋势。最后,本文发现融资融券对股票回报、流动性和波动性产生的影响与股票所在板块有关,随着中小板和创业板股票所占比重的增加,调整和优化融资融券对股票市场的影响仍然是监管者未来主要任务之一。 相似文献
42.
给出动态随机弹性的概念及运算性质,讨论了动态随机弹性在期权定价模型中的应用.主要结果有:(1)在波动率为常数时,期权价格对的弹性,得到了动态随机弹性服从运动,并给出了相应的经济解释;(2)由于波动率一般不是常数,也是随机过程,因此本文进一步研究了期权价格对波动率的弹性,就股票价格的波动情况给出了数学描述和金融意义上的解释. 相似文献
43.
基于实际波动率的组合选择实证研究 总被引:1,自引:0,他引:1
本文对证券组合三因素的7种预测方法进行了实证研究和敏感性检验,得出结论:若以周作为组合持有期,则不论何种收益预测方法,基于实际波率的ARFIMA方法在组合持有期上均取得了正的超额收益;基于实际波动率的ARFIMA法在组合选择的各种方法中是最优的. 相似文献
44.
基于CARR模型的交易量与股价波动性动态关系的研究 总被引:5,自引:0,他引:5
股市交易量与股价变化的关系就一直是学术界与实务界所共同关心的主题。基于Chou(2005)提出的CARR模型对两者的动态关系问题进行了研究。首先分析了作为量价关系理论基础的混合分布假说理论在CARR模型中的适川性,进而基于混合分布假说理论对我国上证综合指数、深证成份指数以及随机抽取的十只个股进行了量价关系的实证检验。研究发现:混合分布假说理论同样适用于CARR模型,这证实了股价波动性的CARR效应的存在。实证的结果也证实了CARR模型无论是对于股票指数还是单只股票交易量都具有了良好的解释作用。因此,CARR模型与GARCH模型相比,在交易量与股价波动关系动态关系的研究领域可以得到更为稳健的结果。 相似文献
45.
我国上海股票市场GARCH效应实证研究 总被引:16,自引:0,他引:16
对我国上海股票市场的GARCH效应进行了实证研究,包括3个方面的内容:应用GARCH模型对股票收益率进行事前估计分析;对模型参数进行估计与最优选择;应用GARCH模型进行事后估计分析,结果表明我国上海股票上益率序列的波动具有显著性的异方差性,可以用GARCH(1,1)进行拟合。 相似文献
46.
Smooth Solutions to Optimal Investment Models with Stochastic Volatilities and Portfolio Constraints
Pham 《Applied Mathematics and Optimization》2002,46(1):55-78
Abstract. This paper deals with an extension of Merton's optimal investment problem to a multidimensional model with stochastic volatility
and portfolio constraints. The classical dynamic programming approach leads to a characterization of the value function as
a viscosity solution of the highly nonlinear associated Bellman equation. A logarithmic transformation expresses the value
function in terms of the solution to a semilinear parabolic equation with quadratic growth on the derivative term. Using a
stochastic control representation and some approximations, we prove the existence of a smooth solution to this semilinear
equation. An optimal portfolio is shown to exist, and is expressed in terms of the classical solution to this semilinear equation.
This reduction is useful for studying numerical schemes for both the value function and the optimal portfolio. We illustrate
our results with several examples of stochastic volatility models popular in the financial literature. 相似文献
47.
Alexander van Haastrecht Richard Plat Antoon Pelsser 《Insurance: Mathematics and Economics》2010,47(3):266-277
Guaranteed annuity options are options providing the right to convert a policyholder’s accumulated funds to a life annuity at a fixed rate when the policy matures. These options were a common feature in UK retirement savings contracts issued in the 1970’s and 1980’s when interest rates were high, but caused problems for insurers as the interest rates began to fall in the 1990’s. Currently, these options are frequently sold in the US and Japan as part of variable annuity products. The last decade the literature on pricing and risk management of these options evolved. Until now, for pricing these options generally a geometric Brownian motion for equity prices is assumed. However, given the long maturities of the insurance contracts a stochastic volatility model for equity prices would be more suitable. In this paper explicit expressions are derived for prices of guaranteed annuity options assuming stochastic volatility for equity prices and either a 1-factor or 2-factor Gaussian interest rate model. The results indicate that the impact of ignoring stochastic volatility can be significant. 相似文献
48.
49.
Gael M. Martin Brendan P. M. McCabe David T. Frazier Worapree Maneesoonthorn Christian P. Robert 《Journal of computational and graphical statistics》2013,22(3):508-522
A computationally simple approach to inference in state space models is proposed, using approximate Bayesian computation (ABC). ABC avoids evaluation of an intractable likelihood by matching summary statistics for the observed data with statistics computed from data simulated from the true process, based on parameter draws from the prior. Draws that produce a “match” between observed and simulated summaries are retained, and used to estimate the inaccessible posterior. With no reduction to a low-dimensional set ofsufficient statistics being possible in the state space setting, we define the summaries as the maximum of an auxiliary likelihood function, and thereby exploit the asymptotic sufficiency of this estimator for the auxiliary parameter vector. We derive conditions under which this approach—including a computationally efficient version based on the auxiliary score—achieves Bayesian consistency. To reduce the well-documented inaccuracy of ABC in multiparameter settings, we propose the separate treatment of each parameter dimension using an integrated likelihood technique. Three stochastic volatility models for which exact Bayesian inference is either computationally challenging, or infeasible, are used for illustration. We demonstrate that our approach compares favorably against an extensive set of approximate and exact comparators. An empirical illustration completes the article. Supplementary materials for this article are available online. 相似文献
50.
《Journal of computational and graphical statistics》2013,22(4):751-769
This article presents a new particle filter algorithm which uses random quasi-Monte-Carlo to propagate particles. The filter can be used generally, but here it is shown that for one-dimensional state-space models, if the number of particles is N, then the rate of convergence of this algorithm is N?1. This compares favorably with the N?1/2 convergence rate of standard particle filters. The computational complexity of the new filter is quadratic in the number of particles, as opposed to the linear computational complexity of standard methods. I demonstrate the new filter on two important financial time series models, an ARCH model and a stochastic volatility model. Simulation studies show that for fixed CPU time, the new filter can be orders of magnitude more accurate than existing particle filters. The new filter is particularly efficient at estimating smooth functions of the states, where empirical rates of convergence are N?3/2; and for performing smoothing, where both the new and existing filters have the same computational complexity. 相似文献