Stochastic volatility models decompose the time series of financial returns into the product of a volatility factor and an iid noise factor. Assuming a slow dynamic for the volatility factor, we show via nonparametric tests that both the index as well as its individual stocks share a common volatility factor. While the noise component is Gaussian for the index, individual stock returns turn out to require a leptokurtic noise. Thus we propose a two-component model for stocks, given by the sum of Gaussian noise, which reflects market-wide fluctuations, and Laplacian noise, which incorporates firm-specific factors such as firm profitability or growth performance, both of which are known to be Laplacian distributed. In the case of purely Gaussi...
State-of-the-art stochastic volatility models generate a "volatility smirk" that explains why out-of...
for regression analysis on the dividend yields of individual stocks. Does Noise Create the Size and ...
We develop a framework in which information about firm value is noisily observed. Investors are then...
Stochastic volatility models decompose the time series of financial returns into the product of a v...
In this paper we study the possible microscopic origin of heavy-tailed probability density distribut...
We propose a nonparametric method to determine the functional form of the noise density in discrete...
We propose a nonparametric method to determine the functional form of the noise density in discrete-...
We investigate the historical volatility of the 100 most capitalized stocks traded in US equity mark...
We propose a simple stochastic volatility model which is analytically tractable, very easy to simula...
We exploit direct model-free measures of daily equity return volatility and correlation obtained fro...
Several studies find that the return volatility of stocks tends to exhibit long-range dependence, he...
We investigate the historical volatility of the 100 most capitalized stocks traded in US equity mark...
It is widely accepted today that an assumption of a constant standard-deviation for the stock-return...
Many studies assume stock prices follow a random process known as geometric Brownian motion. Althoug...
Assume that returns on an asset are given by rt = µ+ σtt as we did last week. In GARCH-type models, ...
State-of-the-art stochastic volatility models generate a "volatility smirk" that explains why out-of...
for regression analysis on the dividend yields of individual stocks. Does Noise Create the Size and ...
We develop a framework in which information about firm value is noisily observed. Investors are then...
Stochastic volatility models decompose the time series of financial returns into the product of a v...
In this paper we study the possible microscopic origin of heavy-tailed probability density distribut...
We propose a nonparametric method to determine the functional form of the noise density in discrete...
We propose a nonparametric method to determine the functional form of the noise density in discrete-...
We investigate the historical volatility of the 100 most capitalized stocks traded in US equity mark...
We propose a simple stochastic volatility model which is analytically tractable, very easy to simula...
We exploit direct model-free measures of daily equity return volatility and correlation obtained fro...
Several studies find that the return volatility of stocks tends to exhibit long-range dependence, he...
We investigate the historical volatility of the 100 most capitalized stocks traded in US equity mark...
It is widely accepted today that an assumption of a constant standard-deviation for the stock-return...
Many studies assume stock prices follow a random process known as geometric Brownian motion. Althoug...
Assume that returns on an asset are given by rt = µ+ σtt as we did last week. In GARCH-type models, ...
State-of-the-art stochastic volatility models generate a "volatility smirk" that explains why out-of...
for regression analysis on the dividend yields of individual stocks. Does Noise Create the Size and ...
We develop a framework in which information about firm value is noisily observed. Investors are then...