We model the dynamics of asset prices and associated derivatives by consideration of the dynamics of the conditional probability density process for the value of an asset at some specified time in the future. In the case where the asset is driven by Brownian motion, an associated "master equation" for the dynamics of the conditional probability density is derived and expressed in integral form. By a "model" for the conditional density process we mean a solution to the master equation along with the specification of (a) the initial density, and (b) the volatility structure of the density. The volatility structure is assumed at any time and for each value of the argument of the density to be a functional of the history of the density up to th...
This research shows how to extract, evaluate and combine density forecasts of stock index returns fr...
We consider a simple uncertain-volatility model for the asset price underlying a given option market...
We propose a numerical method to compute the first-passage probability density function in a time-ch...
We model the dynamics of asset prices and associated derivatives by consideration of the dynamics of...
In this article, we derive expressions for conditional expectations in terms of regular expectations...
The technique of using densities and conditional distributions to carry out consistent specification...
markdownabstract__Abstract__ Conditional density estimation is an important problem in a variety ...
We study the computation of the Greeks of options written on assets modelled by a multi-factor dynam...
2013-02-01We consider a market where asset prices could be affected by multiple defaults along with ...
Abstract. We propose a flexible Bayesian method for conditional density function es-timation and pro...
R. F. Engle's autoregressive conditional heteroskedastic model is extended to permit parametric spec...
A new framework for asset price dynamics is introduced in which the concept of noisy information abo...
We present two different approaches to obtain a probability density function for the stock?s future...
The purpose of this paper is to introduce a new approach that allows to construct no-arbitrage marke...
This paper presents an overview of information-based asset pricing. In this approach, an asset is de...
This research shows how to extract, evaluate and combine density forecasts of stock index returns fr...
We consider a simple uncertain-volatility model for the asset price underlying a given option market...
We propose a numerical method to compute the first-passage probability density function in a time-ch...
We model the dynamics of asset prices and associated derivatives by consideration of the dynamics of...
In this article, we derive expressions for conditional expectations in terms of regular expectations...
The technique of using densities and conditional distributions to carry out consistent specification...
markdownabstract__Abstract__ Conditional density estimation is an important problem in a variety ...
We study the computation of the Greeks of options written on assets modelled by a multi-factor dynam...
2013-02-01We consider a market where asset prices could be affected by multiple defaults along with ...
Abstract. We propose a flexible Bayesian method for conditional density function es-timation and pro...
R. F. Engle's autoregressive conditional heteroskedastic model is extended to permit parametric spec...
A new framework for asset price dynamics is introduced in which the concept of noisy information abo...
We present two different approaches to obtain a probability density function for the stock?s future...
The purpose of this paper is to introduce a new approach that allows to construct no-arbitrage marke...
This paper presents an overview of information-based asset pricing. In this approach, an asset is de...
This research shows how to extract, evaluate and combine density forecasts of stock index returns fr...
We consider a simple uncertain-volatility model for the asset price underlying a given option market...
We propose a numerical method to compute the first-passage probability density function in a time-ch...