Information-driven pricing Kernel models

dc.contributor.authorParbhoo, Priyanka Anjali
dc.date.accessioned2013-07-30T12:41:11Z
dc.date.available2013-07-30T12:41:11Z
dc.date.issued2013-07-30
dc.descriptionA thesis submitted for the degree of Doctor of Philosophy 2013en_ZA
dc.description.abstractThis thesis presents a range of related pricing kernel models that are driven by incomplete information about a series of future unknowns. These unknowns may, for instance, represent fundamental macroeconomic, political or social random variables that are revealed at future times. They may also represent latent or hidden factors that are revealed asymptotically. We adopt the information-based approach of Brody, Hughston and Macrina (BHM) to model the information processes associated with the random variables. The market filtration is generated collectively by these information processes. By directly modelling the pricing kernel, we generate information-sensitive arbitrage-free models for the term structure of interest rates, the excess rate of return required by investors, and security prices. The pricing kernel is modelled by a supermartingale to ensure that nominal interest rates remain non-negative. To begin with, we primarily investigate finite-time pricing kernel models that are sensitive to Brownian bridge information. The BHM framework for the pricing of credit-risky instruments is extended to a stochastic interest rate setting. In addition, we construct recovery models, which take into consideration information about, for example, the state of the economy at the time of default. We examine various explicit examples of analytically tractable information-driven pricing kernel models. We develop a model that shares many of the features of the rational lognormal model, and investigate examples of heat kernel models. It is shown that these models may result in discount bonds and interest rates being bounded by deterministic functions. In certain situations, incoming information about random variables may exhibit jumps. To this end, we construct a more general class of nite-time pricing kernel models that are driven by Levy random bridges. Finally, we model the aggregate impact of uncertainties on a nancial market by randomised mixtures of Levy and Markov processes respectively. It is assumed that market participants have incomplete information about the underlying random mixture. We apply results from non-linear ltering theory and construct Flesaker-Hughston models and in nite-time heat kernel models based on these randomised mixtures.en_ZA
dc.identifier.urihttp://hdl.handle.net/10539/12926
dc.language.isoenen_ZA
dc.subject.lcshFinancial futures.
dc.subject.lcshMarkov processes.
dc.subject.lcshStochastic control theory.
dc.titleInformation-driven pricing Kernel modelsen_ZA
dc.typeThesisen_ZA

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