Academic and Scholarly Events

  • 1/17 Statistics Colloquium, Laszlo Markus

    STATISTICS COLLOQUIUM

     

    László Márkus

    Institute of Mathematics, Eötvös Loránd University, Budapest, Hungary,

     and

    Department of Statistics, University of Connecticut

     

    Rough Stochastic Correlation for Modeling Tail Dependence of Asset Price Pairs

     

    Abstract

    In 2009 the magazine Wired published ”Recipe for Disaster: The Formula That Killed Wall Street” as the cover story

    written by journalist Felix Salmon. It blames the subprime crisis on the Gaussian copula, which was then used in

    finance as industry standard to estimate the probability distribution of losses on a pool of loans or bonds or assets.

    The Gaussian copula cannot, indeed, create tail dependence, crucial in modeling simultaneous defaults, but that was

    known before the crisis, as were other models, capable to do so. More than 10 years passed by since then, but the

    various copula and other models in use, going beyond correlation for describing dependence, do not harmonize well

    with the stochastic differential equation (SDE) description used for individual assets. Those models are often

    evaluated on the basis of their performance in option pricing, putting them to the test by relatively few data and

    short time period. In the lecture I build up an approach where interdependence is inherent from the covariations of

    Brownian motions driving the asset equations. These covariations in turn are integrals of suitable SDE driven

    stochastic processes called stochastic correlations. We test the goodness of the suggested model on historic asset

    price data, by using Kendall functions of copulas. The paradigm of rough paths leads to a newly emerging

    methodology in modeling stochastic volatility of assets. We suggest a similar approach to the mentioned stochastic

    correlations, and show that in frequent, minute-wise trade the fractal dimensions support the assumption of rough

    paths. The developed model helps showing that similar herding behavior of brokers as expressed by the HIX index

    may lead to very different tail dependence and hence e.g. variable probabilities of coincident defaults. The model

    may also be useful e.g. in CDO pricing, and in Credit Value Adjustment (CVA). A positive correlation/association

    between exposure and counterparty default risk gives rise to the so called Wrong-Way Risk (WWR) in CVA. Even

    though roughly two-thirds of the losses in the credit crisis were due to CVA losses, a decade after the crisis addressing

    WWR in a both sound and tractable way remains challenging. Our suggested model is capable of creating tail

    dependence, and produces more realistic CVA premiums than constant correlations.

     

    DATE:  Friday, January 17, 2020

    TIME:  11:00 am

    PLACE: Philip E. Austin Bldg., Rm. 344

     

    Coffee will be served at 10:30 am in the Noether Lounge (AUST 326)

    For more information, contact: Tracy Burke at tracy.burke@uconn.edu