  | 
 
            
               
                 
                   2009-2010  
                    Fields Quantitative Finance Seminar  
                    Fields Institute, 222 College St., Toronto (map)
                  
                 | 
                
                  Sponsored by 
                      
                 | 
               
             
            
 
            
            Organizing Committee 
             
             The Quantitative Finance Seminar has been a centerpiece of the 
              Commercial/Industrial program at the Fields Institute since 1995. 
              Its mandate is to arrange talks on current research in quantitative 
              finance that will be of interest to those who work on the border 
              of industry and academia. Wide participation has been the norm with 
              representation from mathematics, statistics, computer science, economics, 
              econometrics, finance and operations research. Topics have included 
              derivatives valuation, credit risk, insurance and portfolio optimization. 
              Talks occur on the last Wednesday of every month throughout the 
              academic year and start at 5 pm. Each seminar is organized around 
              a single theme with two 45-minute talks and a half hour reception. 
              There is no cost to attend these seminars and everyone is welcome. 
             
             To be informed of speakers and titles for upcoming seminars and 
              financial mathematics activities, please subscribe to the Fields 
              mail list. 
             
            
            
               
                 
                  Seminars 2009-10
                 | 
               
               
                June 2, 2010 
                  5 p.m. | 
                 
                   Freddy Delbaen (ETH Zurich) 
                    BSDE and time consistency 
                    Abstract: the capital requirements for financial institutions 
                    should satisfy rules that encourage diversification, avoid 
                    risk concentration and take into account the time aspect of 
                    uncertainty. They also should allow to allocate, in a consistent 
                    way, the risk capital to the different branches of the financial 
                    institution. This is best done via convex, time consistent 
                    risk measures, a mathematical concept that is based on the 
                    theory of stochastic processes, backward stochastic differential 
                    equations and semi-linear PDE.  
                   
                  H. Mete Soner, Department of Mathematics, ETH Zurich 
                    Financial markets with uncertain volatility. 
                    Even in simple models in which the volatility is only known 
                    to stay in two bounds, it is quite hard to price and hedge 
                    derivatives which are not Markovian. The main reason for this 
                    difficulty emanates from the fact that the relevant set of 
                    probability measures is not dominated by one measure. In this 
                    talk we will prove a martingale representation theorem for 
                    this market. This result provides a complete answer to the 
                    questions of hedging and pricing. The main tools are the theory 
                    of nonlinear G-ex pectati ic analysis of Denis & Martini 
                    and the second order backward stochastic differential equations. 
                    This is joint work with Nizar Touzi from Ecole Polytechnique 
                    and Jianfeng Zhang from University of Southern California. 
                  
                   
                   
                   | 
               
             
            Past Seminars
            
               
                | September 30, 2009 | 
                 
                   Ulrich Horst, Humboldt University Berlin 
                    Hidden Liquidity and the Optimal Placement of Iceberg Orders 
                     
                    Audio and 
                    Slides of the Talk 
                    Almost all electronic trading systems are based on Limit 
                    Order Books (LOBs) in which all unexecuted limit orders are 
                    stored while awaiting execution. Not all the available liquidity 
                    is openly displayed, though. Most exchanges offer liquidity 
                    providers the option of shielding all or portions of their 
                    limit orders from public display. These modified order types, 
                    known as hidden orders or iceberg orders, meet the demands 
                    of traders who perceive benefits in obscuring their immediate 
                    trading needs from other market practitioners. We propose 
                    a simple mathematical model of a LOB within which to study 
                    the problem of the optimal display size of limit orders placed 
                    in the spread or at the top of the book. One of the most important 
                    determinants of the optimal display size is the amount of 
                    hidden liquidity with higher time priority of the hidden part 
                    of the submitted order. We estimated this quantity using recent 
                    NASDAQ data. Our empirical analysis shows that the spread 
                    together with the visible volume at the top of the book often 
                    well predicts the amount of hidden liquidity in the spread 
                    and on top of the book. We also report a couple of other empirical 
                    findings including the dependence of hidden liquidity on average 
                    daily trading volumes and average quote sizes, and the distribution 
                    of hidden liquidity in the spread.  
                  The talk is based on joint work with Gökhan Cebiroglu 
                    (Humboldt University) and Mark DiBattista (Deutsche Bank AG) 
                     
                    & 
                    Jeremy Graveline, University of Minnesota 
                    G10 Swap and Exchange Rates 
                    Audio 
                    and Slides of the Talk 
                    In this talk we show how to extend single-currency dynamic 
                    term structure models to a multi-currency setting. When the 
                    risk-neutral pricing measures, or risk premia, are denominated 
                    in two different currencies they must differ by the covariance 
                    of the exchange with the other factors in the model. As an 
                    illustrative example, we provide estimates for a Gaussian 
                    model of the term structure of swap rates and exchange rates 
                    in the G10 countries. There are 9 exchange rates and each 
                    yield curve is described by 2 or 3 factors, for a total of 
                    37 factors in the model. The parameters that govern the covariances 
                    and risk-neutral drifts are relatively easy to estimate. However, 
                    it is much harder to reliably estimate the risk premia parameters 
                    that relate the risk-neutral and statistical measures. We 
                    examine the performance of models for 7 years out-of-sample 
                    and show that models with a small number of priced risk factors 
                    provide a good in-sample fit and the best out-of-sample results. 
                    This talk discusses joint work with Scott Joslin at MIT. 
                   
                   
                   
                 | 
               
               
                | October 28, 2009 | 
                Tomasz R Bielecki, 
                  Illinois Institute of Technology  
                   Counterparty Credit Risk: CVA computation under netting 
                  and collateralization 
                  (There is no audio recording of this 
                  talk) 
                  We first present a general model for counterparty risk. We give 
                  are presentation formula for the Credit Value Adjustment (CVA) 
                  accounting for netting and collateralization in the context 
                  of bilateral counterparty risk. Then, we specify the results 
                  to the case of counterparty credit risk, where we consider a 
                  credit risky portfolio between two default prone counterparties. 
                  The underlying model for the dependence between defaults is 
                  based on the concept of Markov copula. Some numerical results 
                  illustrating computation of relevant quantities (such as CVA, 
                  EPE) will be presented. 
                  Tom Hurd, McMaster University 
                    Credit Risk via First Passage for Time Changed Brownian 
                    Motions 
                    Audio and slides of 
                    Talk 
                    The first passage structural approach to credit risk, 
                    while very natural, is beset by technical difficulties that 
                    make it  
                    inflexible in practice. Time changed Brownian motions (TCBMs) 
                    offer a simple but mathematically interesting way to circumvent 
                    these technicalities and open the door to a number of innovations. 
                    After a quick sketch of the basic properties of TCBM models, 
                    I show that they can give an excellent fit to the dynamics 
                    of credit default swaps  
                    observed in the market. I then consider a more complex ``hybrid'' 
                    framework that can model the joint dynamics of equity and 
                    credit derivatives. Finally, I will touch briefly on how the 
                    TCBM framework extends to multiple firms, paving the way for 
                    a consistent ``bottom up'' approach to portfolio credit derivatives. 
                    This is a talk aimed at people who really work with credit 
                    default swaps and other credit risky securities, and their 
                    feedback will be welcomed! 
                   
                   
                   
                 | 
               
               
                | November 25, 2009 | 
                Frank Milne, Queen's 
                  University 
                  Approaches for Modeling Liquidity and Systemic Risks 
                  Audio and slides 
                  of Talk 
                  The paper outlines some basic approaches to modeling liquidity, 
                  and its implications for asset pricing and portfolio strategy. 
                  These idea can be used to model a Risk Management system with 
                  liquidity problems. In addition they can be extended to explore 
                  Systemic Risks. 
                  Traian Pirvu, McMaster University 
                    Time Consistency in Portfolio Management 
                    Audio and slides 
                    of Talk 
                    There are at least two examples in portfolio management that 
                    are time inconsistent. 1) Maximizing utility of intertemporal 
                    consumption and final wealth assuming a hyperbolic discount 
                    rate (the discount rate increases with time). 2) Mean-variance 
                    utility: This case is a continuous time version of the standard 
                    Markowitz investment problem, and the time inconsistencies 
                    are due to the wealth's variance (which is nonlinear and depends 
                    on the starting wealth). In this talk I will focus on the 
                    first example. There is strong evidence that individuals discount 
                    future utilities at nonconstant rates. The notion of optimality 
                    then disappears, because of time inconsistency and rational 
                    behaviour then centers around equilibrium strategies. I will 
                    investigate portfolio management with hyperbolic discounting, 
                    and I will show that this may explain some well known puzzles 
                    of portfolio management. This is joint work with Ivar Ekeland. 
                   
                 | 
               
               
                January 
                  20, 2010 
                  4:30 -5:15 p.m. 
                  **note time 
                 | 
                Eckhard Platen, 
                  University of Technology , Sydney  
                  Real World Pricing of Long Term Contracts 
                  Audio and slides 
                  of Talk 
                  Long dated contingent claims are relevant in insurance, pension 
                  fund management and derivative pricing. This paper proposes 
                  a paradigm shift in the valuation of long term contracts, away 
                  from classical no-arbitrage pricing towards pricing under the 
                  real world probability measure. In contrast to risk neutral 
                  pricing, the long term excess return of the equity market, known 
                  as the equity premium, is taken into account. Further, instead 
                  of the savings account, the numeraire portfolio is used, as 
                  the fundamental unit of value in the analysis. The numeraire 
                  portfolio is the strictly positive, tradable portfolio that 
                  when used as benchmark makes all benchmarked nonnegative portfolios 
                  supermartingales, which means intuitively that these are in 
                  the long run downward trending or at least trendless. Furthermore, 
                  the benchmarked real world price of a benchmarked claim is defined 
                  to be its real world conditional expectation. This yields the 
                  minimal possible price for its hedgable part and minimizes the 
                  variance of the benchmarked hedge error. The pooled total benchmarked 
                  replication error of a large insurance company or bank essentially 
                  vanishes due to diversification. Interestingly, in long term 
                  liability and asset valuation, real world pricing can lead to 
                  significantly lower prices than suggested by classical no-arbitrage 
                  arguments. Moreover, since the existence of some equivalent 
                  risk neutral probability measure is no longer required, a wider 
                  and more realistic modeling framework is available for exploration. 
                  Classical actuarial and risk neutral pricing emerge as special 
                  cases of real world pricing. | 
               
               
                | Note Feb. 24 revised 
                  speaker, Tobias Adrian will not be speaking at this time | 
               
               
                February 24, 2010 
                  5 pm.  | 
                Raphael Douady, Riskdata 
                   
                  The StressVaR: a New Risk Concept for Superior Fund Allocation 
                  Joint work with Cyril Coste and Ilija I. Zovko  
                  Audio and slides 
                  of Talk 
                  In this paper we introduce a novel approach to risk estimation 
                    based on nonlinear factor models - the "StressVaR" 
                    (SVaR). Developed to evaluate the risk of hedge funds, the 
                    SVaR appears to be applicable to a wide range of investments. 
                    The computation of the StressVaR is a 3 step procedure whose 
                    main components we describe in relative detail. Its principle 
                    is to use the fairly short and sparse history of the hedge 
                    fund returns to identify relevant risk factors amonga very 
                    broad set of possible risk sources. This risk profile is obtained 
                    by calibrating a collection of nonlinear single-factor models 
                    as opposed to a single multi-factor model. We then use the 
                    risk profile and the very long and rich history of the factors 
                    to asses the possible impact of known past crises on the funds, 
                    unveiling their hidden risks and so called "black swans".In 
                    backtests using data of 1060 hedge funds we demonstrate that 
                    the SVaR has better or comparable properties than several 
                    common VaR measures - shows less VaR exceptions and, perhaps 
                    even more importantly, in case of an exception, by smaller 
                    amounts.The ultimate test of the StressVaR however, is in 
                    its usage as a fund allocating tool. By simulating a realistic 
                    investment in a portfolio of hedge funds, we show that the 
                    portfolio constructed using the StressVaR on average outperforms 
                    both the market and theportiolios constructed using common 
                    VaR measures.For the period from Feb. 2003 to June 2009, the 
                    StressVaR constructed portfolio outperforms the market by 
                    about 6% annually, and on average the competing VaR measures 
                    by around 3%.The performance numbers from Aug. 2007 to June 
                    2009 are even more impressive. The SVaR portfolio outperforms 
                    the market by 20%, and the best competing measure by 4%. 
                 | 
               
               
                March 31, 2010 
                  5 pm.  | 
                 
                   Dilip Madan (University of Maryland) 
                    Capital Requirements, Acceptable Risks and the Value of 
                    the Taxpayer Put  
                     
                    Limited liability for the firm in the presence of unbounded 
                    liabilities delivers a free put option to the firm that is 
                    rarely valued and accounted for. We christen this put option 
                    the taxpayer put. In addition the optimality of free markets 
                    is called into question by the introduction of adverse risk 
                    incentives exaggerated by compensation aligned to stock market 
                    values. In such a context we introduce the concept of socially 
                    acceptable risks, operationalized by a positive expectation 
                    after distortion of the distribution function for risky cash 
                    flows. This results in a definition of capital requirements 
                    making the risks undertaken acceptable to the wider community. 
                    Enforcing such capital requirements can mitigate the perverse 
                    risk incentives introduced by limited liability provided that 
                    the set of acceptable risks is suitably conservatively defined. 
                    Additionally the value of the free taxpayer put may be substantially 
                    reduced. We illustrate all computations for the six major 
                    US banks at the end of 2008.  
                     
                     
                    Stan Uryasev (University of Florida) 
                    Value-at-Risk vs. Conditional Value-at-Risk in Risk Management 
                    and Optimization 
                    Joint talk with Konstantin Kalinchenko (Department of Industrial 
                    and Systems Engineering, Risk Management and Financial Engineering 
                    Lab, University of Florida) & Sergey Sarykalin and Gaia 
                    Serraino (American Optimal Decisions) 
                   
                   
                    From mathematical perspective, risk management is a procedure 
                    for shaping a risk distribution. Popular functions for managing 
                    risk are Value at-Risk (VaR) and Conditional Value-at-Risk 
                    (CVaR). Reasons affecting the choice between VaR and CVaR 
                    are based on the differences in mathematical properties, stability 
                    of statistical estimation, simplicity of optimization procedures, 
                    acceptance by regulators, etc. We explain strong and weak 
                    features of these risk measures and illustrate them with examples. 
                    We demonstrate several risk management/optimization case studies 
                    conducted with Portfolio Safeguard decision support software. 
                    In particular, we will discuss how to calibrate risk preferences 
                    of investors doing risk management with options. 
                     
                    Bio: 
                    Professor Stan Uryasev is director of the Risk Management 
                    and Financial Engineering Lab and director of the PhD Program 
                    with Concentration in Quantitative Finance at the University 
                    of Florida. His research is focused on efficient computer 
                    modeling and optimization techniques and their applications 
                    in finance and military projects. He published three books 
                    (monograph and two edited volumes) and about eighty research 
                    papers. He is a co-inventor of the Conditional Value-at-Risk 
                    and the Conditional Drawdown-at-Risk optimization methodologies. 
                    He is the founder of American Optimal Decisions (AORDA.com) 
                    developing optimization software in risk management area: 
                    VaR, CVaR, Default Probability, Drawdown, Credit Risk minimization. 
                  Stan Uryasev is a frequent speaker at academic and professional 
                    conferences. He has delivered seminars on the topics of risk 
                    management and stochastic optimization. He is on the editorial 
                    board of a number of research journals and is Editor Emeritus 
                    and Chairman of the Editorial Board of the Journal of Risk. 
                   
                     
                  
                     
                 | 
               
               
                April 28th, 2010 
                  5 pm.  | 
                Jorge Sobehart 
                  (Citigroup) 
                  Follow the Money from Boom to Crash: Asset Prices and Market 
                  Behavior  
                  - Benefits and limitations of rational models of asset pricing 
                    - A alternative framework for asset price dynamics based on 
                    investor behavior 
                    - Price-following and herding effects and their impact on 
                    the distribution of asset prices 
                    - Fat tail effects. The impact of market feedback, credit 
                    cycles, crises and uncertainty 
                    - Quantifying the risk of extreme events. From theory to practice. 
                  Summary 
                    A predominant view in the literature of market behavior is 
                    that investors are driven by rationality -that is, investors 
                    are presumed to make logical and sensible decisions all the 
                    time. Evidence accumulated over years, and in particular during 
                    turbulent times, has shown consistently that investors are 
                    far less rational in their decision making that the theory 
                    assumes. Understanding investors' behavior is important for 
                    developing more realistic models of asset price dynamics capable 
                    of capturing the extreme changes in prices observed during 
                    periods of market booms and crashes. 
                  In the presentation I will elaborate on an asset pricing 
                    model based on market behavior and uncertainty. The phenomenological 
                    model of asset valuation dynamics includes investor behavior 
                    patterns based on price momentum and trends. The model produces 
                    fat-tail distributions of asset prices remarkably similar 
                    to the observed distributions, and provides a simple framework 
                    for understanding the potential divergence between fundamental 
                    and market valuations under uncertainty. 
                   
                  ***Please note that the second talk 
                    by Igor Halperin has been canceled due to unforseen circumstances. 
                   
                 | 
               
             
             
             
               
                 
                   
                     
                       
                        back to top 
                       
                         
                     
                   
                 
               
             
              
 | 
  |