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                   2008-2009 
                    Seminar Series on Quantitative Finance 
                    held at the Fields Institute, 222 College St., Toronto
                  sponsored by
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           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 
                  2008-09  | 
               
               
                | April 29, 2009 | 
                 
                   Andrew W. Lo, Director, MIT Laboratory for Financial 
                    Engineering, MIT Sloan School of Management 
                    "Kill All The Quants"?: Models vs. Mania In The 
                    Current Financial Crisis 
                    Audio of talk 
                    As the shockwaves of the financial crisis of 2008 propagate 
                    throughout the global economy, the "blame game" 
                    has begun in earnest, with some fingers pointing to the complexity 
                    of certain financial securities, and the mathematical models 
                    used to manage them. In this talk, I will review the evidence 
                    for and against this perspective, and argue that a broader 
                    perspective will show a much different picture. Blaming quantitative 
                    analysis for the financial crisis is akin to blaming F = MA 
                    for a fallen mountain climber's death. Instead, we need to 
                    look deeper into the underlying causes of financial crisis, 
                    which ultimately leads to the conclusion that bubbles, crashes, 
                    and market dislocation are unavoidable consequences of hardwired 
                    human behavior coupled with free markets and modern capitalism. 
                    However, even though crises cannot be legislated away, there 
                    are many ways to reduce the disruptive effects of these events, 
                    and I will conclude with a set of proposals for regulatory 
                    reform. 
                   
                  and 
                  Lane Hughston, Imperial College London  
                    Information Flows in Financial Markets 
                    (audio and slides) 
                  What causes price changes in financial assets? Clearly, one 
                    of the major determiners of price changes is "new information". 
                    When a new piece of information circulates in a financial 
                    market (whether true, partly true, misleading, or bogus), 
                    the prices of related assets will typically be adjusted in 
                    response by market participants, and will move again when 
                    the information is updated. The role of information is evident 
                    enough on an intuitive basis, but how do we  
                    model this mathematically? What is the information "about"? 
                    In this talk I indicate some of the issues involved in modeling 
                    "the flow of information" in financial markets, 
                    and I present some elementary and very useful mathematical 
                    models for "information" in various situations. 
                    Information-based models for a number of different types of 
                    asset price processes will be reviewed, and applications to 
                    the pricing of certain types of derivative products will be 
                    indicated.  
                    Finally, I discuss theproblem of "price formation" 
                    in markets involving interacting agents with diverse, heterogeneous 
                    information sources. [Based on work carried out in collaboration 
                    with D. Brody, A. Macrina, E. Hoyle, and others.] 
                   
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                April 1, 2009 
                  Please Note Date Change | 
                 
                   Audio and Slides 
                    of the talk 
                    Helyette Geman, School of Economics, Mathematics 
                    and Statistics, Birkbeck, University of London 
                    Inventory, Scarcity and Price Volatility in Oil and Natural 
                    Gas Markets 
                   
                  The role of inventory in explaining the shape of the forward 
                    curve and spot price volatility in commodity markets is central 
                    in the theory of storage developed by Kaldor (1939) and Working 
                    (1949) and has since been documented in a vast body of financial 
                    literature, including the reference paper by Fama and French 
                    (1987) on metals.  
                    The goal of this paper is twofold: i) validate in the case 
                    of oil and natural gas the use of the slope of the forward 
                    curve as a proxy for inventory (the slope being defined in 
                    a way that filters out seasonality); ii) analyze directly 
                    for these two major commodities the relationship between inventory 
                    and price volatility. In agreement with the theory of storage, 
                    we find that: 
                    i) the negative correlation between price volatility and inventory 
                    is globally significant for crude oil; 
                    ii) this negative correlation prevails only during those periods 
                    of scarcity when the inventory is below the historical average 
                    and increases importantly during the winter periods for natural 
                    gas. Our results are illustrated by the analysis of a 15 year-database 
                    of US oil and natural gas prices and inventory. 
                  The talk will start with a discussion of the dramatic moves 
                    in commodity prices over the last 10 years. 
                  and 
                  Erhan Bayraktar, Department of Mathematics, University 
                    of Michigan 
                    A Unified Framework for Pricing Credit and Equity Derivatives 
                    We propose a model which can be jointly calibrated to 
                    the corporate bond term structure and equity option volatility 
                    surface of the same company. Our purpose is to obtain explicit 
                    bond and equity option pricing formulas that can be calibrated 
                    to find a risk neutral model that matches a set of observed 
                    market prices. This risk neutral model can then be used to 
                    price more exotic, illiquid or over-the-counter derivatives. 
                    We observe that the model implied credit default swap (CDS) 
                    spread matches the market CDS spread and that our model produces 
                    a very desirable CDS spread term structure. This is observation 
                    is worth noticing since without calibrating any parameter 
                    to the CDS spread data, it is matched by the CDS spread that 
                    our model generates using the available information from the 
                     
                    equity options and corporate bond markets. We also observe 
                    that our model matches the equity option implied volatility 
                    surface well since we properly account for the default risk 
                    premium in the implied volatility surface. We demonstrate 
                    the importance of accounting for the default risk and stochastic 
                    interest rate in equity option pricing by comparing our results 
                    to Fouque, Papanicolaou, Sircar and Solna (2003), which only 
                    accounts for stochastic volatility. 
                    Joint work with my former Ph.D. student Bo Yang (now at Morgan 
                    Stanley). 
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                February 25, 
                  2009 
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                   Audio and Slides 
                    of the talk 
                    Michael Pykhtin, Bank of America  
                     
                    Modeling Credit Exposure for Collateralized Counterparties 
                    Modeling credit exposure of a financial institution to 
                    a counterparty usually requires Monte Carlo simulation of 
                    the trade values at future time points. For collateralized 
                    counterparties, collateral at any simulation time point depends 
                    on the portfolio value at an earlier time point because of 
                    the margin period of risk. Thus, to simulate collateralized 
                    exposure at a single (primary) time point, one needs to simulate 
                    the trade values at two time points: primary and look- back, 
                    resulting in doubling of the total simulation time. 
                  In this talk, we present a method for calculating expected 
                    exposure profile for collateralized counterparties that does 
                    not require simulating trade values at the look-back time 
                    points. This method can be easily implemented within an existing 
                    system that simulates uncollateralized exposure without a 
                    noticeable increase of the simulation time. Potential applications 
                    of the method include pricing and hedging of counterparty 
                    credit risk and calculating economic and  
                    regulatory capital. 
                   
                  and 
                  Adam Metzler, University of Western Ontario 
                    A Multiname First Passage Model for Credit Risk 
                    In this talk we investigate a general framework for multiname 
                    first passage models in credit risk. We begin with a brief 
                    overview of the seminal Black-Cox model for corporate defaults. 
                    In multiname extensions of this model, dependence between 
                    defaults is typically introduced by correlating the Brownian 
                    motions driving firm values. Despite its significant intuitive 
                    appeal, such a framework is simply not capable of describing 
                    market data. Our suspicion is that the ``location 
                    of systematic risk here is the models fatal flaw. 
                  In the remainder of the talk we discuss an alternative framework, 
                    obtained by ``altering the location of systematic 
                    risk in the Black- Cox model. This is accomplished by introducing 
                    ``systematic risk processes, which govern the 
                    trend and volatility in obligors credit qualities. The 
                    result is a setting where defaults occur upon first passage 
                    of time-changed Brownian motion to stochastic barriers. By 
                    exploiting a conditional independence structure we are able 
                    to  
                    calibrate several versions of the model to market quotes for 
                    CDX index tranches, including quotes from the current distressed 
                    environment. 
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                | January 28, 2009  | 
                 
                   "CANCELLED" 
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                | November 26, 2008 | 
                 
                   5:00 p.m. - Reception 
                  5:30 p.m.Audio and 
                    Slides of the talk 
                    Stathis Tompaidis, IROM Department, and Department 
                    of Finance, McCombs School of Business  
                    University of Texas at Austin 
                    The Impact of Financial Constraints on Individual Asset 
                    Allocations: Under-diversification and Asset Selection 
                    We offer a rational explanation for the observed under-diversification 
                    of household portfolios in a partial equilibrium setting with 
                    an investor with a constant investment opportunity set that 
                    includes multiple risky assets, and who receives an income 
                    stream and faces financial constraints. We develop a numerical, 
                    simulation-based, algorithm for estimating the optimal portfolio 
                    weights and apply it to 5 industry portfolios. We find that 
                    young investors with relatively few financial assets compared 
                    to their income, choose portfolios that are concentrated in 
                    one or two assets, while investors closer to retirement revert 
                    back to holding portfolios with all the assets available. 
                    We also consider general equilibrium cross-sectional implications 
                    of financial constraints in an overlapping-generations model 
                    and discuss the potential of financial constraints in explaining 
                    observed deviations from the predictions of the Capital Asset 
                    Pricing Model. 
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                | October 29, 2008  | 
                 
                   Audio and Slides 
                    of the talks 
                   Dr. Michael Zerbs, Algorithmics 
                    Credit Risk Management - The Next Wave 
                    Best practice in credit risk management will continue 
                    to evolve rapidly, in response to ongoing innovation and current 
                    market dislocations. To enable effective risk aware business 
                    decisions at the operational and strategic level, it is more 
                    important than ever to have a sound conceptual framework, 
                    the comprehensive coverage of interrelated risks and asset 
                    or liability classes, flexibility in modeling choices. A forward 
                    looking perspective will be offered on credit risk management, 
                    major objectives and resulting requirements. 
                     
                    Mark Broadie, Columbia University 
                    Understanding Index Option Returns 
                    Previous research concludes that options are mispriced based 
                    on the high average returns, CAPM alphas, and Sharpe ratios 
                    of various put selling strategies. One criticism of these 
                    conclusions is that these benchmarks are ill-suited to handle 
                    the extreme statistical nature of option returns generated 
                    by nonlinear payoffs. We propose an alternative way to evaluate 
                    statistical significance of option returns by comparing historical 
                    statistics to those generated by well-accepted option pricing 
                    models. The most puzzling finding in the existing literature, 
                    the large returns to writing out-of-the-money puts, are not 
                    inconsistent (i.e., are statistically insignificant) relative 
                    to the Black-Scholes model or the Heston stochastic volatility 
                    model due to the extreme sampling uncertainty associated with 
                    put returns. This sampling problem can largely be alleviated 
                    by analyzing market-neutral portfolios such as straddles or 
                    delta-hedged returns. The returns on these portfolios can 
                    be explained by jump risk premia and estimation risk. 
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                | September 24, 2008  | 
                 
                   Audio and 
                    Slides of the talk 
                  William Morokoff, Standard and Poor's 
                    Modeling Correlation in Credit Risk Management 
                    Effective credit risk management depends on a proper estimation 
                    of the distribution of future losses for a portfolio of credit 
                    risky securities. Due to the limited upside of credit assets, 
                    but substantial downside due to relatively rare events of 
                    default, credit portfolios display strong asymmetry in the 
                    shape of fat tails. Correlation, in the form of joint dependencies 
                    in credit movements of the constituent portfolio assets, is 
                    therefore a critical driver of credit risk since it directly 
                    defines the fat tails of the loss distribution and prevents 
                    full diversification of the credit portfolio. Researchers 
                    and risk management practitioners have thus increasingly turned 
                    towards better understanding and properly estimating credit 
                    correlations. Somewhat in parallel, the past decade has also 
                    witnessed the growth of securities such as CDOs that allow 
                    market participants to directly trade credit correlations. 
                   
                  The talk will provide an overview of the different approaches 
                    to modeling dependencies in credit evolutions such as top 
                    down vs bottom up methods, structural models for pricing (based 
                    on a forward looking, risk neutral measure) and risk management 
                    (calibrated to historical, physical measure), estimation of 
                    correlation from market data such as equity prices, spreads 
                    on credit derivatives or observance of credit events such 
                    as defaults and rating migrations. Some thoughts will also 
                    be provided on the challenges related to credit correlation 
                    estimation due to the paucity of default events, and to a 
                    lesser extent, credit migration data. The impact of model 
                    assumptions used to link correlations estimated from high 
                    frequency or multi-period data to long horizon loss distributions 
                    (typically one year for economic capital calculations and 
                    longer term for ratings analyses) will also be discussed. 
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