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CV-Robert ENGLE.Pdf Updated 2/2019 ROBERT F. ENGLE New York University • Salomon Center • 44 West Fourth Street, Suite 9-62 New York, NY 10012-1126 • 212-998-0710, Asst: -0702 • Fax: 212-995-4220 [email protected] • http://www.stern.nyu.edu/rengle/ BIOGRAPHY Robert Engle, the Michael Armellino Professor of Finance at New York University Stern School of Business, was awarded the 2003 Nobel Prize in Economics for his research on the concept of autoregressive conditional heteroskedasticity (ARCH). He developed this method for statistical modeling of time-varying volatility and demonstrated that these techniques accurately capture the properties of many time series. Professor Engle shared the prize with Clive W. J. Granger of the University of California at San Diego. Professor Engle is an expert in time series analysis with a long-standing interest in the analysis of financial markets. His ARCH model and its generalizations have become indispensable tools not only for researchers, but also for analysts of financial markets, who use them in asset pricing and in evaluating portfolio risk. His research has also produced such innovative statistical methods as cointegration, common features, autoregressive conditional duration (ACD), CAViaR and now dynamic conditional correlation (DCC) models. He is currently the Director of the NYU Stern Volatility Institute and is the Co-Founding President of the Society for Financial Econometrics (SoFiE), a global non-profit organization housed at NYU. Before joining NYU Stern in 2000, Professor Engle was Chancellor’s Associates Professor and Economics Department Chair at the University of California, San Diego, and Associate Professor of Economics at the Massachusetts Institute of Technology. He received his bachelor of science in physics from Williams College and his master of science in physics and doctor of philosophy in economics from Cornell University. Born in Syracuse, NY, he grew up in Media, Pennsylvania, spent 25 years in San Diego, and now lives in New York. ACADEMIC EXPERIENCE NEW YORK UNIVERSITY STERN SCHOOL OF BUSINESS, New York, NY Michael Armellino Professor in the Management of Financial Services, 2000-present Professor, Department of Finance, 1999 WHARTON FINANCIAL INSTITUTIONS CENTER, Philadelphia, PA Fellow, 2009-2010 Academic Year UNIVERSITY OF CALIFORNIA, San Diego, CA Emeritus Professor and Distinguished Research Professor, 2003 Chair, 1990-1994 Chancellors’ Associates Chair in Economics, 1993- Professor, 1977 Associate Professor, 1975-1977 MASSACHUSETTS INSTITUTE OF TECHNOLOGY, Cambridge, MA Associate Professor, 1975 Assistant Professor, 1969-1974 HONORS AND AWARDS . Honorary Doctorate, Nicolaus Copernicus University, 2018 . Honorary Doctorate, University of Johannesburg, 2018 . Honorary Doctorate, Hong Kong Polytechnic University, 2017 . Honorary Doctorate, Airlangga University, 2017 . Honorary Doctorate, Naresuan University, 2017 . Oskar-Morgenstern Medal Award, University of Vienna, 2015 . T.C. Liu Visiting Scholar position of the Becker Friedman Institute at the University of Chicago, 2013 . Member, U.S. Department of the Treasury, Office of Financial Research Advisory Committee, 2012 . Distinguished Visiting Scholar, Georgetown University McDonough School of Business, 2012 . Member, International Advisory Panel, Risk Management Institute (RMI), 2012 . Financial Engineer of the Year Award, IAFE/SunGard , 2011 . Distinguished Alumni Award, Department of Statistical Science, Cornell University, 2011 . Distinguished Visiting Scholar, UNC Chapel Hill Kenan-Flagler Business School, 2010 . Fellow, FMA (Financial Management Association International) . Recognition Award for Distinguished Service, The American Real Estate and Urban Economics Association . Member, Joint CFTC-SEC Advisory Committee on Emerging Regulatory Issues to investigate the “Flash Crash”, 2010 . Hofstra University’s Presidential Medal, 2009 . Honorary Doctorate, Williams College, 2007 . Member, World Economic Forum, 2007 . Member, National Academy of Sciences, Finance Committee, 2006 . Fellow of the Institute for Quantitative Research in Finance, 2006 . Academia Europensis Scientarum Atrium Litterarumque, European Arts and Sciences Membership, 2005 . Doctorate Honoris Causis, HEC, Paris, France, 2005 . Doctorate Honoris Causis, Université de Savoie, France, 2005 . Nobel Prize for Economics, 2003 . Doctorate Honoris Causis, University of Southern Switzerland, 2003 . Fellow, American Finance Association, 2004 . Fellow, American Academy of Arts and Sciences, 1995 . Fellow, American Statistical Association, 2000 . Fellow, the Econometric Society, 1981 EDUCATION CORNELL UNIVERSITY, Ithaca, NY Ph.D. in Economics, 1969 M.S. in Physics, 1966 WILLIAMS COLLEGE, Williamstown, MA B.S. in Physics, with Highest Honors, 1964 BUSINESS AFFILIATIONS Director and Founder of the Volatility Institute, New York University (2009-Present) . The center runs a seminar series, Quantitative Finance and Econometrics (QFE), a public web site and venue for visitors, post-docs and research fellows, and password-protected Vlab, which calculates volatilities and correlations every day on a wide range of assets using various methods. It produces volatility forecasts up to a year in advance. Co-Founding President, Society for Financial Econometrics (SoFiE), New York University (2007-Present) . The Society for Financial Econometrics (SoFiE) is a global network of academics and practitioners dedicated to the fast-growing field of financial econometrics. SoFiE is committed to promoting and expanding research and education by organizing annual conferences and sponsoring programs and activities in the intersection of finance and econometrics. Principle, Robert F. Engle, Econometric Services, 8 Frederick St., Mahopac, NY 10541 845-208-2028, [email protected] . A personal consulting company specializing in the application of econometric methods to financial and other business needs. Current work focuses on liquidity and trading in financial markets, risk measurement and management, derivatives pricing and hedging and a variety of volatility and correlation related research tasks. Presents many lectures every year to financial practitioners around the world on topics of current interest. Faculty Research Associate, National Bureau of Economic Research (NBER) (1987-Present) . Founded in 1920, the National Bureau of Economic Research is a private, nonprofit, nonpartisan research organization dedicated to promoting a greater understanding of how the economy works. The NBER is committed to undertaking and disseminating unbiased economic research among public policymakers, business professionals, and the academic community. Minor Partner, AlphaCrest Capital Management (2013-present) . AlphaCrest is a cutting edge quantitative hedge fund. Academic Affiliate, Compass Lexecon (2010-Present) . Compass Lexecon was formed in January 2008 through the combination of Competition Policy Associates (COMPASS) and Lexecon, two of the premier economic consulting firms in the world. For the past nine years, Compass Lexecon has been ranked as one of the leading antitrust economics firms in the world by the Global Competition Review. Quantitative Finance Expert, Quinn Emanuel Urquhart & Sullivan, LLP, (2014-present) . Quinn Emanuel is the largest law firm in the world devoted solely to business litigation and arbitration. Quantitative Finance Expert, Jones Day, (2016-present) . Ranked among the world’s most integrated law firms and best in client service, Jones Day has locations in centers of business and finance throughout the world. Expert, Analysis Group . Analysis Group provides economic, financial and strategy consulting to law firms, corporations & government agencies. Expert, Industrial Economics, Inc, (2014-2016) . Industrial Economics, Incorporated is a consulting firm that provides expert analysis to clients in government, business, and not-for-profit organizations. Chairman of the Academic Advisory Board, Morgan Stanley Equity Microstructure Grants (2004-2008) . This board administers an academic grant program giving approximately 10 grants per year to faculty and students studying market microstructure. The winning grants are invited to present their work at a conference in the following year that is run by the AAB. Principle, VoLaRia, (2013-2017) . A financial consulting company with expertise in statistical models of financial data. HONORARY LECTURES . Lecture, “Prospects for Financial Stability in Chile,” Central Bank of Chile, Santiago, Chile, December 2018 . Lecture, “Financial Stability in Chile and the Region,” Chilean Ministry of Finance, Santiago, Chile, December 2018 . Keynote Speaker, “Risk Forecasting for the Chinese Stock Market and Financial Sector,” Lujiazui Financial Risk Management Forum, Shanghai, China, November 2018 . Keynote Speaker, “Risk Forecasting for the Chinese Stock Market and Financial Sector,” Volatility Institute Shanghai (VINS) Conference, Shanghai, China, November 2018 . Presentation, “Systemic Risk: 10 Years Later,” 2008 Financial Crisis: A Ten-Year Review Conference, New York, NY, November 2018 . Keynote Speaker, “How Much SRISK is Too Much?” Sacred Heart University, Fairfield, Connecticut, November 2018 . Keynote Speaker, “A Financial Approach to Climate Risk,” GRI Summit 2018, Toronto, Canada, October 2018 . Keynote Speaker, “How Much SRISK is Too Much?” 53rd Colombian Banking Summit, Cartagena, Colombia, August 2018 . Lecture, “Prospects for Global Financial Stability,” University of Brescia, Brescia, Italy, June 2018 . Lecture,
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