Scholarly Colloquia and Events

  • 10/6 Statistics Colloquium, Sung Hoon Choi, UConn Econ

     

     

    STATISTICS COLLOQUIUM

     

    Sung Hoon Choi

    Assistant Professor, Department of Economics

    University of Connecticut

     

     Feasible Weighted Projected Principal Component Analysis for Factor Models

    with an Application to Bond Risk Premia

     

    Abstract

    I develop a feasible weighted projected principal component (FPPC) analysis for factor models in which observable characteristics partially explain the latent factors. This novel method provides more efficient and accurate estimators than existing methods. To increase estimation efficiency, I take into account both cross-sectional dependence and heteroskedasticity by using a consistent estimator of the inverse error covariance matrix as the weight matrix. To improve accuracy, I employ a projection approach using characteristics because it removes noise components in high-dimensional factor analysis. By using the FPPC method, estimators of the factors and loadings have faster rates of convergence than those of the conventional factor analysis. Moreover, I propose an FPPC-based diffusion index forecasting model. The limiting distribution of the parameter estimates and the rate of convergence for forecast errors are obtained. Using U.S. bond market and macroeconomic data, I demonstrate that the proposed model outperforms models based on conventional principal component estimators. I also show that the proposed model performs well among a large group of machine learning techniques in forecasting excess bond returns.

    Bio:  Dr. Choi’s research focuses on the development of new tools for use with big data, machine learning, and forecasting.  The tools primarily involve the development of new theoretical methods for use in both estimation and statistical inference using high-dimensional panel datasets.  His research interests include econometric theory, financial econometrics, machine learning, and forecasting with a concentration in high-dimensional data, large panel data and factor models.

     

    Wednesday, October 6, 2021

    4:00 p.m. EDT, 1-hour duration

     

    Join from the meeting link

    https://uconn-cmr.webex.com/uconn-cmr/j.php?MTID=mecaac42b5d392af8ad37adb59cb3682c

      

    Join by meeting number

    Meeting number (access code): 2620 886 9037

    Meeting password: HUuFrM922hy                        

      

    Join by phone

    +1-415-655-0002 US Toll

      

    Global call-in numbers  

     

    Join from a video system or application

    Dial 26208869037@uconn-cmr.webex.com

    You can also dial 173.243.2.68 and enter your meeting number.

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