RT Journal Article SR Electronic T1 A Recursive Parameter Estimation Technique for Term Structure Models JF The Journal of Fixed Income FD Institutional Investor Journals SP 97 OP 110 DO 10.3905/jfi.2011.20.3.097 VO 20 IS 3 A1 Choong Tze Chua A1 Krishna Ramaswamy YR 2010 UL https://pm-research.com/content/20/3/97.abstract AB In this article, the authors develop a new method of estimating multi-parameter term structure models using panel data. This technique involves recursively estimating some parameters along the cross-sectional dimension and the rest of the parameters along the time series dimension until convergence is achieved. By breaking down the parameter estimation process into two simpler procedures along these dimensions, the authors are able to isolate and solve common problems plaguing other methods such as quasi-maximum likelihood estimation via the Kalman filter. As a demonstration, they apply this technique successfully to the one-factor Vasicek and two-factor Cox–Ingersoll–Ross models using Fama–Bliss Treasury data. Simulation results indicate that this technique yields reasonable and robust parameter estimates for these models.TOPICS: Factor-based models, simulations, statistical methods