Ta-Hsin Li
IEEE Trans. Inf. Theory
Motivated by a relationship between the exponentially weighted recursive least squares (RLS) and the Kalman filter (KF) under a special state-space model (SSM), several simple generalizations of RLS are discussed. These generalized RLS algorithms preserve the key feature of exponential weighting but provide additional flexibility for better tracking performance. They can even outperform KF in some situations when the SSM assumption does not hold. The algorithms are applied to a problem of computer workload forecasting with real data. © 2008 Taylor & Francis Group, LLC. All rights reserved.
Ta-Hsin Li
IEEE Trans. Inf. Theory
Ta-Hsin Li
Journal of Time Series Analysis
Ta-Hsin Li, Leah Kamin, et al.
BMC Health Services Research
Ta-Hsin Li, Melvin J. Hinich
Technometrics