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Application of one‐step method to parameter estimation in ODE models
Abstract:In this paper, we study application of Le Cam's one‐step method to parameter estimation in ordinary differential equation models. This computationally simple technique can serve as an alternative to numerical evaluation of the popular non‐linear least squares estimator, which typically requires the use of a multistep iterative algorithm and repetitive numerical integration of the ordinary differential equation system. The one‐step method starts from a preliminary urn:x-wiley:stan:media:stan12124:stan12124-math-0001‐consistent estimator of the parameter of interest and next turns it into an asymptotic (as the sample size n ) equivalent of the least squares estimator through a numerically straightforward procedure. We demonstrate performance of the one‐step estimator via extensive simulations and real data examples. The method enables the researcher to obtain both point and interval estimates. The preliminary urn:x-wiley:stan:media:stan12124:stan12124-math-0002‐consistent estimator that we use depends on non‐parametric smoothing, and we provide a data‐driven methodology for choosing its tuning parameter and support it by theory. An easy implementation scheme of the one‐step method for practical use is pointed out.
Keywords:non‐linear least squares  ordinary differential equations  smooth and match estimator  integral estimator  Levenberg–  Marquardt algorithm  one‐step estimator  AMS 2000 classifications: Primary: 62F12  Secondary: 62G08  62G20
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