“…For example, approximate Maximum Likelihood (ML) and Bayesian methods have been developed; see, for example, [29,50,54,69,41,66,64,20,19]. They are mainly based on sequential Monte Carlo (a.k.a particle filters/smoothers) and Markov chain Monte Carlo approximations (see [53]), and have been shown to provide impressive results on several examples and benchmark problems. However, depending on the application, they may be computationally expensive or even infeasible.…”