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arxiv: 1807.08713 · v2 · pith:52HQ2RZUnew · submitted 2018-07-23 · 📊 stat.CO · math.NA

A practical example for the non-linear Bayesian filtering of model parameters

classification 📊 stat.CO math.NA
keywords filtersbayesiandataestimateexamplefilteringmodelnon-linear
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In this tutorial we consider the non-linear Bayesian filtering of static parameters in a time-dependent model. We outline the theoretical background and discuss appropriate solvers. We focus on particle-based filters and present Sequential Importance Sampling (SIS) and Sequential Monte Carlo (SMC). Throughout the paper we illustrate the concepts and techniques with a practical example using real-world data. The task is to estimate the gravitational acceleration of the Earth $g$ by using observations collected from a simple pendulum. Importantly, the particle filters enable the adaptive updating of the estimate for $g$ as new observations become available. For tutorial purposes we provide the data set and a Python implementation of the particle filters.

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