2019
DOI: 10.48550/arxiv.1910.13674
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Efficient Robust Parameter Identification in Generalized Kalman Smoothing Models

Abstract: Dynamic inference problems in autoregressive (AR/ARMA/ARIMA), exponential smoothing, and navigation are often formulated and solved using state-space models (SSM), which allow a range of statistical distributions to inform innovations and errors. In many applications the main goal is to identify not only the hidden state, but also additional unknown model parameters (e.g. AR coefficients or unknown dynamics).We show how to efficiently optimize over model parameters in SSM that use smooth process and measuremen… Show more

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