Fast Robust Methods for Singular State-Space Models

03/07/2018
by   Jonathan Jonker, et al.
0

State-space models are used in a wide range of time series analysis formulations. Kalman filtering and smoothing are work-horse algorithms in these settings. While classic algorithms assume Gaussian errors to simplify estimation, recent advances use a broader range of optimization formulations to allow outlier-robust estimation, as well as constraints to capture prior information. Here we develop methods on state-space models where either innovations or error covariances may be singular. These models frequently arise in navigation (e.g. for `colored noise' models or deterministic integrals) and are ubiquitous in auto-correlated time series models such as ARMA. We reformulate all state-space models (singular as well as nonsinguar) as constrained convex optimization problems, and develop an efficient algorithm for this reformulation. The convergence rate is locally linear, with constants that do not depend on the conditioning of the problem. Numerical comparisons show that the new approach outperforms competing approaches for nonsingular models, including state of the art interior point (IP) methods. IP methods converge at superlinear rates; we expect them to dominate. However, the steep rate of the proposed approach (independent of problem conditioning) combined with cheap iterations wins against IP in a run-time comparison. We therefore suggest that the proposed approach be the default choice for estimating state space models outside of the Gaussian context, regardless of whether the error covariances are singular or not.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/19/2013

Sparse/Robust Estimation and Kalman Smoothing with Nonsmooth Log-Concave Densities: Modeling, Computation, and Theory

We introduce a class of quadratic support (QS) functions, many of which ...
research
02/19/2019

Exact Kalman Filter for Binary Time Series

Non-Gaussian state-space models arise routinely in several applications....
research
08/05/2019

StateSpaceModels.jl: a Julia Package for Time-Series Analysis in a State-Space Framework

StateSpaceModels.jl is an open-source Julia package for modeling, foreca...
research
11/20/2021

Adaptive State-Space Multitaper Spectral Estimation

Short-time Fourier transform (STFT) is the most common window-based appr...
research
06/14/2013

Sparse Auto-Regressive: Robust Estimation of AR Parameters

In this paper I present a new approach for regression of time series usi...
research
10/30/2019

Efficient Robust Parameter Identification in Generalized Kalman Smoothing Models

Dynamic inference problems in autoregressive (AR/ARMA/ARIMA), exponentia...
research
11/01/2021

A Novel 1D State Space for Efficient Music Rhythmic Analysis

Inferring music time structures has a broad range of applications in mus...

Please sign up or login with your details

Forgot password? Click here to reset