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SuperGauss (version 2.0.3)

Superfast Likelihood Inference for Stationary Gaussian Time Series

Description

Likelihood evaluations for stationary Gaussian time series are typically obtained via the Durbin-Levinson algorithm, which scales as O(n^2) in the number of time series observations. This package provides a "superfast" O(n log^2 n) algorithm written in C++, crossing over with Durbin-Levinson around n = 300. Efficient implementations of the score and Hessian functions are also provided, leading to superfast versions of inference algorithms such as Newton-Raphson and Hamiltonian Monte Carlo. The C++ code provides a Toeplitz matrix class packaged as a header-only library, to simplify low-level usage in other packages and outside of R.

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Version

Install

install.packages('SuperGauss')

Monthly Downloads

209

Version

2.0.3

License

GPL-3

Maintainer

Martin Lysy

Last Published

February 24th, 2022