SAMoSSA: Multivariate Singular Spectrum Analysis with Stochastic Autoregressive Noise
–Neural Information Processing Systems
The well-established practice of time series analysis involves estimating deterministic, non-stationary trend and seasonality components followed by learning the residual stochastic, stationary components. Recently, it has been shown that one can learn the deterministic non-stationary components accurately using multivariate Singular Spectrum Analysis (mSSA) in the absence of a correlated stationary component; meanwhile, in the absence of deterministic non-stationary components, the Autoregressive (AR) stationary component can also be learnt readily, e.g.
Neural Information Processing Systems
Dec-24-2025, 02:27:24 GMT
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