Miguel Botto-Tobar (ed.); Lida Barba-Maggi (ed.); Javier González-Huerta (ed.); Patricio Villacrés-Cevallos (ed.); S. Gómez Springer (2018) Pehmeäkantinen kirja
Linda Felver; Barbara Gaines; Marsha Heims; Kathie Lasater; Gary Laustsen; Maggie Lynch; Launa Rae Mathews; Deb Messecar National League for Nursing,U.S. (2012) Pehmeäkantinen kirja
Cath Jones; Elizabeth Dale; Helen Harvey; Maggie Freeman; Barbara Catchpole; Jill Atkins; Stephen (Stephen Rickar Rickard Ransom Publishing (2019) Monipakkaus
Springer Sivumäärä: 124 sivua Asu: Kovakantinen kirja Julkaisuvuosi: 2018, 31.08.2018 (lisätietoa) Kieli: Englanti
This book presents two new decomposition methods to decompose a time series in intrinsic components of low and high frequencies. The methods are based on Singular Value Decomposition (SVD) of a Hankel matrix (HSVD). The proposed decomposition is used to improve the accuracy of linear and nonlinear auto-regressive models.
Linear Auto-regressive models (AR, ARMA and ARIMA) and Auto-regressive Neural Networks (ANNs) have been found insufficient because of the highly complicated nature of some time series. Hybrid models are a recent solution to deal with non-stationary processes which combine pre-processing techniques with conventional forecasters, some pre-processing techniques broadly implemented are Singular Spectrum Analysis (SSA) and Stationary Wavelet Transform (SWT). Although the flexibility of SSA and SWT allows their usage in a wide range of forecast problems, there is a lack of standard methods to select their parameters.
The proposed decomposition HSVD and Multilevel SVD are described in detail through time series coming from the transport and fishery sectors. Further, for comparison purposes, it is evaluated the forecast accuracy reached by SSA and SWT, both jointly with AR-based models and ANNs.