Time series - information and prediction (Q918613)
From MaRDI portal
| This is the item page for this Wikibase entity, intended for internal use and editing purposes. Please use this page instead for the normal view: Time series - information and prediction |
scientific article; zbMATH DE number 4159923
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Time series - information and prediction |
scientific article; zbMATH DE number 4159923 |
Statements
Time series - information and prediction (English)
0 references
1990
0 references
A time series \(Y_ t\) can be transformed into another time series \(V_ t\) by means of a linear transformation. Should the matrix of that transformation have an inverse, the pair \((Y_ t,V_ t)\) is called invertible. Based on the decomposition procedure for stationary time series it is shown that a sufficient condition for the invertibility of the pair \((Y_ t,V_ t)\) is that \(V_ t\) be the first component of \(Y_ t\), i.e. \(V_ t=V^ 1_ t\). By the invertibility property \(V^ 1_ t\) can be used for forecasting, that is, predictions are made on \(V^ 1_ t\) which is then transformed into \(Y_ t\). Since the first component depends on a parameter \(\alpha\), i.e. \(V^ 1_ t=V^ 1_ t(\alpha)\), a procedure is proposed that allows us to find the optimal parameter value, \(\alpha =\alpha_ 0\). Thus, it is shown that better forecasting accuracy may result by fitting a simple autoregression to the first component \(V^ 1_ t(\alpha_ 0)\), than if the process \(Y_ t\) were described by a more elaborate model. Model building is therefore no longer a prerequisite in forecasting. The forecasting procedure is then extended so as to cope with the homogeneous nonstationary case, and examples are given to illustrate the forecasting accuracy as compared to customary model-based approaches.
0 references
spreading rate concept
0 references
time series
0 references
linear transformation
0 references
decomposition procedure
0 references
invertibility
0 references
predictions
0 references
autoregression
0 references
homogeneous nonstationary case
0 references