Time series central subspace with covariates and its application to forecasting pine sawtimber stumpage prices in the Southern United States
To model and forecast a monthly pine sawtimber (PST) stumpage price, y t , data collected across 11 southern states in the U.S., we adopt a new semiparametric approach where the first phase adopts a nonparametric method called “Time Series Central Subspace with Covariates” (TSCS-C) to extract suffic...
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Veröffentlicht in: | Journal of the Korean Statistical Society 2020, 49(2), , pp.559-577 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | To model and forecast a monthly pine sawtimber (PST) stumpage price,
y
t
, data collected across 11 southern states in the U.S., we adopt a new semiparametric approach where the first phase adopts a nonparametric method called “Time Series Central Subspace with Covariates” (TSCS-C) to extract sufficient information about
y
t
through a univariate time series
{
d
t
}
, which is a linear combination of a set of past values of
y
t
and a high dimensional covariate vector
x
t
of sale characteristics. Then,
{
d
t
}
alone is used as the predictor series to build a parametric nonlinear time series model for
y
t
. This yields a new semiparametric nonlinear time series model for
y
t
. Assessment in terms of out-of-sample forecasts of monthly PST stumpage prices show that our semiparametric model with the covariate
x
t
has the smallest average forecasting error compared to another semiparametric nonlinear time series model without
x
t
and two other parametric counterparts based on multiplicative seasonal autoregressive integrated moving average models with and without
x
t
. This data underscores the ability of our semiparametric approach to first reduce the dimensionality of
x
t
and a set of past values of
y
t
significantly using the TSCS-C nonparametric methodology and then to produce a superior nonlinear time series model. |
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ISSN: | 1226-3192 2005-2863 |
DOI: | 10.1007/s42952-019-00029-5 |