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In the
statistical analysis Statistical inference is the process of using data analysis to infer properties of an underlying probability distribution.Upton, G., Cook, I. (2008) ''Oxford Dictionary of Statistics'', OUP. . Inferential statistical analysis infers properties of ...
of
time series In mathematics, a time series is a series of data points indexed (or listed or graphed) in time order. Most commonly, a time series is a sequence taken at successive equally spaced points in time. Thus it is a sequence of discrete-time data. ...
, a trend-stationary process is a
stochastic process In probability theory and related fields, a stochastic () or random process is a mathematical object usually defined as a family of random variables in a probability space, where the index of the family often has the interpretation of time. Sto ...
from which an underlying trend (function solely of time) can be removed, leaving a stationary process. The trend does not have to be linear. Conversely, if the process requires differencing to be made stationary, then it is called difference stationary and possesses one or more
unit root In probability theory and statistics, a unit root is a feature of some stochastic processes (such as random walks) that can cause problems in statistical inference involving time series models. A linear stochastic process has a unit root if ...
s. Those two concepts may sometimes be confused, but while they share many properties, they are different in many aspects. It is possible for a time series to be non-stationary, yet have no unit root and be trend-stationary. In both unit root and trend-stationary processes, the mean can be growing or decreasing over time; however, in the presence of a shock, trend-stationary processes are mean-reverting (i.e. transitory, the time series will converge again towards the growing mean, which was not affected by the shock) while unit-root processes have a permanent impact on the mean (i.e. no convergence over time).


Formal definition

A process is said to be trend-stationary if :Y_t = f(t) + e_t, where ''t'' is time, ''f'' is any function mapping from the reals to the reals, and is a stationary process. The value f(t) is said to be the trend value of the process at time ''t''.


Simplest example: stationarity around a linear trend

Suppose the variable ''Y'' evolves according to :Y_t = a \cdot t + b + e_t where ''t'' is time and ''e''''t'' is the error term, which is hypothesized to be
white noise In signal processing, white noise is a random signal having equal intensity at different frequencies, giving it a constant power spectral density. The term is used with this or similar meanings in many scientific and technical disciplines, i ...
or more generally to have been generated by any stationary process. Then one can useNelson, Charles R. and Plosser, Charles I. (1982), "Trends and Random Walks in Macroeconomic Time Series: Some Evidence and Implications," '' Journal of Monetary Economics'', 10, 139–162.Hegwood, Natalie, and Papell, David H. "Are real GDP levels trend, difference, or regime-wise trend stationary? Evidence from panel data tests incorporating structural change." http://www.uh.edu/~dpapell/realgdp.pdf Lucke, Bernd. "Is Germany‘s GDP trend-stationary? A measurement-with-theory approach."
linear regression In statistics, linear regression is a statistical model, model that estimates the relationship between a Scalar (mathematics), scalar response (dependent variable) and one or more explanatory variables (regressor or independent variable). A mode ...
to obtain an estimate \hat of the true underlying trend slope a and an estimate \hat of the underlying intercept term ''b''; if the estimate \hat is significantly different from zero, this is sufficient to show with high confidence that the variable ''Y'' is non-stationary. The residuals from this regression are given by :\hat_t = Y_t - \hat \cdot t - \hat. If these estimated residuals can be statistically shown to be stationary (more precisely, if one can reject the hypothesis that the true underlying errors are non-stationary), then the residuals are referred to as the detrended data,http://www.duke.edu/~rnau/411diff.htm "Stationarity and differencing" and the original series is said to be trend-stationary even though it is not stationary.


Stationarity around other types of trend


Exponential growth trend

Many economic time series are characterized by
exponential growth Exponential growth occurs when a quantity grows as an exponential function of time. The quantity grows at a rate directly proportional to its present size. For example, when it is 3 times as big as it is now, it will be growing 3 times as fast ...
. For example, suppose that one hypothesizes that
gross domestic product Gross domestic product (GDP) is a monetary measure of the total market value of all the final goods and services produced and rendered in a specific time period by a country or countries. GDP is often used to measure the economic performanc ...
is characterized by stationary deviations from a trend involving a constant growth rate. Then it could be modeled as :\text_t = Be^U_t with Ut being hypothesized to be a stationary error process. To estimate the parameters a and ''B'', one first takes the
natural logarithm The natural logarithm of a number is its logarithm to the base of a logarithm, base of the e (mathematical constant), mathematical constant , which is an Irrational number, irrational and Transcendental number, transcendental number approxima ...
(ln) of both sides of this equation: : \ln (\text_t) = \ln B + at + \ln (U_t). This log-linear equation is in the same form as the previous linear trend equation and can be detrended in the same way, giving the estimated (\ln U)_t as the detrended value of (\ln \text)_t , and hence the implied U_t as the detrended value of \text_t, assuming one can reject the hypothesis that (\ln U)_t is non-stationary.


Quadratic trend

Trends do not have to be linear or log-linear. For example, a variable could have a quadratic trend: :Y_t = a \cdot t + c \cdot t^2 + b + e_t. This can be regressed linearly in the coefficients using ''t'' and ''t''2 as regressors; again, if the residuals are shown to be stationary then they are the detrended values of Y_t.


See also

* Trend estimation * Decomposition of time series * KPSS test


Notes

{{reflist Time series