mintaautokorrelációval
Mintaautokorrelációval, often referred to as sample autocorrelation, is a statistical measure used to quantify the linear dependence between a time series and its lagged values. It is a crucial concept in time series analysis, particularly in identifying the underlying structure and patterns within data. The sample autocorrelation function (SACF) at lag k is calculated by correlating the time series with a version of itself shifted k time periods into the past or future.
The value of the sample autocorrelation at a given lag ranges from -1 to 1. A positive
Understanding sample autocorrelation is essential for model identification, such as in the Box-Jenkins methodology for ARIMA