I am very new to time-series analysis and have got some time-series data regarding product prices. The data set is monthly data collect since 1993 to 2014.
I have tried plotting the ACF and PACF but I do not really understand the meaning behind these plots. Furthermore, I am not sure if I need to convert the data series by differencing of order 1, then proceed to plot ACF and PACF.
I plot a lag.max of 250, since there are alot of data point, and from the ACF, there appears too many lag that are above the confidence interval. However, for PACF, there are only 2 lag that are above the condidence interval.
What is the meaning behind this? Or do I need to do differencing before the acf plot? In addition, how do I further evaluate my data in time-series plot?





The ACF of the residuals suggest a slight possibility of a minor seasonal effect but most likely not important .


Do you know of any R packages regarding intervention analysis? and how do you check/detect for seasonality in your data? Can intervention analysis or ARIMA allow us to "see" it, for example, from certain spike in ARIMA, this implies there is seasonality in our data set.
Sorry for so many doubts posted.
– Ted Aug 14 '15 at 08:52And so how do we see seasonality in the dataset? Is it just through visualisation through eyes? Thanks for your guidance – Ted Aug 18 '15 at 08:58