See more from this Session: Symposium--Time Series Analysis and Forecasting in Agriculture Research
Data from LTE are in the form of repeated measurements on each treated plot. Repeated-measures data present a special challenge for statistical analysis. Among the most common approaches are: (i) the summary statistics, (ii) multivariate ANOVAs, and (iii) modelling the correlation structure. The summary statistics approach to repeated measures is to reduce the multiple measurements on each plot to one or more summary statistics that measure some phenomenon of interest. One analysis approach that has gained popularity in recent years is to model the serial correlation associated with the repeated measures, and then to base inferences on a mixed model ANOVA that incorporates the estimated serial correlation structure. Serial correlation here refers to the correlation between measurements taken on the same plot across time. Stability analysis is a suitable method for the interpretation of the significant experiment ´ treatment interactions observed in variance analysis of long-term experiments. Time series analysis and forecasting are important tools in the interpretation of long-term data.
See more from this Session: Symposium--Time Series Analysis and Forecasting in Agriculture Research