Singular Spectrum Analysis (SSA) is an increasingly popular time series filtering and forecasting
technique. Owing to its widespread applications in a variety of fields, there is a growing interest
towards improving its forecasting capabilities. The proposed Recurrent SSAR approach is
referred to as Weighted SSAR (W:SSAR), and we propose using a weighting algorithm for
weighting the coefficients of the Linear Recurrent Relation (LRR). The performance of forecasts
from the W:SSAR approach are compared with forecasts from the established SSAR. We
exploit real data and various simulated time series for the comparison, so as to provide the reader
with more conclusive findings. Our results confirm that the W:SSAR can provide comparatively
more accurate forecasts and is indeed a viable solution for improving forecasts by SSA.