History tells that every human being desire to foresee, comprehend and
ultimately explore the future. Multi-step ahead forecasting is a
challenging research area due to propagation of forecasting errors with
the increase of forecasting steps. Two interesting architectures based
on nearest neighbor method are proposed. Importance of selection
criteria in nearest neighbor search plays an important role in
multi-step ahead forecasting. Effect of up-sampling of time series and
change of effective embedding dimension on the forecasting errors is
studied in detail. Effect of five interpolation schemes for up-sampling
and comparison of three distance metrics for nearest neighbor search on
forecasting performance is also included. A hybrid selection criterion
of nearest neighbor with avoidance of biasing is found to be very
effective in multi-step ahead forecasting. In the end, predictability
analysis of proposed algorithms on ten benchmark time series highlight
the effectiveness of the forecasting algorithms in the scenarios of
series collected from different kinds of dynamic systems. This book is
based on the PhD work of Mr. Rahat Abbas.