This study presents a neural network & web-based decision support system (DSS) for foreign exchange (forex) forecasting and
trading decision, which is adaptable to the needs of financial organizations and individual investors. In this study, we integrate
the back-propagation neural network (BPNN)- based forex rolling forecasting system to accurately predict the change in direction
of daily exchange rates, and the Web-based forex trading decision support system to obtain forecasting data and provide some
investment decision suggestions for financial practitioners. This research reveals the structure of the DSS by the description
of an integrated framework, and meantime we find that the DSS is integrated, user-oriented by its implementation, and practical
applications reveal that this DSS demonstrates very high forecasting accuracy and its trading recommendations are reliable.