Deriving domain knowledge from unstructured information: A forecasting framework based on judgmental adjustment approach
Abstract
The integration of quantitative and judgmental
forecasting methods have been increasingly applied to give better
performance to forecast. Judgmental adjustment is one instance
of integrating both methods and it has been gaining recognition
among forecasting practitioners because of its quick and
convenient way to perform forecast. However, many criticize this
approach because of its disadvantages, i.e. bias and inconsistency
which are associated to the human. We are proposing a forecasting
framework that aids the process of judgmental adjustment by
providing supportive information to reduce the effect of bias and
inconsistency. The proposed framework comprises five different
modules, i.e. time series graphical display, quantitative forecast,
news-based supportive information, user comment and similaritybased
pattern search.
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