Proposed in
this paper is a fuzzy inference engine (FIE) intended to ascertain ex ante
forecast details on a dependent variable y, based on a set of ex post
information gathered on y in technoeconomic contexts. The FIE constructedthereof conforms to an artificial neural network (ANN), and, the ANN outcome
deduced yields the forecasting on the temporal evolution of y(t) in the ex ante
time-frame (t) vis-à-vis a set of ex post data availed. The ex post data
available is however, sparse and inadequate for robust forecasting. Therefore,
its cardinality is first improved and sufficient number of such sets is
obtained as pseudoreplicates via statistical bootstrapping.
The test ANN then
uses these pseudoreplicates as training inputs toward robust
prediction/forecast schedules. Further, the pseudoreplicated sets areconsidered as overlapping and hence, fuzzy. Therefore, the test ANN adopted is
relevant to a FIE realization. Real-world technoeconomic data set on ADSL
sales-cum-facility details at a wire-center in a telecommunication company
(telco) is used to test the efficacy of the FIE proposed and validate the
forecasting method described.

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