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Modified: May 08, 2005

Artificial Neural Networks (ANNs)
[Conjoint Analysis] [Service eCommerce] [Knowledge Mgmt.] [Neural Networks] [Relationship Mktg.] [Supply Chain Mgmt.] [Tourism Demand] [Tourism Forecasting]

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