Understanding the effects of pharmaceutical promotion: A neural network approach guided by genetic algorithm-partial least squares

Understanding the effects of pharmaceutical promotion: A neural network approach guided by genetic algorithm-partial least squares

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Article ID: iaor200964606
Country: Netherlands
Volume: 11
Issue: 4
Publication Date: Dec 2008
Journal: Health Care Management Science
Authors: ,
Keywords: heuristics: genetic algorithms, marketing
Abstract:

With escalating healthcare costs and increasing concerns about optimizing use of medicine, there is an unresolved debate over years around the potential impact of pharmaceutical promotion on physicians' prescribing behaviors. What should be the appropriate balance of promotion dollars to physicians? We use three major brands in the US antibiotic universe to explore this issue, presenting a theoretical framework for better understanding the cause-and-effect relationship between common promotional spending and prescription responsiveness. Using simulations we demonstrate that neural networks guided by genetic algorithm-partial least squares is able to provide managers with better understanding of physicians' prescribing activities without an appreciably lower predictive accuracy when compared to that obtained by a standalone neural network modeling.

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