Abstract
We adopt a Bayesian approach to forecast the penetration of a new product into a market. We incorporate prior information from an existing product and/or management judgments into the data analysis. The penetration curve is assumed to be a nondecreasing function of time and may be under shape constraints. Markov-chain Monte Carlo methods are proposed and used to compute the Bayesian forecasts. An example on forecasting the penetration of color television using the information from black-and-white television is provided. The models considered can also be used to address the general bioassay and reliability stress-testing problems. © 2000 Taylor & Francis Group, LLC.
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Pammer, S. E., Fong, D. K. H., & Arnold, S. F. (2000). Forecasting the penetration of a new product-a bayesian approach. Journal of Business and Economic Statistics, 18(4), 428–435. https://doi.org/10.1080/07350015.2000.10524882
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