年龄结构商誉的最优投资

Silvia Faggian, Grosset Luca
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引用次数: 2

摘要

市场细分是现代市场营销的核心策略,基于消费者年龄的年龄细分在实践中非常常见。基于年龄的细分可以使细分人群的构成随时间的变化而变化,只能通过动态广告模型进行研究。在这里,我们假设一家公司希望在一个年龄细分的市场中以最佳方式推广和销售单一产品,我们使用无限维的Nerlove-Arrow商誉作为状态变量来建模该产品的认知度。假设在无限的时间范围内,我们使用无限维的动态规划技术来描述长期的最优广告努力和最优商誉路径。最优广告努力的一个有趣特征是,由于细分的时间演变,与目标市场中考虑的细分相关的预期效应。我们在两种不同的情况下分析了这种效应:第一种情况下,决策者可以在不同的时间选择针对不同年龄段的广告流,而第二种情况下,决策者只能在给定的年龄谱下决定广告媒介的激活水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Investment in Age-Structured Goodwill
Segmentation is a core strategy in modern marketing, and age-specific segmentation based on the age of the consumers is very common in practice. Age-specific segmentation enables the change of the segments composition during time and can be studied only by means of dynamic advertising models. Here we assume that a firm wants to optimally promote and sell a single product in an age-segmented market and we model the awareness of this product using an infinite dimensional Nerlove-Arrow goodwill as a state variable. Assuming an infinite time horizon, we use some dynamic programming techniques in infinite dimension to characterize both the optimal advertising effort and the optimal goodwill path in the long run. An interesting feature of the optimal advertising effort is an anticipation effect with respect to the segments considered in the target market, due to time evolution of the segmentation. We analyze this effect in two different scenarios: in the first, the decision makers can choose the advertising flow directed to different age segments at different times, while in the second they can only decide the activation level of an advertising medium with a given age-spectrum.
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