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Using daily store-level data to understand price promotion effects in a semiparametric regression model

机译:使用每日商店级别的数据来了解半参数回归模型中的价格促销效果

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摘要

Though it has been widely reported in the marketing literature that temporary price discounts generate substantial short-term sales increase, the shape of the deal effect curve constitutes a key research topic, for which there are still limited empirical results. To address this issue, a semiparametric regression approach is used to model the complex nature of this phenomenon. Our model is developed at the brand level using daily store-level scanner-data, which allows the study of several nonreported promotional effects, such as the influence of the day of the week both in promotional and nonpromotional periods. The results show that the weekend is the most effective in increasing promotional sales and that asymmetric and neighborhood effects hold. However, 9-ending promotional prices are not impactful.
机译:尽管在市场营销文献中已广泛报道临时价格折扣会产生大量的短期销售增长,但交易效果曲线的形状构成了一个关键的研究主题,其实证结果仍然有限。为了解决这个问题,使用半参数回归方法对这种现象的复杂性进行建模。我们的模型是使用每日商店级别的扫描器数据在品牌级别开发的,该数据可以研究几种未报告的促销效果,例如促销和非促销时段中星期几的影响。结果表明,周末是最有效的促销活动,不对称和邻里效应依然存在。但是,九端促销价格没有影响。

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