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Simplified Methods of fitting the truncated Negative Binomial Distribution: A model that allows for Non users

机译:拟合截断负二项式分布的简化方法:允许非用户使用的模型

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摘要

Retailers monitor customer buying-behaviour as a measure of their stores’ success. However, summary measures such as the total buying-behaviour provides little insight about individual-level shopping behaviour. Additionally, behaviour may evolve over time, especially in a changing environment like the Internet. This research developed a useful stochastic model for analysing period to period fluctuations in sales thereby generalizing the model proposed by Goodhardt and Ehrenberg to allow for nonbuyers of the product category. So as the composition of the customer population changes (e.g., as customers mature or as large numbers of new and inexperienced Internet shoppers enter the market), the overall degree of buyer heterogeneity that each store faces may change. A systematic bias in their simple negative binomial distribution [NBD] model is demonstrated. If the proportion of nonbuyers is large, the simple model will be wrong. As a result, frequent buyers often comprise the preferred target segment. We find evidence supporting the fact that people who visit a store more frequently are more likely to buy. We also gives explicit formula and directions that allow a moderately analyst to perform his own conditional trend analysis.
机译:零售商会监控客户的购买行为,以此来衡量商店的成功。但是,诸如总体购买行为之类的汇总指标几乎无法提供有关个人级别购物行为的见解。此外,行为可能会随着时间而演变,尤其是在不断变化的环境(如Internet)中。这项研究开发了一种有用的随机模型,用于分析销售期间的周期性波动,从而推广了Goodhardt和Ehrenberg提出的模型,以允许产品类别的非购买者。因此,随着客户群体的构成发生变化(例如,随着客户的成熟或大量新手和缺乏经验的互联网购物者进入市场),每家商店所面临的总体买家异质性程度可能会发生变化。他们的简单负二项式分布[NBD]模型存在系统性偏差。如果非购买者的比例很大,则简单的模型将是错误的。结果,经常购买者通常构成了首选目标群体。我们发现证据支持这样的事实,即经常光顾商店的人更有可能购物。我们还给出了明确的公式和方向,使中度分析师可以执行自己的条件趋势分析。

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