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Predicting the amount individuals withdraw at cash machines using a random effects multinomial model

机译:使用随机效应多项式模型预测个人在取款机上的取款额

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摘要

Retail finance organizations use data on past behaviour to make predictions for customer value management strategies. Random-effects models, where each individual has a behavioural pattern drawn from an overall population distribution, are a natural statistical form in this context. The random effects models in this paper are used to predict how much individuals withdraw at a single cash machine visit. A multinomial distribution is taken for the distribution of amounts and the random effects are modelled by a Dirichlet distribution or the empirical distribution of individual maximum likelihood fits. A third model extends the multinomial distribution by incorporating a form of serial dependence and uses an empirical distribution for the random effects. Several prediction tests on a sample of 5000 UK high-street bank accounts find that the greatest benefit from the models is for accounts with a small number of past transactions; that little information may be lost by binning and that the Dirichlet distribution might overestimate the probability of previously unobserved withdrawal amounts. The empirical distribution of random effects is found to perform well because there are a large number of individual accounts.
机译:零售金融组织使用有关过去行为的数据来预测客户价值管理策略。在这种情况下,随机效应模型是一种自然的统计形式,其中每个人都有从总体人口分布中得出的行为模式。本文中的随机效应模型用于预测单次取款机访问时有多少个人提款。数量分布采用多项式分布,随机效应通过Dirichlet分布或单个最大似然拟合的经验分布建模。第三个模型通过合并一种形式的序列依赖性扩展了多项式分布,并对随机效应使用了经验分布。对5000个英国高街银行帐户的样本进行的几个预测测试发现,该模型的最大好处是过去交易数量很少的帐户;分箱可能会丢失很少的信息,而狄利克雷分布可能会高估以前未观察到的提款金额的可能性。由于存在大量的个人账户,因此随机效应的经验分布表现良好。

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