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Compound Poisson demand with price-dependent intensity for fast moving items: price optimisation and parameters estimation A. V. Kitaeva, A. O. Zhukovskaya, O. A. Zmeev

By: Kitaeva, Anna VContributor(s): Zhukovskaya, Alexandra O | Zmeev, Oleg AMaterial type: ArticleArticleSubject(s): стохастические модели | Пуассона распределение | ценообразованиеGenre/Form: статьи в журналах Online resources: Click here to access online In: International journal of production research Vol. 55, № 14. P. 4153-4163Abstract: We consider a single-period single-item inventory system. The demand is a compound Poisson process with price-dependent intensity and continuous batch size distribution. The intensity of the customers’ arrivals is sufficiently high to use a diffusion approximation of the demand process. Equations for retail price maximising of an expected profit with the optimal order quantity are obtained and an approximate solution is proposed. Numerical results illustrating the percentage of the increase in profit for linear price-intensity dependence are given. An approximate distribution of the selling time of a large order is obtained. Demand parameters estimation procedures based on two censored samples – the observed selling durations and demands – are discussed.
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Библиогр.: с. 4161-4163

We consider a single-period single-item inventory system. The demand is a compound Poisson process with price-dependent intensity and continuous batch size distribution. The intensity of the customers’ arrivals is sufficiently high to use a diffusion approximation of the demand process. Equations for retail price maximising of an expected profit with the optimal order quantity are obtained and an approximate solution is proposed. Numerical results illustrating the percentage of the increase in profit for linear price-intensity dependence are given. An approximate distribution of the selling time of a large order is obtained. Demand parameters estimation procedures based on two censored samples – the observed selling durations and demands – are discussed.

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