In-season retail sales forecasting using survival models

ORiON Pub Date : 2014-11-17 DOI:10.5784/30-2-153
M. Hattingh, DW Uys
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引用次数: 3

Abstract

A large South African retailer (hereafter referred to as the Retailer) faces the problem of selling out inventory within a specified finite time horizon by dynamically adjusting product prices, and simultaneously maximising revenue. Consumer demand for the Retailer's fashion merchandise is uncertain and the identification of products eligible for markdown is therefore problematic. In order to identify products that should be marked down, the Retailer forecasts future sales of new products. With the aim of improving on the Retailer's current sales forecasting method, this study investigates statistical techniques, viz. classical time series analysis (Holt's smoothing method) and survival analysis. Forecasts are made early in the product life cycle and results are compared to the Retailer's existing forecasting method. Based on the mean squared errors of predictions resulting from each method, the most accurate of the methods investigated is survival analysis.
利用生存模型预测应季零售销售
一家大型南非零售商(以下简称“零售商”)面临着在指定的有限时间内通过动态调整产品价格并同时最大化收入来销售库存的问题。消费者对零售商的时尚商品的需求是不确定的,因此确定有资格降价的产品是有问题的。为了确定应该降价的产品,零售商预测新产品的未来销售。为了改进零售商现有的销售预测方法,本研究研究了统计技术,即经典的时间序列分析(霍尔特平滑法)和生存分析。在产品生命周期的早期进行预测,并将结果与零售商现有的预测方法进行比较。基于每种方法预测结果的均方误差,最准确的方法是生存分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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