Baseline prediction of point of sales data for trade promotion optimization

K. Sundararaman, Jinka Parthasarathi, G. S. V. Rao, S. N. Kumar
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引用次数: 2

Abstract

Baseline prediction is an important to devise marketing strategy for a consumer goods product. Simulation techniques, time series algorithms are often used to generate baseline for the future. However the algorithm that fits a particular point of sales (POS) data varies according to the datasets. Sample set of point of sales data were simulated under different conditions and constraints incorporating seasonal and non seasonal trends. This study has compared the performance of two time series models namely Winters model and linear exponential smoothening on the simulated datasets. Winters model was found to be a better fit for the point of sales data that were used for testing.
对销售点数据进行基线预测,优化贸易促进
基线预测对消费品产品的营销策略设计具有重要意义。模拟技术、时间序列算法常用于生成未来的基线。然而,适合特定销售点(POS)数据的算法因数据集而异。在不同的条件和约束下模拟了销售点数据的样本集,包括季节性和非季节性趋势。本研究比较了温特斯模型和线性指数平滑两种时间序列模型在模拟数据集上的性能。发现温特斯模型更适合用于测试的销售点数据。
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