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基于产品属性和促销的新产品生命周期曲线建模与预测:一种贝叶斯函数方法

New product life cycle curve modeling and forecasting with product attributes and promotion: A Bayesian functional approach

Production and Operations Management · 2022
被引 23
人大 AFT50UTD24ABS 4

中文导读

与京东合作,用贝叶斯函数回归方法,结合产品属性和促销活动,预测新产品上市前后的销售曲线,误差比京东现有模型降低5.35%到30.76%。

Abstract

New products are highly valued by manufacturers and retailers due to their vital role in revenue generation. Product life cycle (PLC) curves often vary by their shapes and are complicated by promotional activities that induce spiky and irregular behaviors. We collaborate with JD.com to develop a flexible PLC curve forecasting framework based on Bayesian functional regression that accounts for useful covariate information, including product attributes and promotion. The functional model treats PLC curves as target variables and includes both scalar and functional predictors, capturing time‐varying promotional activities. Harnessing the power of basis function transformation, the developed model can effectively characterize the local features and temporal evolution of sales curves. Our Bayesian framework can generate initial curve forecasts before the product launch and update the forecasts dynamically as new sales data are collected. We validate the superior performance of our method through extensive numerical experiments using three real‐world data sets. Our forecasting framework reduces the forecasting error by 5.35%–30.76% over JD.com's current model and outperforms alternative models significantly. Furthermore, the estimated promotion effect function provides useful insights into how promotional activities interact with sales curves.

产品生命周期贝叶斯统计销售预测促销分析函数数据分析