论文标题
如何向他人学习:使用加性回归模型转移机器学习以改善销售预测
How to Learn from Others: Transfer Machine Learning with Additive Regression Models to Improve Sales Forecasting
论文作者
论文摘要
在各种业务情况下,引入或改进机器学习方法会受到损害,因为这些方法无法利用现有的分析模型。但是,在许多情况下,可能已经在其他地方解决了类似问题,但是由于隐私障碍,累积的分析知识不能利用以解决新问题。出于针对类似实体的销售预测的特殊目的,我们提出了一种基于加法回归模型的转移机学习方法,该方法使新实体从现有实体的模型中受益。我们在多个餐厅分支机构的丰富多年数据集上评估了方法。我们将选项区分开来,将模型从一个分支传输到另一个分支(“零射击”)或转移和调整它们。我们针对几个预测基准分析了可行性和性能。结果表明了利用共同可用的分析知识的方法的潜力。因此,我们贡献了一种可以推广的方法,该方法尤其是销售预测,尤其是特定用例。此外,我们证明了它对典型用例的可行性,以及提高预测质量的潜力。这些结果应该为学术界提供信息,因为它们有助于利用各个实体的知识,并在行业中立即实施实际应用。
In a variety of business situations, the introduction or improvement of machine learning approaches is impaired as these cannot draw on existing analytical models. However, in many cases similar problems may have already been solved elsewhere-but the accumulated analytical knowledge cannot be tapped to solve a new problem, e.g., because of privacy barriers. For the particular purpose of sales forecasting for similar entities, we propose a transfer machine learning approach based on additive regression models that lets new entities benefit from models of existing entities. We evaluate the approach on a rich, multi-year dataset of multiple restaurant branches. We differentiate the options to simply transfer models from one branch to another ("zero shot") or to transfer and adapt them. We analyze feasibility and performance against several forecasting benchmarks. The results show the potential of the approach to exploit the collectively available analytical knowledge. Thus, we contribute an approach that is generalizable beyond sales forecasting and the specific use case in particular. In addition, we demonstrate its feasibility for a typical use case as well as the potential for improving forecasting quality. These results should inform academia, as they help to leverage knowledge across various entities, and have immediate practical application in industry.