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Guiding Public Health Policy by Using Grocery Transaction Data to Predict Demand for Unhealthy Beverages

机译:通过使用杂货交易数据预测对不健康饮料的需求来指导公共卫生政策

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Sugar-Sweetened Beverages (SSB) are the primary source of artificially added sugar and cause many chronic diseases. Taxation of SSB has been proposed, but limited evidence exists to guide this public health policy. Grocery transaction data, with price, discounting and other product attributes, present an opportunity to evaluate the likely effects of taxation policy. Sales are non-linearly associated with price and are affected by the prices of multiple competing brands. We evaluated the predictive performance of Boosted Decision Tree Regression (B-DTR) and Deep Neural Networks (DNN) that account for the non-linearity and competition, and compared their performance to a benchmark regression, the Least Absolute Shrinkage and Selection Operator (LASSO). B-DTR and DNN showed a lower Mean Squared Error (MSE) of prediction in the sales of major SSB brands in comparison to LASSO, indicating a superior accuracy in predicting the effectiveness of SSB taxation. We have demonstrated how machine learning methods applied to large transactional data from grocery stores can provide evidence to guide public health policy.
机译:含糖饮料(SSB)是人为添加的糖的主要来源,会引起许多慢性疾病。已提议对SSB征税,但指导该公共卫生政策的证据有限。具有价格,折扣和其他产品属性的杂货交易数据为评估税收政策的可能影响提供了机会。销售额与价格呈非线性关系,并受多个竞争品牌的价格影响。我们评估了助推决策树回归(B-DTR)和深度神经网络(DNN)预测非线性和竞争的预测性能,并将其性能与基准回归,最小绝对收缩和选择算子(LASSO)进行了比较)。与LASSO相比,B-DTR和DNN在主要SSB品牌的销售中显示出较低的预测均方误差(MSE),表明在预测SSB税的有效性方面具有较高的准确性。我们已经证明了将机器学习方法应用于杂货店的大型交易数据可以如何为指导公共卫生政策提供证据。

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