Regularized Predictive Models for Beef Eating Quality of Individual Meals

G. Tarr, I. Wilms
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Abstract

Faced with changing markets and evolving consumer demands, beef industries are investing in grading systems to maximise value extraction throughout their entire supply chain. The Meat Standards Australia (MSA) system is a customer-oriented total quality management system that stands out internationally by predicting quality grades of specific muscles processed by a designated cooking method. The model currently underpinning the MSA system requires laborious effort to estimate and its prediction performance may be less accurate in the presence of unbalanced data sets where many"muscle x cook"combinations have few observations and/or few predictors of palatability are available. This paper proposes a novel predictive method for beef eating quality that bridges a spectrum of muscle x cook-specific models. At one extreme, each muscle x cook combination is modelled independently; at the other extreme a pooled predictive model is obtained across all muscle x cook combinations. Via a data-driven regularization method, we cover all muscle x cook-specific models along this spectrum. We demonstrate that the proposed predictive method attains considerable accuracy improvements relative to independent or pooled approaches on unique MSA data sets.
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单餐牛肉食用质量的正则化预测模型
面对不断变化的市场和不断变化的消费者需求,牛肉行业正在投资分级系统,以最大限度地提高整个供应链的价值提取。澳大利亚肉类标准局(MSA)系统是一个以客户为导向的全面质量管理系统,通过预测指定烹饪方法加工的特定肌肉的质量等级,在国际上脱颖而出。目前支撑MSA系统的模型需要花费大量的精力来估计,并且在存在不平衡数据集的情况下,其预测性能可能不太准确,在这种情况下,许多“肌肉x烹饪”组合几乎没有观测结果和/或几乎没有适口性的预测因子。本文提出了一种新的牛肉食用质量预测方法,该方法桥接了一系列特定于肌肉x烹饪的模型。在一个极端,每个肌肉x烹饪组合都是独立建模的;在另一个极端,在所有肌肉x烹饪组合中获得了合并预测模型。通过数据驱动的正则化方法,我们覆盖了该谱上所有肌肉x库克特定的模型。我们证明,相对于独特MSA数据集上的独立或合并方法,所提出的预测方法获得了相当大的准确性改进。
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