预测建模方法解码消费者在食品供应链中采用节能技术的意图

Brintha Rajendran, Manivannan Babu, Veeramani Anandhabalaji
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引用次数: 0

摘要

在食品供应链(FSC)中向节能实践过渡对于解决可持续性和成本效益的双重要求至关重要。随着消费者越来越意识到他们的食品选择对环境的影响,他们支持节能技术(EET)的意愿已成为塑造可持续FSC未来的关键因素。本研究实证调查了消费者购买能源足迹减少的食品的意愿和愿望,利用机器学习(ML)算法预测FSC内的消费者偏好。使用关联规则挖掘(ARM)来揭示消费者意图中的关键模式,同时比较了多种ML算法,以确定预测支付意愿的最有效算法。结果表明,随机森林算法的准确率最高,达到82%,显著优于其他模型。这些发现强调了ML在完善营销策略和运营决策方面的潜力,促进了FSC更广泛地采用EET (EET-FSC)。该研究为寻求通过数据驱动决策来加强可持续性努力的行业专业人士提供了宝贵的启示。该研究有助于通过改进决策、资源分配和可持续性举措来优化FSC。未来的研究方向包括扩大数据集范围,探索先进的ML技术,以及研究EET-FSC的经济影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A predictive modelling approach to decoding consumer intention for adopting energy-efficient technologies in food supply chains
The transition towards energy-efficient practices in the food supply chain (FSC) is essential for addressing the dual imperatives of sustainability and cost-effectiveness. As consumers become increasingly aware of the environmental impact of their food choices, their willingness to support energy-efficient technologies (EET) has become a critical factor in shaping the future of sustainable FSC. This study empirically investigates consumer intention and desire to pay for food products characterized by a reduced energy footprint, utilizing machine learning (ML) algorithms to predict consumer preferences within the FSC. Association rule mining (ARM) was employed to uncover key patterns in consumer intentions, while multiple ML algorithms were compared to identify the most effective algorithm for predicting willingness to pay. The results reveal that the Random Forest algorithm achieved the highest accuracy at 82%, significantly outperforming other models. These findings underscore the potential of ML to refine marketing strategies and operational decisions, facilitating the broader adoption of EET within the FSC (EET-FSC). The study offers valuable implications for industry professionals seeking to enhance sustainability efforts through data-driven decision-making. The research contributes to optimizing FSC through improved decision-making, resource allocation, and sustainability initiatives. Future research directions include expanding the dataset scope, exploring advanced ML techniques, and examining the economic impacts of EET-FSC.
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