粮食需求预测的可解释性堆栈集成模型

Sujoy Chatterjee
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引用次数: 0

摘要

摘要:需求预测方法是利用以前的数据来估计客户将要购买的产品数量。包括食品行业和零售业在内的许多行业都采用了这种预测方法。在餐馆里,预测是必不可少的,因为大多数基础产品的保质期是有限的。需求受到各种公开和隐蔽环境的影响,包括季节、地区等。在本研究中,机器学习使用多个数据源,如内部和外部数据,根据需求预测各种商品的供应。尽管各种各样的机器学习模型已经被应用于预测需求,但在解释模型的黑箱性质方面所做的工作非常有限。在这项工作中,试图解释模型的可解释性。在这里,我们首先将粮食需求预测问题作为回归问题提出,然后应用各种机器学习模型来预测粮食需求。然后,采用基于堆栈的集成模型来解决来自基础模型的各种问题,从而实现更好的预测。最后,利用有效的学习技术,如局部可解释模型不可知论解释(LIME)来解决可解释性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Stack-based Ensemble Model with Explainability for Food Demand Forecasting
Ahstract- The demand forecasting method involves estimating the number of products that customers will buy using previous data. Many industries, including the food sector and retail, employ this prediction exercise. Prediction is essential in restaurants since the majority of fundamental products have a limited shelf life. Demands are influenced by a variety of overt and covert circumstances, including season, area, and others. In this study, machine learning uses multiple data sources, like internal and external data, to forecast the supply of various goods based on demand. Although various machine learning models have already been applied to predicting demand, very limited work has been performed to explain the black-box nature of the model. In this work, an attempt is made to explain the interpretability of the model. Here, we first present the food demand prediction problem as a regression problem and then apply various machine learning models to predict the demand for food. After that, a stacked-based ensemble model is employed to address various concerns coming from the base models, achieving better prediction. Finally, the interpretability is resolved to utilize effective learning techniques like Local Interpretable Model-agnostic Explanations (LIME).
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