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Comparing Prophet and Deep Learning to ARIMA in Forecasting Wholesale Food Prices

机译:先知和深入学习对Arima预测批发食品价格

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Setting sale prices correctly is of great importance for firms, and the study and forecast of prices time series is therefore a relevant topic not only from a data science perspective but also from an economic and applicative one. In this paper, we examine different techniques to forecast sale prices applied by an Italian food wholesaler, as a step towards the automation of pricing tasks usually taken care by human workforce. We consider ARIMA models and compare them to Prophet, a scalable forecasting tool by Facebook based on a generalized additive model, and to deep learning models exploiting Long Short-Term Memory (LSTM) and Convolutional Neural Networks (CNNs). ARIMA models are frequently used in econometric analyses, providing a good benchmark for the problem under study. Our results indicate that ARIMA models and LSTM neural networks perform similarly for the forecasting task under consideration, while the combination of CNNs and LSTMs attains the best overall accuracy, but requires more time to be tuned. On the contrary, Prophet is quick and easy to use, but considerably less accurate.
机译:设定销售价格正好对公司来说非常重视,而且价格时间序列的研究和预测不仅是来自数据科学视角,而且来自经济和申请人的相关主题。在本文中,我们研究了不同的技术,以预测意大利食品批发商应用的销售价格,因为朝着定价任务自动化的一步,通常由人类劳动力照顾。我们考虑Arima模型并将它们与Facebook基于广义添加剂模型的Facebook,以及利用长短短期记忆(LSTM)和卷积神经网络(CNNS)的深度学习模型进行了先知。 Arima模型经常用于经济学分析,为研究中的问题提供了良好的基准。我们的结果表明,Arima模型和LSTM神经网络同样表现为正在考虑的预测任务,而CNN和LSTM的组合达到最佳的整体准确性,但需要更多时间进行调整。相反,先知是快速且易于使用的,但相当不准确。

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