Approximate Temporal Conditioned Autoencoder and Regressor for Sales Prediction

A. Hashi, Yakup Genç
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Abstract

Lost sales can be caused by out-of-stock products, bad customer-care and over-pricing and is a major source of business failure in retail market. Predicting demand for products and customers' purchasing behaviour can help the businesses avoid these type of failures. Such predictions are usualy done using matrix factorization techniques. These are not suited to handle temporal variations in data which is often the case in retail world. Beyond factorization, deep learning methods including autoencoders and regressor are proposed without considering temporal information. Extending them with deep learning components to handle temporal data is not straightforward as these type of models requires a lot of data with variations in items and customers as well as in time. Variations in item and customer is easily achieved but variation in time is usually limited. We therefore propose a method which approximates a recurrent neural network to handle a few samples in temporal dimension. To this end we start with an existing algorithm DCAR [1] and enhance it to handle a few samples of temporal data resulting a predictor that beats the performance of classical matrix factorization and deep factorization methods as well as DCAR. The method simultaneously trains multiple autoencoders and regressors with an unfolded recurrent neural network.
销售预测的近似时间条件自编码器和回归量
销售损失可能由缺货、糟糕的客户服务和过高的定价引起,这是零售市场商业失败的主要原因。预测对产品的需求和顾客的购买行为可以帮助企业避免这类失败。这种预测通常使用矩阵分解技术来完成。这些方法不适合处理数据的时间变化,而这在零售业中是常见的情况。除因式分解外,还提出了不考虑时间信息的深度学习方法,包括自编码器和回归器。用深度学习组件扩展它们来处理时间数据并不简单,因为这些类型的模型需要大量的数据,这些数据在项目和客户以及时间上都有变化。项目和客户的变化很容易实现,但时间的变化通常有限。因此,我们提出了一种近似递归神经网络的方法来处理时间维的少量样本。为此,我们从现有的算法DCAR[1]开始,并对其进行增强以处理少量时间数据样本,从而得到一个优于经典矩阵分解和深度分解方法以及DCAR的预测器。该方法利用展开的递归神经网络同时训练多个自编码器和回归器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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