The memory concept behind deep neural network models: An application in time series forecasting in the e-Commerce sector

Q1 Decision Sciences
F. Ramos, M. T. Pereira, Marisa Oliveira, Lihki Rubio
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引用次数: 0

Abstract

A good command of computational and statistical tools has proven advantageous when modelling and forecasting time series. According to recent literature, neural networks with long memory (e.g., Short-Term Long Memory) are a promising option in deep learning methods. However, only some works also consider the computational cost of these architectures compared to simpler architectures (e.g., Multilayer Perceptron). This work aims to provide insight into the memory performance of some Deep Neural Network architectures and their computational complexity. Another goal is to evaluate whether choosing more complex architectures with higher computational costs is justified. Error metrics are then used to assess the forecasting models' performance and computational cost. Two-time series related to e-commerce retail sales in the US were selected: (i) sales volume; (ii) e-commerce sales as a percentage of total sales. Although there are changes in data dynamics in both series, other existing characteristics lead to different conclusions. "Long memory" allows for significantly better forecasts in one-time series. In the other time series, this is not the case.
深度神经网络模型背后的记忆概念:在电子商务领域时间序列预测中的应用
在建模和预测时间序列时,良好的计算和统计工具的掌握已被证明是有利的。根据最近的文献,具有长记忆的神经网络(例如,短期长记忆)是深度学习方法中很有前途的选择。然而,只有一些作品也考虑了这些架构与更简单的架构(例如,多层感知器)相比的计算成本。这项工作旨在深入了解一些深度神经网络架构的内存性能及其计算复杂性。另一个目标是评估选择具有更高计算成本的更复杂的体系结构是否合理。然后使用误差度量来评估预测模型的性能和计算成本。选择与美国电子商务零售销售相关的两个时间序列:(i)销售额;(ii)电子商务销售额占总销售额的百分比。虽然两个系列的数据动态都有变化,但其他存在的特征导致了不同的结论。“长记忆”允许在一次性序列中进行更好的预测。在其他时间序列中,情况并非如此。
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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来源期刊
Decision Making Applications in Management and Engineering
Decision Making Applications in Management and Engineering Decision Sciences-General Decision Sciences
CiteScore
14.40
自引率
0.00%
发文量
35
审稿时长
14 weeks
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